Showing posts with label anthropometry. Show all posts
Showing posts with label anthropometry. Show all posts

Testosterone-related abstracts from AAPA 2016

Facial width-to-height ratio (fWHR) is not associated with pubertal testosterone
Several researchers have proposed that facial width-to-height ratio (fWHR) is a sexually dimorphic signal that develops under the influence of pubertal testosterone (T); however, this hypothesis is currently under supported. Here we examine the association between fWHR and T during the period of the life span when facial growth is canalized--adolescence. To do so, we examine the association between T, known T-derived traits (i.e. strength and voice pitch), and craniofacial measurements in a sample of adolescent Tsimane males. If fWHR variation derives from pubertal T’s influence on craniofacial growth, several predictions can be made: 1) fWHR should increase with age as T increases, 2) fWHR should reflect adolescent T (rather than adult T per se), 3) fWHR should exhibit a growth spurt in parallel with T, 4) fWHR and T should correlate after controlling for potential confounds, and 5) fWHR should show a strong relationship to other T-derived traits. These effects were not observed. We also examined three additional facial masculinity ratios: facial width/lower face height, cheekbone prominence, and facial width/full face height. In contrast to fWHR, each of the three additional measures exhibit a strong age-related pattern of change and are associated with both T and T-dependent traits. In summary, our results challenge the status of fWHR as a sexually-selected signal of pubertal T and T-linked traits.
The relationship between social status, body size, and salivary hormone levels among Garisakang forager-horticulturalist men of lowland Papua New Guinea
Social hierarchy is a robust phenomenon that exists within all human societies. Over the past several decades, a growing body of evidence from industrialized Western populations has suggested that social status is closely related to individual measures of stress, health, and many other fitness-related traits. Data regarding such relationships, however, remain rare among small-scale subsistence societies, preventing a clear understanding of the importance of social position for fitness cross-culturally. Here we contribute to this area of research by exploring the relationship between adult male social status, BMI, and levels of salivary testosterone and diurnal cortisol among Garisakang small-scale forager-horticulturalists of lowland Papua New Guinea (N = 32). Three measures of individual social status – Respect, Dominance and Prosociality – were extracted from principal components analysis of photo-rank data for locally valued male traits (e.g., sociability, hunting ability, community influence). Preliminary results from multiple regression models controlling for age suggest complex relationships between social status, body size, and salivary hormone levels among the Garisakang. Male Dominance is positively related to BMI (p < 0.05) but not with salivary hormone measures, while greater male Respect is associated with reduced salivary cortisol (p = 0.06) but not testosterone or BMI. Prosociality, conversely, is not significantly related to any evaluated measure. We discuss the evolutionary implications of our findings, with a focus on future directions for investigating the biocultural interface of health in this population.
Men’s reproductive ecology and diminished hormonal regulation of skeletal muscle phenotype: An analysis of between- and within-individual variation among rural Polish men
Human life history is characterized by several distinctive features—sexual division of labor, prolonged care of altricial young, multiple dependents of different ages, and male provisioning. Testosterone has been suggested to mediate a trade-off between men’s reproduction and survival, through the regulation of sexually dimorphic musculature. This hypothesis predicts a relationship between testosterone and musculature in which mating effort, elevated testosterone, and dimorphic musculature covary positively. Testosterone is also posited to mediate a trade-off between mating and parenting effort, and accordingly, investing fathers show decreased testosterone production. Because men use their musculature not only in mating competition but also to support work demands, an important component of parenting effort, a relatively fixed relationship between testosterone and muscularity would seem maladaptive. We hypothesize that men’s parenting effort, specifically provisioning and subsistence activities, becomes a primary determinant of muscularity. Life history, anthropometric, and hormonal data were collected from 122 rural Polish men (at the Mogielica Human Ecology Study Site) during the summer harvest and for 103 of these participants in the winter. We found that fatherhood jointly predicted heavier workload and decreased testosterone, but positively predicted muscle mass and strength measures. Furthermore, within-individuals, men experienced intensified workload and suppressed testosterone during summer, along with a concomitant increase in muscularity and strength. These findings provide preliminary support for our model, termed the ‘Paternal Provisioning Hypothesis’. Between and within individuals, men’s provisioning and subsistence activities were robust predictors of muscular development and performance, whereas their testosterone levels had no appreciable effect on skeletal muscle phenotype.
Testosterone, musculature, and development in Kanyawara chimpanzees and Tsimane forager-horticulturalists
Considerable evidence suggests that the steroid hormone testosterone mediates major life-history trade-offs in primates, promoting mating effort at the expense of parenting effort or survival. In many species, chronic shifts in testosterone production over the life course correlate with investment in male-male competition. Chimpanzees and humans represent interesting test cases, because although closely related, they maintain divergent mating systems. Chimpanzee males do not invest in pair bonds or paternal care. Consequently, across the lifespan, their testosterone levels are expected to track changes in (1) behavioral investment in dominance striving, and (2) investment in sexually dimorphic musculature employed in male-male competition. Humans, by contrast, are expected to show weaker associations between testosterone and musculature, because the latter is important not only for male competition, but for men’s work provisioning wives and children. We assayed >7000 chimpanzee and >3350 Tsimane urine samples for testosterone, creatinine, and specific gravity, in the same laboratory using the same assay methods. Male chimpanzees showed peak acceleration in testosterone increase at age 6, peak velocity at age 10, and peak deceleration at age 14, reaching adult levels by 15-16, when they began to challenge other adult males. Adult levels of testosterone were achieved 3 years later than in captivity, likely reflecting energetic constraints in the wild. Indirect measures of muscle mass followed a similar pattern, and were highly correlated with testosterone. As predicted, Tsimane men exhibited a weaker correlation, with testosterone accounting for half as much variance in the muscle mass measure as in the chimpanzee sample.
Dads and cads? Male reproductive success, androgen profiles, and male-infant social bonds in wild mountain gorillas (Gorilla beringei beringei)
Male reproductive strategies are often reduced to a ‘dad versus cad’ dichotomy. When paternity certainty is high and mating opportunities scarce, theory predicts high levels of paternal investment; if paternity certainty is low and/or access to mating opportunities plentiful, male parenting is expected to be scarce. However, conflict between mating and parenting behavior is not equally strong across ecologies and social structures. Wild mountain gorillas (Gorilla beringei) have variable paternity certainty and a morphology suggestive of intense male contest competition. Despite this, relationships between males and infants are an important component of group structure, likely because males protect infants from infanticide and predation. Using data from gorilla groups monitored by the Dian Fossey Gorilla Fund’s Karisoke Research Center, we evaluated 1) the relationship between male-infant social bond strength and males’ reproductive success, and 2) the relationship between male-infant social bonds and males’ fecal androgen metabolite levels. Higher testosterone levels are generally correlated with increased aggression and mating activity, which are typically considered incompatible with parenting behavior. After controlling for male age and rank, males who had the strongest social bonds with infants were also the males with the highest reproductive success. There was no relationship between strength of male-infant social bonds and fecal androgen metabolite levels. Results demonstrate that reductive descriptions of male reproductive strategies may obscure important connections between mating and parenting effort, and highlight the need for additional data on the relationship between androgen activity, mating, and parenting in multimale/multifemale social systems.

Population genetic differentiation of height and body mass index across Europe

From Visscher and colleagues:

Population genetic differentiation of height and body mass index across Europe

Across-nation differences in the mean values for complex traits are common1, 2, 3, 4, 5, 6, 7, 8, but the reasons for these differences are unknown. Here we find that many independent loci contribute to population genetic differences in height and body mass index (BMI) in 9,416 individuals across 14 European countries. Using discovery data on over 250,000 individuals and unbiased effect size estimates from 17,500 sibling pairs, we estimate that 24% (95% credible interval (CI) = 9%, 41%) and 8% (95% CI = 4%, 16%) of the captured additive genetic variance for height and BMI, respectively, reflect population genetic differences. Population genetic divergence differed significantly from that in a null model (height, P < 3.94 × 10−8; BMI, P < 5.95 × 10−4), and we find an among-population genetic correlation for tall and slender individuals (r = −0.80, 95% CI = −0.95, −0.60), consistent with correlated selection for both phenotypes. Observed differences in height among populations reflected the predicted genetic means (r = 0.51; P < 0.001), but environmental differences across Europe masked genetic differentiation for BMI (P < 0.58).

NW-SE cline of brain volume in Europe

The authors of Modeling the 3D Geometry of the Cortical Surface with Genetic Ancestry mention:
In our group’s previous study, we found that area measures of cortical surface and total brain volumes of individuals of European descent in the United States correlate significantly with their ancestral geographic locations in Europe [ 9 ].
This 2011 study ("A Geographic Cline of Skull and Brain Morphology among Individuals of European Ancestry") is freely accessible:

Background: Human skull and brain morphology are strongly influenced by genetic factors, and skull size and shape vary worldwide. However, the relationship between specific brain morphology and genetically-determined ancestry is largely unknown. Methods: We used two independent data sets to characterize variation in skull and brain morphology among individuals of European ancestry. The first data set is a historical sample of 1,170 male skulls with 37 shape measurements drawn from 27 European populations. The second data set includes 626 North American individuals of European ancestry participating in the Alzheimer’s Disease Neuroimaging Initiative (ADNI) with magnetic resonance imaging, height and weight, neurological diagnosis, and genome-wide single nucleotide polymorphism (SNP) data. Results: We found that both skull and brain morphological variation exhibit a population-genetic fingerprint among individuals of European ancestry. This fingerprint shows a Northwest to Southeast gradient, is independent of body size, and involves frontotemporal cortical regions. Conclusion: Our findings are consistent with prior evidence for gene flow in Europe due to historical population movements and indicate that genetic background should be considered in studies seeking to identify genes involved in human cortical development and neuropsychiatric disease. [. . .]

Apparently the two main groups being compared in the neuroimaging sample are Americans of Northwestern European ancestry and Ashkenazi Jews ("ADNI subjects are spread out primarily along a NW-SE axis and form two distinct clusters corresponding to NW European and Ashkenazi Jewish ancestry"):

To determine if brain morphometry exhibits similar geospatial population trends to the skull morphometry data, we estimated the ancestry of each individual in the ADNI sample using available genome-wide genotype data and confined attention to 626 individuals with a high probability of having European ancestry. In order to assign the European region of origin most likely to reflect the genetic background of each individual, genotypes from ADNI subjects were merged with publically available genotypes from 34 reference populations geographically distributed across Europe, and PCA was pursued. [. . .]

A plot of the first two principal components separates ADNI subjects into two main clusters: one overlaps NW populations and one lies SE of Europe ( fig. 3 a) and overlaps individuals with self-reported Ashkenazi Jewish ancestry (online suppl. fig. S5). [. . .]

We found that ADNI individuals with a NW ancestry are on average 4 cm taller than ADNI individuals with a SE or Ashkenazi Jewish ancestry (p = 7.3 ! 10–6 ), consistent with previously observed differences in height across Europe [30] . [. . .]

Intracranial and brain volumes and cortical surface area progressively increase with the amount of inferred NW European ancestry (fig. ​(fig.3b),3b), and these measures are approximately 5% larger in the 10% of individuals with the most NW European ancestry compared to the 10% with the most SE European ancestry. This percentage increase matches the percentage increase in cranial length and breadth observed along the same NW-SE geographic axis in the skull data set (fig. ​(fig.2b)2b) and cannot be attributed to a correlation with body size since we controlled for height and weight. This correlation involves specific – not global – brain morphology because hippocampal, basal ganglia, ventricular, and cerebellar volumes and average cortical thickness are not associated with NW-SE ancestry.

Next, we performed both a region of interest analysis and vertex-based tests across the cortex to test whether the surface area of specific cortical regions showed more significant association with the degree of NW-SE ancestry. We found that cortical surface area predominantly in the frontal and temporal lobes from both hemispheres is significantly associated (online suppl. table S4) and is 4–9% larger among 10% of individuals with the most NW European ancestry compared to 10% with the most SE European ancestry. We found a similar frontotemporal pattern of association with the degree of NW-SE ancestry with a vertex-based analysis (fig. ​(fig.4;4; online suppl. fig. S6).

[. . .] the existence of genetic and craniometric clines in modern European populations suggests at least two theories: (1) pre-historic population movements made such a dominant contribution to the structure of genetic variation in Europe that more recent gene flow has not masked it, and (2) local environmental factors and selection generated clinal variation or acted to restore clinal variation after gene flow occurred. One intriguing possibility for such an environmental factor is the cultural conditions associated with possessing agricultural technologies, e.g. sedentarism, altered diet including milk consumption [40] , and new disease exposures [41] . As these technologies spread progressively from SE to NW Europe over several 1,000 years [33] , natural selection may have acted either directly or indirectly to alter brain morphology, thus creating the clinal variation found in this study.

Plots of cranial measures from this study (left) and map of head size from Coon's 1939 book The Races of Europe (right):

The trend observed here is also consistent with that reported by Maurice Fishberg over a century ago in The Jews: A Study of Race and Environment:

One of the methods of determining the volume of the brain case, and approximately the weight of the brain, is the determination of the cranial capacity. Very few direct measurements of this kind have been taken, because only few Jewish skulls have found their way into anthropological museums, where they could be studied carefully. But from the few studies of this character that have been made, it appears that the Jews are somewhat at a disadvantage. Lombroso's studies of the Jews in Turin, Italy, which were made in an indirect fashion, showed that the Jews have a smaller cranial capacity than the Catholics of that city.2 Weinberg collected measurements of seventeen Jewish skulls in various museums of Europe, which were made properly, and are not approximations. The average cranial capacity was 1421 c.cm., which is about thirty to forty c.cm. below the average cranial capacity of the population of Europe. Of course the small number of skulls thus measured is not sufficient to draw positive conclusions.

As to the weight of the brain, there are also very few observations on record. The author knows only of twentythree Jewish brains reported by Giltchenko,3 four by Weisbach,4 and three by Weinberg.5 The average weight of these brains, as calculated by Weinberg, was 1320.4 gm. Since the average weight of the brain of the European is 1350 gms., the brain of Jews is rather lighter by 30 gms. , or nearly one ounce. Considering that the Jews are shorter of stature than the average Europeans, it would be expected that their brain should also be smaller. But, as Weinberg points out, the average for Germans was found to be 8.22 gm. of brain tissue for each centimetre of stature, while for the Jews it is only 8.05 gms. This shows the Jewish brain lighter not only absolutely, but also relatively.

Racial differences in brain shape

A press release:

Researchers at the University of California, San Diego and the School of Medicine have found that the three-dimensional shape of the cerebral cortex -- the wrinkled outer layer of the brain controlling many functions of thinking and sensation -- strongly correlates with ancestral background.
Modeling the 3D Geometry of the Cortical Surface with Genetic Ancestry

Knowing how the human brain is shaped by migration and admixture is a critical step in studying human evolution [ 1, 2 ], as well as in preventing the bias of hidden population structure in brain research [ 3, 4 ]. [. . .] The geometry of the cortical surface contains richer information about ancestry than the areal variability of the cortical surface, independent of total brain volumes. Besides explaining more ancestry variance than other brain imaging measurements, the 3D geometry of the cortical surface further characterizes distinct regional patterns in the folding and gyrification of the human brain associated with each ancestral lineage.

Racial and ethnic variation in penis size, pt. 2: the actual data

Here is most of the relevant published data I know of (but keep in mind the issues touched on in the previous post):

My impression:

  • While there are probably some real differences between populations, differences among different Caucasoid and Negroid populations, at least, appear to be greater than any overall differences between macroraces. I don't find this surprising, since if we looked at, say, height, the same would probably be true.
  • I'm not convinced the data support any difference between Northern Europeans and West Africans, and if differences exist, they are relatively minor.
  • To the extent we can say anything about intra-Caucasoid differences, there appears to be a trend of declining penis size from Northern/western Europe towards SE Europe, the Middle East, and South Asia.
  • Reported values for East Asia do appear to tend toward the low end among worldwide populations.

Related posts:

Racial and ethnic variation in penis size, pt. 1: some background

A few years ago, a "World Penis Size Map" [1] citing a website containing largely made-up numbers [2] entered widespread circulation. Despite being an obvious and inept hoax, it has continued to take in various people, including the press, some economist [3], and Richard Lynn [4]. I started writing up a post at the time, but never bothered to finish it.

Most recently, a presenter at the 2015 London Conference on Intelligence has attempted to defend this hoax data, claiming:

  • Lynn (2013) attempted to resolve the controversy by obtaining data from the World Penis Website, which listed average national penis lengths based on various sources. Using this, Lynn extended Rushton?s model, based on this, to other races, and found that their average penis sizes differed as Differential K would predict.
  • This paper was ridiculed, most notably by a psychologist blogger called Scott McGreal, who pointed out various minor mistakes on the World Penis Website, insisting all its contents was suspect and not properly reviewed
  • As I am researching a book that extends Rushton?s theory to 12 races, I was very interested in Lynn?s penis data. It occurred to me that we can test the validity of Lynn?s national penis lengths by seeing if they correlated with other national measures androgen in the expected direction.
But the website does not just feature a few "minor mistakes". Most of the data is simply made up. One can't "validate" made-up numbers by attempting to correlate them with other putative markers of androgen exposure.

ESHG 2014: Causal relationship of body mass index with cardiometabolic traits and events: a Mendelian randomization analysis

Title: C04.6 - Causal relationship of body mass index with cardiometabolic traits and events: a Mendelian randomization analysis
Keywords: body mass index; Mendelian randomization; Cardiometabolic
Authors: M. V. Holmes1,2, L. A. Lange3, T. Palmer4, M. B. Lanktree5, IBC BMI Mendelian Randomization Group, E. E. Schadt6, F. W. Asselbergs7,8,2, A. P. Reiner9,10, B. J. Keating1; 1University of Pennsylvania, Philadelphia, PA, United States, 2University College London, London, United Kingdom, 3University of North Carolina School of Medicine at Chapel Hill, Chapel Hill, NC, United States, 4University of Warwick, Warwick, United Kingdom, 5McMaster University, Hamilton, ON, Canada, 6Mount Sinai School of Medicine, New York, NY, United States, 7University Medical Center Utrecht, Utrecht, Netherlands, 8Durrer Center for Cardiogenetic Research, Utrecht, Netherlands, 9University of Virginia, Charlottesville, VA, United States, 10Fred Hutchinson Cancer Research Center, Seattle, WA, United States.

Abstract: Elevated body mass index (BMI) associates with cardiometabolic traits on observational analysis, yet the underlying causal relationships remain unclear. We conducted Mendelian randomization analyses using 14 SNPs associated with BMI from a recent discovery analysis to investigate the causal role of BMI with cardiometabolic traits. We used eight population-based cohorts, including 34,538 individuals of European ancestry with 4,407 type 2 diabetes (T2D), 6,073 coronary heart disease (CHD) and 3,813 stroke cases. A genetically-elevated one kg/m2 increase in BMI resulted in higher levels of fasting glucose, insulin, interleukin-6 and systolic blood pressure but reduced levels of HDL-C and LDL-C (values reported in Table). Apart from LDL-C, all causal estimates were directionally concordant to observational estimates. A genetically-elevated one kg/m2 increase in BMI increased odds of T2D but did not affect risk of CHD or stroke. A meta-analysis incorporating published studies with 27,465 CHD events in 219,423 individuals yielded a pooled odds ratio of 1.04 (95%CI: 0.97, 1.12) per 1 kg/m2 increase in BMI. In conclusion, we identified causal effects of BMI on several cardiometabolic traits, however whether BMI causally impacts on CHD risk requires further evidence.

ESHG 2014: Copy number variants are a common cause of short stature

Title: S11.3 - Copy number variants are a common cause of short stature Keywords: Short stature; Copy number variation; growth Authors: C. T. Thiel1, A. Reis1, H. Dörr2, A. Rauch3; 1Institute of Human Genetics, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany, 2Department of Pediatrics and Adolescent Medicine, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany, 3Institute of Medical Genetics, University of Zurich, Zurich, Switzerland. Abstract: Shortness of stature is one of the most common pediatric concerns and has an incidence of 3 % in the general population. In the majority of patients with idiopathic growth deficit the etiology remains elusive in the absence of morphological details. This unknown etiology prevents a sufficient medical care in most cases. As it has been proposed that the growth fundamentally regulated by genetic factors, GWAS found significant evidence for both single nucleotide and copy number polymorphisms associated with height variation in the general population. However, these associations explain only a small fraction of the overall variability of human height. Based on the early identification of SHOX gene deletions as a common cause of idiopathic and syndromic (Leri-Weil syndrome) short stature as well as copy number variation (CNV) as a common cause of intellectual disability, the hypothesis of a “rare variant - frequent disease” hypothesis seemed to be feasible for short stature. To address this hypothesis we thoroughly build a study group of more than 400 families with idiopathic short stature and conducted SNP array analysis to demonstrate the presence of CNVs as a common underlying cause of short stature. Molecular karyotyping was performed and CNVs of a minimum size of 50kb scored and compared to healthy controls. Based on this technique we found a significant odds ratio for aberrations above 100 kb only. Due to the number of potential disease causing CNVs a gene-centric analysis comparing known CNVs, gene functions, tissue expression and murine knock-out phenotypes was neccessary. We confirmed that 10 % of the patients had de novo and inherited CNVs in agreement to the segregation of the short stature phenotype in the families. These CNV regions include known microdeletion/duplication loci expanding the phenotypical spectrum of these entities. The pathogenicity of novel loci was substantiated by comparison to available information, especially the overlap with loci of genome wide association for short stature. Our data showed a clear connection between the prenatal onset of short stature as well as the severity of the growth deficit with the likelihood of the identification of causal CNVs. Thus, we confirmed CNVs as a main cause of idiopathic short stature. Further improvement of the array technology as well as the application of CNV identification based on next generation sequencing will lead to a more elaborate and detailed view on even smaller CNVs. Application of these methods can help to illuminate the complex heterogeneity of short stature.

ESHG 2014: some genetic associations for power vs. endurance athlete status

Title: J17.56 - The SHBG gene polymorphism (rs12150660) is associated with elite power athlete status and muscle mass
Keywords: SHBG; polymorphism; athletes
Authors: E. S. Egorova1, L. J. Mustafina2, I. I. Ahmetov2,1; 1Kazan State Medical University, Kazan, Russian Federation, 2Volga Region State Academy of Physical Culture, Sport and Tourism, Kazan, Russian Federation.

Abstract: Testosterone regulates muscle mass and strength, bone mass, fat distribution and the production of red blood cells. Sex hormone-binding globulin (SHBG) is the key protein responsible for binding and transporting of testosterone. SHBG regulates its bioavailability and therefore its effects in the body. Polymorphism at the SHBG gene locus (rs12150660 G/T) has been associated with testosterone concentrations. Since individuals with the TT genotype have higher serum testosterone concentrations in comparison with carriers of the G allele (data from GWAS), we hypothesized that the carriage of the T allele may give some advantage for strength and power performance. The aim of the study was to investigate the association between the SHBG G/T polymorphism, athlete status and muscle mass. A total of 363 Russian athletes and 130 controls were genotyped using RT-PCR. Muscle mass was measured by body composition analyzer Tanita MC-980. The frequencies of the T allele in power-oriented athletes (n=143, 20.3%; P=0.7462), endurance-oriented athletes (n=220, 15.0%; P=0.2054) and a whole cohort of athletes (17.1%; P=0.5078) were not significantly different from controls (18.8%). However, the frequency of the T allele in elite power-oriented athletes (n=65, 26.2 vs. 12%, P=0.0061) was significantly higher as compared with elite endurance-oriented athletes (n=58). Furthermore, correlation analysis showed positive association between the T allele and muscle mass among non-elite female athletes (n=8, P=0.0072, r= 0.8729). Although more evidence is needed, one might suggest that the SHBG gene G/T polymorphism is associated with power athlete status.

Title: J17.28 - Genome-wide association analysis identifies a locus on DMD (dystrophin) gene for power athlete status in Russians
Keywords: GWAS; athlete; DMD
Authors: V. A. Naumov1, I. I. Ahmetov2, A. K. Larin1, E. V. Generozov1, N. A. Kulemin1, E. A. Ospanova1, A. V. Pavlenko1, E. S. Kostryukova1, D. G. Alexeev1, V. M. Govorun1; 1Research Institute for Physical-Chemical Medicine, Moscow, Russian Federation, 2Volga Region State Academy of Physical Culture, Sport and Tourism, Kazan, Russian Federation.

Abstract: Power athlete status is a heritable trait: around two-thirds of the variance in this phenotype is explained by genetic factors. Since power and endurance are located at the opposite extremes of a muscle performance continuum, a genome-wide association study (GWAS) of elite Russian power-oriented athletes (sprinters and strength athletes) and endurance-oriented athletes as controls was performed to identify common genetic variants associated with elite power athlete status. 102 sprinters, 86 strength athletes and 178 endurance-oriented athletes were genotyped using the Illumina® HumanOmni1-Quad BeadChips. When comparing sprinters and endurance-oriented athletes, the most significant association (P=6.2[[unable to display character: ∗]]10-7) was shown for the rs939787 polymorphism. Interestingly, this association was replicated (P=2.9[[unable to display character: ∗]]10-6) by comparing strength athletes and endurance-oriented athletes (P=3[[unable to display character: ∗]]10-8 when sprinters and strength athletes were combined). The rs939787 is located in the DMD (dystrophin) gene which plays an important role in muscle contraction and strength, linking the intracellular cytoskeleton to the extracellular matrix. In conclusion, our data suggest that the DMD gene rs939787 polymorphism is associated with elite power athlete status in Russians.

Title: J17.58 - Variations in nuclear genes are associated with elite sport performance in the Polish population
Keywords: sport performance; ACE; ACTN3
Authors: B. J. Peplonska1, K. Safranow2, J. G. Adamczyk3, M. Siewierski3, H. Sozański3, A. K. Gajewski3, M. Berdynski1, A. Maruszak1, C. Zekanowski3; 1Mossakowski Medical Research Centre Polish Academy of Sciences, Warszawa, Poland, 2Department of Biochemistry and Medical Chemistry, Pomeranian Medical University, Szczecin, Poland, 3Department of Sport’s Theory, Institute of Sport, Jozef Pilsudski University oh Physical Education in Warsaw, Warszawa, Poland.

Abstract: Objectives: Single nucleotide polymorphisms are the most common type of human genetic variation. It is widely recognized that genetic factors located in mitochondrial and nuclear genomes influence sport performance. The aim of our study was to assess whether selected nuclear DNA variants are associated with athlete performance in the Polish population.

Methods: The study group comprised 413 unrelated elite athletes and the control group consisted of 451unrelated sedentary individuals. The athletes were stratified into two subgroups: the power athletes (n=188) and the endurance ones (n=225). The study group included 284 participants of Olympic and International Games and the remaining 129 athletes were national[[unable to display character: –]]level athletes. The DNA was isolated from peripheral blood lymphocytes using standard procedures. Genotyping of 10 nuclear DNA variants (ACE, rs4341; ACTN3, rs1815739; GABPB1, rs12594956; CHRNB3, rs4950; AGT, rs699; FAAH, rs324420; PPARG, rs1801282; TFAM, rs1937; TFAM, rs 2306604; PGC1α, rs 8192678) was conducted using TaqMan method. All statistical analyses were performed using Statistica ver. 10.

Results: We showed that six polymorphisms were associated with outstanding results in power (TFAM,rs 2306604, FAAH, ACE, ACTN3) or endurance sports (CHRNB3, GABP1). Gender and sport level of athletes were also significant

Conclusion: Our study indicates that in the Polish population genetic background could influence sport performance.

Title: J17.48 - The association of REN gene polymorphism with athlete status and muscle mass
Keywords: polymorphism; REN gene; skeletal muscle
Authors: L. J. Mustafina1,2, G. N. Khafizova1, R. R. Almetova1, R. R. Kasimova1, E. S. Egorova2, I. I. Ahmetov1,2; 1Volga Region State Academy of Physical Culture, Sport and Tourism, Kazan, Russian Federation, 2Kazan State Medical University, Kazan, Russian Federation.

Abstract: The renin-angiotensin system (RAS) is supposed to be one of the regulators of skeletal muscle growth and differentiation (Zhang et al. 2003; Johnston et al. 2011). Renin (encoded by REN gene), as a component of the RAS, activates the renin-angiotensin cascade by catalyzing the conversion of angiotensinogen to angiotensin I (Rupert, 2006). The aim of present study was to investigate the association between the intron 8 83A/G (rs2368564) polymorphism of the REN gene, athlete status and muscle mass in Russians. Two hundred and sixty eight Russian athletes (90 females and 178 males) from different sporting disciplines were involved in the study. REN genotype and allele frequencies were compared to 151 controls (74 females and 77 males). Genotyping for the REN polymorphism was performed by RT-PCR. Muscle mass parameters were assessed by bioelectrical impedance analyzer Tanita MC 980 (Japan) in 125 athletes (44 females and 81 males). We found that the frequency of the REN G allele was significantly higher in power-oriented athletes (78 vs 68%; P=0.021) compared to controls and this difference was even more pronounced in elite power-oriented athletes (89%; P=0.018). Furthermore, the REN G allele was positively correlated with fat-free mass, absolute muscle mass, muscle mass of trunk and left/right legs in elite athletes. In conclusion, we have shown that the 83A/G polymorphism of the REN gene is associated with power athlete status and skeletal muscle parameters in Russians.

ESHG 2014: The role of population isolates in understanding genetic and complex diseases

Title: S08.3 - The role of population isolates in understanding genetic and complex diseases
Keywords: genetic isolates; complex and quantitative traits; genetic diseases
Authors: P. Gasparini; Trieste, Italy.

Abstract: The use of isolated populations to reduce disease heterogeneity of complex disorders has already proven very useful in identifying DNA polymorphisms associated with complex diseases and quantitative traits. The study of complex traits in geographically and culturally isolated populations is particularly useful because the entire population can be analyzed, the relative weight of environmental variation can be controlled and genetic factors can be more easily identified. In these genetically and culturally homogeneous populations, a large proportion of individuals presenting a given trait is likely to share the same trait-predisposing gene inherited from a common ancestor. Furthermore, inbreeding, typical of small communities, reduces genetic heterogeneity and increases homozygosity, providing greater power for detection of susceptibility genes. We have created the Italian Network of Genetic Isolates (INGI) that collects the samples coming from several villages from 5 different Italian regions for a total of more than 6000 samples. Moreover, additional 1500 samples have been collected along the Silk Road. For all of them a great number of information regarding medical records, hematological parameters and lifestyle has been collected as well as DNA samples which have been genotyped with high density chip arrays. To evaluate the power to detect association in our cohorts we aimed at replicating several already published results and to verify if any new Italian specific loci were present. For example, GWAS were carried out on several hematological and serum lipids traits, blood glucose levels, blood pressure and anthropometric measures leading to the replication of 206 loci and to the discovery of some novel associations for BMI and weight. For 12 of these loci the top associated SNP was different from the one previously published highlighting the importance of having a population specific reference panel for personalized medicine. Moreover, specific genes/variants associated to phenotypes such as hearing, smell, taste and food preferences have been identified. More recently, new data have been obtained using whole genome sequencing data that allow refining the results previously obtained and will lead to the discovery of even more population specific genetic variants. Our results show that genetic isolates are a powerful resource for studying complex traits and thus to create genetic risk profiles which will be the bases for personalized medicine in Italy. Updated data will be presented and discussed.

ESEB 2013 abstracts and videos

Some abstracts and videos from the 2013 Congress of the European Society for Evolutionary Biology.

Genetic genealogy comes of age: advances in the use of deep-rooted pedigrees in human evolutionary research (video)

Author(s): Larmuseau, MHD, Van Geystelen, A, Decorte, R

Summary:

Research on the recent human evolution will benefit from the implementation of extended genetic genealogical data. The approach to combine deep-rooted pedigrees with genetic information advances the understanding of changes in the human population genetic structure during the last centuries. This recent advance is mainly based on the extensive growth of whole genome sequencing data and available genealogical data of high quality. Moreover, according to the latest genetic genealogical research the historical non-paternity rate in Western Europe is estimated around 1% per generation within the last four centuries, which means that the expected relationship between the legal genealogy and the genetics of DNA donors exists. Therefore, genetic genealogical data will help with three research aims of human evolutionary studies: (I) detecting signals of (past) population stratification and interpreting the population structure in a more objective manner, (II) obtaining the time scale and impact of particular detected gene flow events more accurately and (III) determining temporal genetic differentiation within a population by combining in-depth pedigree data with haploid markers. Each of these research aims will be discussed with examples of the human population in Flanders (Western Europe). At the end, we will discuss the advantages and pitfalls of using genetic genealogy within studies on human evolutionary genomics.

Detection of polygenic selection at different evolutionary levels (video)

Author(s): Excoffier L, Daub J

Summary:

Most approaches aiming at finding genes involved in adaptive events have focused on the detection of outlier loci, which resulted in the discovery of individually ´significant´ genes with strong effects. However, a collection of small effect mutations could have a large effect on a given biological pathway that includes many genes, and such a polygenic mode of adaptation has not been systematically investigated in humans or other mammals. We therefore propose to evidence polygenic selection by detecting signals of adaptation at the pathway or gene set level instead of analyzing single independent genes. Using a gene-set enrichment test, we identify genome-wide signals of recent adaptation among human populations as well as more ancient signals of adaptation in the human lineage and in primates.

A genome-wide scan for relaxation of constraints in the human lineage affecting specific functional processes (video)

Author(s): Somel, M, Wilson-Sayres, M, Jordan, G, Huerta-Sanchez, E, Fumagalli, M, Ferrer-Admetlla, A, Nielsen, R

Summary:

Changes in the subsistence mode of a species can lead to adaptive evolution of new functions, while it can also cause relaxed negative selection in previously essential functions. While positive selection in humans has been intensely studied, functional processes subject to relaxed constraints in the human lineage remain largely unknown. Here we present a framework for detecting relaxation of selective constraints that affect a particular functional process specifically in one taxon. Jointly using human and chimpanzee population genomic data with mammalian comparative genomic data, we identify olfactory receptors and proteasome subunits as candidates of relaxed constraints in humans: both gene sets contain high frequency non-synonymous mutations in humans while having conserved amino-acid sequences across other mammals. We further discuss the possible underlying causes of this signal.

Selection on penis size, body shape and height in humans: a simple multivariate method to quantify female preferences based on male physical attractiveness (video)

Author(s): Mautz, BS, Jennions, MD, Peters, RA, Wong, BBM

Summary:

Compelling evidence from many animal taxa indicates that male genitalia are often under post-copulatory sexual selection for characteristics that increase a male’s relative fertilization success under sperm competition. There could, however, also be direct pre-copulatory female mate choice based on male genital traits. Before clothing, the non-retractable human penis would have been conspicuous to potential mates. This, in combination with claims that humans have a large penis for their body size compared to other primates, has generated suggestions that human penis size partly evolved due to female choice. We presented women with digitally projected fully life-size, computer-generated animations of male figures to quantify the (interactive) effects of penis size, body shape and height on female assessment of male sexual attractiveness. We generated 343 male figures that each had one of seven possible values for each of the three test traits (7x7x7 = 343). All seven test values per trait were within two standard deviations of the mean based on a representative sample of males. We calculate response (fitness) surfaces based on the average attractiveness rank each of the 343 male figure received. We also calculated individual response surfaces for 105 women (each women viewed 53 figures). Both methods yielded almost identical results. We discuss our finding in the context of previous studies that have taken a univariate approach to quantify female preferences. We discuss the hypothesis that pre-copulatory sexual selection might play a role in the evolution of genital traits.

Quantitative genetic variation, selection and secular change of skull shape in humans

Author(s): Klingenberg, C, Martínez-Abadías, N, Esparza, M, Sjøvold, T, Hernández, M

Summary:

The combined use of geometric morphometrics and quantitative genetics provides a set of powerful tools for obtaining quantitative information that is crucial for many important questions concerning the evolution of shape. In particular, the demographic information that is available for human populations make humans a unique study system for studying the mechanisms of evolutionary change in morphological traits. We investigate skull shape in the population of Hallstatt (Austria), where a collection of human skulls with associated records offer a unique opportunity for such studies. We use an individual-based statistical model to estimate the genetic covariance matrix, and characterize selection using fitness estimates from demographic data. We find clear evidence for directional selection, but not for nonlinear selection (stabilizing or disruptive selection). The predicted response to this selection, computed with genetic parameters from the population, does not match the estimate of secular change over the 150-year range of the data. We discuss possible reasons for the mismatch.

IQ-height correlation partly attributable to pleiotropic genetic factors (not just cross-assortative mating)

The Genetic Correlation between Height and IQ: Shared Genes or Assortative Mating?
In this study, we modeled the covariation between monozygotic and dizygotic twins, their siblings, and their parents (total N = 7,905) to elucidate the nature of the correlation between two potentially sexually selected traits in humans: height and IQ. Unlike previous designs used to investigate the nature of the height–IQ correlation, the present design accounts for the effects of assortative mating and provides much less biased estimates of additive genetic, non-additive genetic, and shared environmental influences. Both traits were highly heritable, although there was greater evidence for non-additive genetic effects in males. After accounting for assortative mating, the correlation between height and IQ was found to be almost entirely genetic in nature. Model fits indicate that both pleiotropy and assortative mating contribute significantly and about equally to this genetic correlation. [. . .]

Taller people tend to be smarter. Although the relationship is modest, height and IQ are consistently correlated at ~.10–.20 [24], [25], [26]. [. . .]

The importance of genetic pleiotropy on the association between IQ and height is notable. On the surface, it might seem that height and IQ involve very different functional systems with different developmental origins. Genetic pleiotropy between IQ and height (indeed, between any two complex fitness traits) is consistent with the idea that variation in these traits partly reflects genome-wide mutational loads, and that these traits are components of attractiveness because of this—i.e., they are honest signals or cues of ‘good genes’ [43], [44], [45]. The additional and substantial increase in additive genetic covariance as a function of assortative mating is consistent with both traits being attractive to the opposite sex.

Related posts:

Bodily symmetry: origins and lifecourse associations with cognition, personality, and status

A 2012 PhD thesis (pdf):
Symmetry – measured as the size asymmetry of a group of symmetrical body traits such as ear height or elbow circumference – has often been used as an index of the capacity to develop normally despite stress and correlates with a wide range of outcomes including intelligence, health and aspects of behaviour. [. . .] The present work advances the existing empirical literature in six separate domains. It also improves upon past methodology by using novel methods of digital measurement of asymmetry as well as for the first time digitally measuring endogenous asymmetry as indexed by the bones and linking bone asymmetry to intelligence. The research was conducted on four samples. [. . .] Firstly, a sample of elderly participants from the Lothian Birth Cohort 1921 (LBC1921, n = 216) tested around ages 11, 79, 83, and 87. Secondly, the Science Festival Sample (SFS), a group of children recruited at a public science event aged between 4 and 15 (n = 856). Thirdly, a group of Orkney residents aged 18 to 86 (the ORCADES, n = 1200). Fourthly the Berlin Sample (BS), a group of Berlin residents (n = 207) between 20 and 30 years old. In the LBC 1921, men with poorer socioeconomic status in childhood had higher facial asymmetry in old age ( = -.25, p = .03). While investigating issues related to asymmetry in the same sample it was found that relatively more severe digit curvature – a minor physical anomaly – was associated with relatively greater cognitive decline ( = -.19, p = .02). Within the SFS asymmetry decreased across human childhood ( = -.16, p = .01), and more asymmetrical children exhibited slower choice reaction times ( = .0.17, p = .002). In the ORCADES sample, the more asymmetrical participants (as indexed by bone asymmetry) were less intelligent ( = -.24, p = .01). In the Berlin Sample and the LBC 1921 no consistent associations were found between personality traits and asymmetry. Collectively, these findings suggest symmetry functions as a measure of overall well-being as the trend is for higher asymmetry to be associated with a relatively poorer score on a variety of outcome measures. The findings considerably expand the number of existing studies in these empirical areas and in several cases – particularly asymmetry’s association with socioeconomic status in the elderly and reaction times among children – represent the first work on those areas. The present work confirms the finding that asymmetry is linked to adverse outcomes. However, the underlying mechanisms by which symmetry is linked to such outcomes remain underexplored and require clarification.

Protective buttressing of the human fist and the evolution of hominin hands

FIGHTING SHAPED HUMAN HANDS. Protective buttressing of the human fist and the evolution of hominin hands
The derived proportions of the human hand may provide supportive buttressing that protects the hand from injury when striking with a fist. Flexion of digits 2–5 results in buttressing of the pads of the distal phalanges against the central palm and the palmar pads of the proximal phalanges. Additionally, adduction of the thenar eminence to abut the dorsal surface of the distal phalanges of digits 2 and 3 locks these digits into a solid configuration that may allow a transfer of energy through the thenar eminence to the wrist. To test the hypothesis of a performance advantage, we measured: (1) the forces and rate of change of acceleration (jerk) from maximum effort strikes of subjects striking with a fist and an open hand; (2) the static stiffness of the second metacarpo-phalangeal (MCP) joint in buttressed and unbuttressed fist postures; and (3) static force transfer from digits 2 and 3 to digit 1 also in buttressed and unbuttressed fist postures. We found that peak forces, force impulses and peak jerk did not differ between the closed fist and open palm strikes. However, the structure of the human fist provides buttressing that increases the stiffness of the second MCP joint by fourfold and, as a result of force transfer through the thenar eminence, more than doubles the ability of the proximal phalanges to transmit ‘punching’ force. Thus, the proportions of the human hand provide a performance advantage when striking with a fist. We propose that the derived proportions of hominin hands reflect, in part, sexual selection to improve fighting performance.
Human hands have 'evolved for fighting'
Compared with apes, humans have shorter palms and fingers and longer, stronger flexible thumbs.

Experts have long assumed these features evolved to help our ancestors make and use tools.

But new evidence from the US suggests it was not just dexterity that shaped the human hand, but violence also.

Hands largely evolved through natural selection to form a punching fist, it is claimed.

''The role aggression has played in our evolution has not been adequately appreciated,'' said Professor David Carrier, from the University of Utah.

''There are people who do not like this idea but it is clear that compared with other mammals, great apes are a relatively aggressive group with lots of fighting and violence, and that includes us. We're the poster children for violence.'' [. . .]

''Individuals who could strike with a clenched fish could hit harder without injuring themselves, so they were better able to fight for mates and thus be more likely to reproduce,'' he said. [. . .]

To test the theory Prof Carrier conducted experiments with volunteers aged 22 to 50 who had boxing or martial arts experience.

In one, participants were asked to hit a punchbag as hard as possible from different directions with their hands in a range of shapes, from open palms to closed fists.

The results, published in the Journal of Experimental Biology, show that tightly clenched fists are much more efficient weapons than open or loosely curled hands.

A punch delivers up for three times more force to the same amount of surface area as a slap. And the buttressing provided by a clenched fist increases the stiffness of the knuckles fourfold, while doubling the ability of the fingers to deliver a punching force. [. . .]

''Human-like hand proportions appear in the fossil record at the same time our ancestors started walking upright four million to five million years ago. An alternative possible explanation is that we stood up on two legs and evolved these hand proportions to beat each other.''

Manual dexterity could have evolved without the fingers and palms getting shorter, he said. But he added: ''There is only one way you can have a buttressed, clenched fist: the palms and fingers got shorter at the same time the thumb got longer.''

Prof Carrier cited other evidence pointing to the role of fighting in the evolution of human hands.

:: No ape other than humans hits with a clenched fist.

:: Humans use fists instinctively as threat displays. ''If you are angry, the reflexive response is to form a fist,'' said Prof Carrier. ''If you want to intimidate somebody, you wave your fist.''

:: Sexual dimorphism, or the difference in body size between the sexes, tends to be greater among primates when there is more competition between males. In humans the difference is mainly in the upper body and arms, especially the hands. ''It's consistent with the hand being a weapon,'' said Prof Carrier.

In their paper the professor and colleague Michael Morgan, a University of Utah medical student, ponder on the paradoxical nature of the human hand.

''It is arguably our most important anatomical weapon, used to threaten, beat and sometimes kill to resolve conflict. Yet it is also the part of our musculoskeletal system that crafts and uses delicate tools, plays musical instruments, produces art, conveys complex intentions and emotions, and nurtures,'' they write.

''More than any other part of our anatomy, the hand represents the identity of Homo sapiens. Ultimately, the evolutionary significance of the human hand may lie in its remarkable ability to serve two seemingly incompatible but intrinsically human functions.''

ASHG 2012 abstracts (2): physical traits


Chromosome X revisited - Variants in Xq21.1 associate with adult stature in a meta-analysis of 14,700 Finns. T. Tukiainen1, J. Kettunen1,2, A.-P. Sarin1,2, J. G. Eriksson3,4,5,6,7, A. Jula8, V. Salomaa3, O. T. Raitakari9,10, M.-R. Järvelin11,12, S. Ripatti1,2,13 1) Institute for Molecular Medicine Finland FIMM, University of Helsinki, Finland; 2) Unit of Public Health Genomics, National Institute for Health and Welfare, Helsinki, Finland; 3) Department of Chronic Disease Prevention, National Institute for Health and Welfare, Finland; 4) Department of General Practice and Primary Healthcare, University of Helsinki, Finland; 5) Unit of General Practice, Helsinki University Central Hospital, Finland; 6) Folkhälsan Research Center, Helsinki, Finland; 7) Vaasa Central Hospital, Vaasa, Finland; 8) Population Studies Unit, Department of Chronic Disease Prevention, National Institute for Health and Welfare, Turku, Finland; 9) Research Centre of Applied and Preventive Cardiovascular Medicine, University of Turku, Finland; 10) Department of Clinical Physiology, Turku University Hospital, Finland; 11) Department of Epidemiology and Biostatistics, Faculty of Medicine, Imperial College London, United Kingdom; 12) Institute of Health Sciences, Biocenter Oulu, University of Oulu, Finland; 13) Wellcome Trust Sanger Institute, Hinxton, Cambridge, UK.

   Genome-wide association studies (GWAS) provide a powerful tool to assess genetic associations between common marker alleles and complex traits in large numbers of individuals. Typically these studies have focused on testing the markers in the 22 autosomal chromosomes while the X-chromosome has been omitted from the analyses. The chromosome X, however, constitutes approximately 5% of genomic DNA encoding for more than 1000 genes, and thus also likely contains genetic variation contributing to common traits and disorders.
   We set to test associations between 560,000 genotyped and imputed SNP markers and eight anthropometric (BMI, stature, WHR) and biochemical (CRP, HDL, LDL, TC, TG) traits in 14,710 individuals (7468 males, 7242 females) from five Finnish cohorts.
   A region in chromosome Xq21.1 was associated with adult stature (meta-analysis p-value = 3.32×10-10). The lead SNP in the locus explained up to 0.55% of the variance in height in 31-year-old women corresponding to 1.09 cm difference between minor and major allele homozygotes. The associated lead variant (MAF = 0.31) is located upstream of ITM2A, a gene encoding for a membrane protein that plays a role in osteo- and chondrogenic differentiation. As this is among the first studies using the X chromosome reference haplotypes from the 1000 Genomes project, we are currently validating the imputation with genotyping methods.
   The findings pinpoint the value of including chromosome X in the GWAS of complex traits to identify further relevant gene regions that also account for some of the missing heritability. The study illustrates that the 1000 Genomes reference haplotypes allow for high-resolution investigations of the genetic variants in chromosome X even with a relative modest sample sizes compared to the current-day GWAS meta-analyses. Our finding demonstrates that the same analysis strategy is also likely to be useful in the meta-analyses of the large consortia with complex traits.



Dissection of polygenic variation for human height into individual variants, specific loci and biological pathways from a GWAS meta-analysis of 250,000 individuals. T. Esko1, A. R. Wood2, S. Vedantam3,4,5, J. Yang6, S. Gustaffsson7, S. I. Berndt8, J. Karjalainen9, H. M. Kang10, A. E. Locke11, A. Scherag12, D. C. Croteau-Chonka13, F. Day14, R. Magi1, T. Ferreira15, J. Randall15, T. W. Winkler16, T. Fall7, Z. Kutalik17, T. Workalemahu18, G. Abecasis10, M. E. Goddard6, L. Franke9, R. J. F. Loos14,19, M. N. Weedon2, E. Ingelsson7, P. M. Visscher6, J. N. Hirschhorn3,4,5, T. M. Frayling2, GIANT Consortium 1) Estonian Genome Center, University of Tartu, Tartu, Tartumaa, Estonia; 2) Genetics of Complex Traits, Peninsula College of Medicine and Dentistry, University of Exeter, Exeter, UK; 3) Divisions of Genetics and Endocrinology and Program in Genomics, Children's Hospital, Boston, Massachusetts 02115, USA; 4) Metabolism Initiative and Program in Medical and Population Genetics, Broad Institute, Cambridge, Massachusetts 02142, USA; 5) Department of Genetics, Harvard Medical School, Boston, Massachusetts 02115, USA; 6) University of Queensland Diamantina Institute, University of Queensland, Princess Alexandra Hospital, Brisbane, Queensland, Australia; 7) Department of Medical Epidemiology and Biostatistics, Karolinska Institutet, 171 77 Stockholm, Sweden; 8) Division of Cancer Epidemiology and Genetics, National Cancer Institute, National Institutes of Health, Department of Health and Human Services, Bethesda, Maryland 20892, USA; 9) Department of Genetics, University Medical Center Groningen, University of Groningen, Groningen, The Netherlands; 10) Department of Biostatistics, Center for Statistical Genetics, University of Michigan, Ann Arbor, Michigan 48109, USA; 11) Center for Computational Medicine and Bioinformatics, University of Michigan, Ann Arbor, Michigan, USA; 12) Institute for Medical Informatics, Biometry and Epidemiology, University of Duisburg-Essen, Germany; 13) Department of Genetics, University of North Carolina, Chapel Hill, North Carolina 27599, USA; 14) MRC Epidemiology Unit, Institute of Metabolic Science, Cambridge, UK; 15) Wellcome Trust Centre for Human Genetics, University of Oxford, Oxford, OX3 7BN, UK; 16) Public Health and Gender Studies, Institute of Epidemiology and Preventive Medicine, Regensburg University Medical Center, Regensburg, Germany; 17) Department of Medical Genetics, University of Lausanne, 1005 Lausanne, Switzerland; 18) Department of Nutrition, Harvard School of Public Health, Boston, Massachusetts 02115, USA; 19) Mount Sinai School of Medicine, New York, NY, USA.

   Adult human height is a highly heritable polygenic trait. Previous genome-wide analyses have identified 180 independent loci explaining an estimated 1/8th of the heritable component (80%). Our aims were a) to increase the understanding of the role of common genetic variation in a model quantitative trait, and b) to help understand the biology of normal growth and development. Within the GIANT consortium, we performed a GWAS of ~250,000 individuals of European ancestry. We tested for the presence of multiple signals at individual loci using an approximate conditional and joint multiple SNP regression analysis. We identified 698 independent variants associated with height at p<5x10-8, which fell in 424 loci (+/-500kb from lead SNP) and altogether explained 1/4 of the inherited component in adult height. Half of the loci contained multiple signals of association. By applying a novel pathway analysis approach that uses co-expression data from 80,000 samples to predict the biological function of poorly annotated genes, we observed enrichment for novel and biologically relevant pathways in these loci. For example, for more than 10 % of the loci a gene was found in their vicinity with a predicted "regulation of ossification" function (GO:0030278, WMW P < 10-34), including newly identified genes such as PRRX1and SNAI1. Other genes and pathways newly highlighted by pathway analysis include WNT (WNT2B, WNT4, WNT7A) and FGF (FGF2, FGF18) signaling and osteoglycin. We also noted an excess of signals across the entire genome, with the median test statistic twice that expected under null (lambda = 2.0). This result is consistent with either a very deep polygenic component to height that covers most of the genome or population stratification contributing partly to the results, or a combination of the two. Encouragingly, initial results from family based analyses and mixed models that correct for distant relatedness across samples indicate that a large proportion of the discovered signals are genuine height-associated variants rather than confounded by stratification. In conclusion, data from 250,000 individuals show that adult height is highly polygenic with, typically, multiple signals of association per locus now accounting for ¼ of heritability. Furthermore, these results suggest that increasing GWAS sample sizes can continue to uncover substantial new insights into the aetiological pathways involved in common human phenotypes.


Over 250 novel associations with human morphological traits. N. Eriksson, C. B. Do, J. Y. Tung, A. K. Kiefer, D. A. Hinds, J. L. Mountain, U. Francke 23andMe, Mountain View, CA.

   External morphological features are by definition visible and are typically easy to measure. They also generally happen to be highly heritable. As such, they have played a fundamental role in the development of the field of genetics. As morphological traits have frequently been the target of natural selection, their genetics may also provide clues into our evolutionary history. Many rare diseases include dysmorphologic features among their symptoms. However, aside from height and BMI, currently little is known about the genetics of common variation in human morphology. Here we present a series of genome-wide association studies across 18 self-reported morphological traits in a total of over 55,000 people of European ancestry from the customer base of 23andMe. The phenotypes studied include hair traits (baldness, unibrow, hair curl, upper and lower back hair, widow’s peak), as well as many soft tissue and skeletal traits (chin dimple, nose shape, dimples, earlobe attachment, nose-wiggling ability, the presence of a gap between the top incisors, joint hypermobility, finger and toe relative lengths, arch height, foot direction, height-normalized shoe size). Across the 18 phenotypes, we find a total of 281 genome-wide significant associations (including 53 for unibrow and 29 each for hair curl and chin dimple). Almost all of these associations are novel; we believe this is the largest set of novel associations ever described in a single report. Many of these SNPs show pleiotropic effects, e.g., a SNP near GDF5 is associated with hypermobility, arch height, relative toe length, shoe size, and foot direction; another near AUTS is associated with both back hair and baldness. Nearby genes are significantly enriched to be transcription factors (p<1e-14) and to be involved in rare disorders that cause cleft palate, ear, limb, or skull abnormalities (p<1e-7). A SNP near ZEB2 is associated with both widow’s peak and chin dimple; mutations in ZEB2 cause Mowat-Wilson syndrome, which includes distinctive facial features such as a pronounced chin. Morphology-associated SNPs are also enriched within regions that have been identified as undergoing selection since the divergence from Neanderthals (18 associations in 11 regions, p = 4e-5). The abundance of these SNPs, which include the ZEB2 and GDF5 associations above, suggest that physical traits may have played a significant role in driving the natural selection processes that gave rise to modern humans.



Genome-wide association study of Tanner puberty staging in males and females. D. Cousminer1, N. Timpson2, D. Berry3, W. Ang4, I. Ntalla5, M. Groen-Blokhuis6, M. Guxens7, M. Kähönen8, J. Viikari9, T. Lehtimäki10, K. Panoutsopoulou11, D. Boomsma6, E. Zeggini11, G. Dedoussis5, C. Pennell4, O. Raitakari12, E. Hyppönen3, G. Davey Smith2, M. McCarthy13, E. Widén1, The Early Growth Genetics (EGG) Consortium 1) Institute for Molecular Medicine Finland (FIMM), University of Helsinki, Finland; 2) The Medical Research Council (MRC) Centre for Causal Analyses in Translational Epidemiology, School of Social and Community Medicine, University of Bristol, Bristol, UK; 3) Centre for Paediatric Epidemiology and Biostatistics, MRC Centre for Epidemiology of Child Health, UCL Institute of Child Health, London, UK; 4) University of Western Australia, Perth, Western Australia, Australia; 5) Harokopio University of Athens, Department of Dietetics and Nutrition, Athens; 6) Netherlands Twin Register, Department of Biological Psychology, VU University, Amsterdam, The Netherlands; 7) Center for Research in Environmental Epidemiology (CREAL), Barcelona, Catalonia, Spain; 8) Department of Clinical Physiology, University of Tampere and Tampere University Hospital, Finland; 9) Department of Medicine, University of Turku, Finland; 10) Department of Clinical Chemistry, Fimlab Laboratories, University Hospital and University of Tampere, Finland; 11) Wellcome Trust Sanger Institute, Hinxton, UK; 12) Department of Clinical Physiology and Nuclear Medicine, University of Turku, Finland; 13) Wellcome Trust Centre for Human Genetics, Roosevelt Drive, University of Oxford, Oxford, UK.

   Puberty is a complex trait with large variation in timing and tempo in the population, and extremes in pubertal timing are a common cause for referral to pediatric specialists. Recently, large genome-wide association studies (GWAS) have revealed 42 common variant loci associated with age at menarche (AAM), and some implicated genes are known from severe single-gene disorders. However, little remains known of the genetic architecture underlying normal variation in the onset of puberty, especially in males.
   Tanner staging, a 5-stage scale assessing female breast and male genital development, is a commonly used measure of pubertal development. While AAM is a late event during puberty, Tanner staging during mid-puberty may correlate more closely with the central activation of puberty. With Tanner scale data at the comparable ages of 11-12 yrs in girls and 13-14 yrs in boys, we performed GWAS meta-analyses across 10 cohorts with up to 9,900 samples. The combined male and female analysis showed evidence for association near LIN28B (P=1.95x10-8), previously implicated in AAM and height growth in both sexes. Our data confirms that this locus is also important for male pubertal development and may be part of the pubertal initiation program upstream of sex-specific mechanisms. A novel signal (P= 4.95 x 10-8) with a consistent direction of effect across contributing datasets locates on chromosome 1 at an intronic transcription factor binding-site cluster within the gene CAMTA1. Furthermore, the primary analyses revealed suggestive evidence for male-specific loci, e.g. nearby MKL2 (P=4.68 x 10-7), which may be confirmed by follow-up genotyping. MAGENTA gene-set enrichment analysis of the combined-gender GWAS results showed enrichment of genes involved in expected pathways given the known biology underlying activation of puberty via the HPG axis. Novel genes near suggestively associated loci may also pinpoint novel regulatory mechanisms; CAMTA1 is a calmodulin-binding transcriptional activator, while MKL2 is also a transcriptional activator involved in cell differentiation and development. These results suggest the presence of multiple real signals beneath the genome-wide significant threshold, and further exploration of enriched pathways may reveal new insights into the biology of pubertal development.


Heritability estimation of height from common genetic variants in a large sample of African Americans. F. Chen1, G. K. Chen1, R. C. Millikan2, E. M. John3,4, C. B. Ambrosone5, L. Berstein6, W. Zheng7, J. J. Hu8, R. G. Ziegler9, S. L. Deming7, E. V. Bandera10, W. J. Blot7, 11, S. S. Strom12, S. I. Berndt9, R. A. Kittles13, B. A. Rybicki14, W. Issacs15, S. A. Ingles1, J. L. Stanford16, W. R. Diver17, J. S. Witte18, L. B. Signorello7,11, S. J. Chanock9, L. Le Marchand19, L. N. Kolonel19, B. E. Henderson1, C. A. Haiman1, D. O. Stram1 1) Preventive Medicine, University of Southern California, Los Angeles, CA; 2) Epidemiology, Gillings School of Global Public Health, and Lineberger Comprehensive Cancer Center, University of North Carolina, Chapel Hill, NC; 3) Northern California Cancer Center, Fremont, CA; 4) School of Medicine, Stanford University, and Stanford Cancer Center, Stanford, CA; 5) Cancer Prevention and Control, Roswell Park Cancer Institute, Buffalo, NY; 6) Cancer Etiology, Population Science, Beckman Research Institute, City of Hope, CA; 7) Epidemiology, Vanderbilt Epidemiology Center and Vanderbilt-Ingram Cancer Center, Vanderbilt University, Nashville, TN; 8) Sylvester Comprehensive Cancer Center, Department of Epidemiology and Public Health, University of Miami, Miami, FL; 9) Division of Cancer Epidemiology and Genetics, National Cancer Institute, Bathesda, MD; 10) The Cancer Institute of New Jersey, New Brunswick, NJ; 11) International Epidemiology Institute, Rockville, MD; 12) Epidemiology, The University of Texas M.D. Anderson Cancer Center, Huston, TX; 13) Medicine, University of Illinois at Chicago, Chicago, IL; 14) Biostatistics and Research Epidemiology, Henry Ford Hospital, Detroit, MI; 15) James Buchanan Brady Urological Institute, Johns Hopkins Hospital and Medical Institutions, Baltimore, MD; 16) Public Health Sciences, Fred Hutchinson Cancer Research Center, Seattle, WA; 17) Epidemiology Research, American Cancer Society, Atlanta, GA; 18) Institute of Human Genetics, Dept of Epidemiology and Biostatistics, University of California, San Francisco, CA; 19) Epidemiology, Cancer Research Center, University of Hawaii, Honolulu, HI.

   Height has an extremely polygenic pattern of inheritance. Genome-wide association studies (GWAS) have revealed hundreds of common variants that are associated with human height at genome-wide levels of significance. Each of these common variants has a very modest effect, and only a small fraction of phenotypic variation can be explained by the aggregate of these common variants. In this large study of African-American men and women, we genotyped and analyzed 975,519 autosomal SNPs across the entire genome using a variance components approach, and found that 46.4% of phenotypic variation can be explained by these SNPs in a sample of 9,779 evidently unrelated individuals. We noted that in two samples of close relatives defined by probability of identical-by-descent (IBD) alleles sharing (Pr (IBD=1)>=0.3 and Pr (IBD=1)>=0.4), the proportion of phenotypic variation explained by the same set of SNPs increased to 75.5% (se: 14.8%) and 70.3% (26.9%), respectively. We conclude that the additive component of genetic variation for height may have been overestimated in earlier studies (~80%) and argue that this proportion also includes variation from epistatic effects. Using simulation, we showed that by using common SNPs that are only weakly correlated with causal SNPs, the model could explain a large proportion of heritability. We therefore argue that the heritability estimate from the variance components approach is not necessarily the variation explained by a given set of SNPs, but also possibly reflects distant relatedness between nominally unrelated participants. Finally, we explored the performance of the variance components approach and concluded that the approach fails when a large number of independent variables are included in the model as the structure of the two components becomes similar. Thus some degree of population stratification seems to be required in order for the method to perform well for very large numbers of SNPs; however when modest stratification is present there is a risk of miss-attribution of effects of unmeasured (and untagged) variants to measured variants.



A multi-SNP locus-association method reveals a substantial fraction of the missing heritability. Z. Kutalik1,2, G. Ehret3,4, D. Lamparter1,2, C. Hoggart5, J. Whittaker6, J. Beckmann1,7, GIANT consortium 1) Med Gen, Univ Lausanne, Lausanne, Switzerland; 2) Swiss Institute of Bioinformatics, Switzerland; 3) Division of Cardiology, Geneva University Hospital, Geneva, Switzerland; 4) McKusick-Nathans Institute of Genetic Medicine, Johns Hopkins University, Baltimore, Maryland, United States of America; 5) Department of Pediatrics, Imperial College London, London, United Kingdom; 6) Quantitative Sciences, GlaxoSmithKline, Stevenage, UK; 7) Service of Medical Genetics, Centre Hospitalier Universitaire Vaudois, Lausanne, Switzer- land.

   There are many known examples of multiple (semi-)independent associations at individual loci, which may arise either because of true allelic heterogeneity or imperfect tagging of an unobserved causal variant. This phenomenon is of great importance in monogenic traits but has not yet been systematically investigated and quantified in complex trait GWAS. We describe a multi-SNP association method that estimates the effect of loci harbouring multiple association signals using GWAS summary statistics. Applying the method to a large anthropometric GWAS meta-analysis (GIANT), we show that for height, BMI, and waist-hip-ratio (WHR) 10%, 9%, and 8% of additional phenotypic variance can be explained respectively on top of the previously reported 10%, 1.5%, 1%. The method also permitted to substantially increase the number of loci that replicate in a discovery-validation design. Specifically, we identified in total 263 loci at which the multi-SNP explains significantly more variance than the best individual SNP at the locus. A detailed analysis of multi-SNPs shows that most of the additional variability explained is derived from SNPs not in LD with the lead SNP suggesting a major contribution of allelic heterogeneity to the missing heritability.


Hundreds of loci contribute to body fat distribution and central adiposity. A. E. Locke1, D. Shungin2,3,4, T. Ferreira5, T. W. Winkler6, D. C. Croteau-Chonka7, R. Magi5,8, T. Workalemahu9, K. Fischer8, J. Wu10, R. J. Strawbridge11, A. Justice12, F. Day13, N. Heard-Costa14,15, C. S. Fox14, M. C. Zillikens16, E. K. Speliotes17,18, H. Völzke19, L. Qi9, I. Barroso20,21, I. M. Heid6, K. E. North12, P. W. Franks2,4,9, M. I. McCarthy22, J. N. Hirschhorn23, L. A. Cupples10,14, E. Ingelsson24, A. P. Morris5, R. J. F. Loos13,25, C. M. Lindgren5, K. L. Mohlke7, Genetic Investigation of ANthropometric Traits (GIANT) Consortium 1) Department of Biostatistics and Center for Statistical Genetics, University of Michigan, Ann Arbor, MI; 2) Genetic and Molecular Epidemiology Group, Department of Public Health and Clinical Medicine, Umeå University, Umeå, Sweden; 3) Department of Odontology, Umeå University, Umeå, Sweden; 4) Department of Clinical Sciences, Skåne University Hospital, Lund University, Malmö, Sweden; 5) Wellcome Trust Centre for Human Genetics, University of Oxford, Oxford, UK; 6) Regensburg University Medical Center, Department of Epidemiology and Preventive Medicine, Regensburg, Germany; 7) Department of Genetics, University of North Carolina, Chapel Hill, NC; 8) Estonian Genome Center, University of Tartu, Estonia; 9) Department of Nutrition, Harvard School of Public Health, Boston, MA; 10) Department of Biostatistics, School of Public Health, Boston University, Boston, MA; 11) Cardiovasvular Genetics and Genomics Group, Karolinska Institutet, Stockholm Sweden; 12) Department of Epidemiology and Carolina Center for Genome Sciences, University of North Carolina, Chapel Hill, NC; 13) MRC Epidemiology Unit, Institute of Metabolic Science, Addenbrooke's Hospital, Cambridge, UK; 14) National Heart, Lung, and Blood Institute, Framingham, MA; 15) Department of Neurology, Boston University School of Medicine, Boston, MA; 16) Department of Internal Medicine, Erasmus MC Rotterdam, the Netherlands; 17) Department of Internal Medicine, Division of Gastroenterology, and Department of Computational Medicine and Bioinformatics, University of Michigan, Ann Arbor, MI; 18) Broad Institute, Cambridge, MA; 19) Institute for Community Medicine, Ernst-Moritz-Arndt-University Greifswald, Greifswald, Germany; 20) Wellcome Trust Sanger Institute, Wellcome Trust Genome Campus, Hinxton, UK; 21) University of Cambridge Metabolic Research Labs, Institute of Metabolic Sciences,; 22) University of Oxford, Oxford, UK; 23) Department of Genetics, Harvard Medical School, Boston, MA; 24) Department of Medical Epidemiology and Biostatistics, Karolinska Institutet, Stockholm, Sweden; 25) Charles R. Bronfman Institute of Personalized Medicine, Child Health and Development Institute, Department of Preventive Medicine, Mount Sinai School of Medicine, New York, NY.

   Central adiposity and body fat distribution are risk factors for type 2 diabetes and cardiovascular disease and can be measured using waist circumference (WC), hip circumference (HIP), and waist-to-hip ratio (WHR). Adjusting for body mass index (BMI) differentiates effects from those for overall obesity. We performed fixed effects inverse variance meta-analysis for these traits with 72,919 individuals from 30 studies in a prior genome-wide association study (GWAS) meta-analysis, 71,139 individuals from 24 additional GWAS, and 67,163 individuals from 28 studies genotyped on Metabochip by the GIANT consortium. We identified 48 independent genome-wide significant (p<5x10-8) associations for WHR adjusted for BMI, including all 14 previously published signals. Twelve signals are located near genes for transcription factors, including developmental homeobox-containing proteins. Among them, two are in the HOXC gene cluster near HOXC8 and miR-196a2. HOXC8 is expressed in white adipose tissue and is a regulator of brown adipogenesis, while miR-196a inhibits Hoxc8 expression. Signals are located near PPARG, encoding a transcription factor known to regulate adipocyte differentiation, and near HMGA1 and CEPBA, encoding transcription factors that act downstream of insulin receptor and leptin signaling, respectively. Further novel signals are located near genes involved in angiogenesis (PLXND1, VEGFB, and MEIS1). Among the other five traits, we estimate that a significant proportion of the genetic effects for WC and HIP adjusted for BMI are correlated with height (0.59, p<5x10-79 and 0.83, p<2x10-40, respectively). Despite this strong correlation, an appreciable proportion of the genetic contributions to these traits will be independent of height. Association meta-analysis for the five additional traits identified an additional 148 independent signals (p<5x10-8), 32 of which have not been reported previously for an anthropometric trait. These novel signals suggest regulation of adipose gene expression (KLF14) and transcriptional control of cell patterning and differentiation in early development (HLX, SOX11, ZNF423, and HMGXB4) affect fat distribution. Meta-analyses for WHR, WC, and HIP, with and without adjustment for BMI, identified a total of 196 independent loci, 66 novel, affecting fat deposition and body shape, and implicating genes involved in development, adipose gene expression and tissue differentiation, response to metabolic signaling, and angiogenesis.



Prediction of human height with large panels of SNPs - insights into genetic architecture. Y. C. Klimentidis1, A. I. Vazquez1, G. de los Campos2 1) Energetics, University of Alabama at Birmingham, Birmingham, AL; 2) Biostatistics, University of Alabama at Birmingham, Birmingham, AL.

   Prediction of complex traits from genetic information is an area of major clinical and scientific interest. Height is a model trait since it is highly heritable and easily measured. Substantial strides in understanding the genetic basis of height have recently been made through genome-wide association studies (GWAS), and whole-genome prediction (WGP) which fits thousands of SNPs jointly. Here, we attempt to gain insight into the genetic architecture of human height by examining how WGP accuracy is affected by the choice of single-nucleotide polymorphism (SNPs). Specifically, we compare the prediction accuracy of models using: 1) SNPs selected based on the ‘top hits’ of the GIANT consortium meta-analysis for height at different p-value thresholds, and 2) SNPs in genomic regions that surround the most significant ‘top hits’. We use the Framingham Heart Study and GENEVA datasets, imputed up to 10 million SNPs with 1000 Genomes reference data. The predictive accuracy of each model was evaluated in cross-validation. We find that prediction accuracy increases up to a certain point with the inclusion of more ‘top hits’ from the GIANT study, that including SNPs from the regions surrounding ‘top hits’ contributes minimally to prediction accuracy, and that prediction accuracy increases with the size of the training dataset. Finally, we find that prediction accuracy is greatest for individuals at the phenotypic extremes of height. Our results suggest that improvement of genomic prediction models will require the use of information from a large number of selected SNPs, and that these models may be most useful at the phenotypic extremes.




Evidence of Inbreeding Depression on Human Height. J. F. Wilson1, N. Eklund2,3, N. Pirastu4, M. Kuningas5, B. P. McEvoy6, T. Esko7, T. Corre8, G. Davies9, P. d'Adamo4, N. D. Hastie10, U. Gyllensten11, A. F. Wright10, C. M. van Duijn5, M. Dunlop10, I. Rudan1, P. Gasparini4, P. P. Pramstaller12, I. J. Deary9, D. Toniolo8, J. G. Eriksson3, A. Jula3, O. T. Raitakari13, A. Metspalu7, M. Perola2,3,7, M. R. Jarvelin14,15, A. Uitterlinden5, P. M. Visscher6, H. Campbell1, R. McQuillan1, ROHgen 1) Centre for Population Health Sciences, Univ Edinburgh, Edinburgh, United Kingdom; 2) Institute for Molecular Medicine Finland (FIMM), Helsinki, Finland; 3) Department of Chronic Disease Prevention, National Institute for Health and Welfare, Helsinki, Finland; 4) Institute for Maternal and Child Health, IRCCS “Burlo Garofolo”, Trieste, University of Trieste, Italy; 5) Department of Epidemiology, Erasmus University Medical Center, Rotterdam, The Netherlands; 6) Queensland Institute of Medical Research, 300 Herston Road, Brisbane, Queensland 4006, Australia; 7) Estonian Genome Center, University of Tartu, Tartu, Estonia; 8) Division of Genetics and Cell Biology, San Raffaele Research Institute, Milano, Italy; 9) Department of Psychology, The University of Edinburgh, 7 George Square, Edinburgh EH8 9JZ, UK; 10) MRC Human Genetics Unit, Institute of Genetics and Molecular Medicine, University of Edinburgh, Edinburgh, EH4 2XU, Scotland; 11) Department of Immunology, Genetics and Pathology, SciLifeLab Uppsala, Rudbeck Laboratory, Uppsala University, Uppsala, Sweden; 12) Centre for Biomedicine, European Academy Bozen/Bolzano (EURAC), Bolzano, Italy - Affiliated Institute of the University of Lübeck, Lübeck, Germany; 13) Research Centre of Applied and Preventive Cardiovascular Medicine, University of Turku, Turku, Finland; 14) Biocenter Oulu, University of Oulu, Finland; 15) Department of Epidemiology and Biostatistics, School of Public Health, Imperial College London, MRC Health Protection Agency (HPA) Centre for Environment and Health, Imperial College London, London, UK.

   Stature is a classical and highly heritable complex trait, with 80-90% of variation explained by genetic factors. In recent years, genome-wide association studies (GWAS) have successfully identified many common additive variants influencing human height; however, little attention has been given to the potential role of recessive genetic effects. Here, we investigated genome-wide recessive effects by an analysis of inbreeding depression on adult height in over 35,000 people from 21 different population samples. We found a highly significant inverse association between height and genome-wide homozygosity, equivalent to a height reduction of up to 3 cm in the offspring of first cousins compared with the offspring of unrelated individuals, an effect which remained after controlling for the effects of socio-economic status, an important confounder. There was, however, a high degree of heterogeneity among populations: whereas the direction of the effect was consistent across most population samples, the effect size differed significantly among populations. It is likely that this reflects true biological heterogeneity: whether or not an effect can be observed will depend on both the variance in homozygosity in the population and the chance inheritance of individual recessive genotypes. These results predict that multiple, rare, recessive variants influence human height. Although this exploratory work focuses on height alone, the methodology developed is generally applicable to heritable quantitative traits (QT), paving the way for an investigation into inbreeding effects, and therefore genetic architecture, on a range of QT of biomedical importance.


Empirical and theoretical studies on genetic variance of rare variants for complex traits using whole genome sequencing in the CHARGE Consortium. C. Zhu1, A. Morrison2, J. Reid3, C. J. O’Donnell4, B. Psaty5, L. A. Cupples4,6, R. Gibbs3, E. Boerwinkle2,3, X. Liu2 1) Department of Agronomy, Kansas State University , Manhattan, KS; 2) Human Genetics Center, School of Public Health, University of Texas Health Science Center at Houston, Houston, TX; 3) Human Genome Sequencing Center, Baylor College of Medicine, Houston, TX; 4) NHLBI Framingham Heart Study, Framingham, MA; 5) Cardiovascular Health Research Unit, University of Washington, Seattle, WA; 6) Department of Biostatistics, Boston University School of Public Health, Boston, MA.

   As the frontier of human genetic studies have shifted from genome-wide association studies (GWAS) towards whole exome and whole genome sequencing studies, we have witnessed an explosion of new DNA variants, especially rare variants. An important but not yet answered question is the contribution of rare variants to the heritabilities of complex traits, which determine, in part, the gain in power from rare variants to discover new disease-associated genes. Here we present theoretical and empirical results on this question.
    Our theoretical study was based upon the distribution of allele frequencies incorporating mutation, random genetic drift, and the possibility of purifying selection against susceptibility mutations. It shows that in most cases rare variants only contribute a small proportion to the overall genetic variance of a trait, but under certain conditions they may explain as much as 50% of additive genetic variance when both susceptible alleles are under purifying selection and the rate of mutations compensating the susceptible alleles (i.e. repair rate) is high.
    In our empirical study, we estimated the proportion of additive genetic variances (σg2) of rare variants contributed to the total phenotypic variances of six complex traits (BMI, height, LDL-C, HDL-C, triglyceride and total cholesterol) using whole genome sequences (8x coverage) of 962 European Americans from the Charge-S study. The results show that the estimated σg2 of rare variants (MAF≤1%) ranged from 2% to 8% across the six traits. However, the standard errors (s.e.) of the estimated variance components from rare variants are relatively large compared to those of common variants. Using HDL-C as an example, the estimated σg2s are 0.08 (s.e. 0.10), 0.05 (s.e. 0.05) and 0.58 (s.e. 0.05) for rare, low-frequency (1%<MAF≤5%) and common (MAF>5%) variants, respectively.


Leveraging admixture analysis to resolve missing and cross-population heritability in GWAS. N. Zaitlen1, A. Gusev1, B. Pasaniuc1, G. Bhatia2, S. Pollack1, A. Tandon3, E. Stahl3, R. Do4, B. Vilhjalmsson1, E. Akylbekova5, A. Cupples6, M. Fornage7, L. Kao8, L. Lange9, S. Musani5, G. Papanicolaou10, J. Rotter11, I. Ruczinksi12, D. Siscovick13, X. Zhu14, S. McCarroll3, G. Lettre15, J. Hirschhorn16, N. Patterson4, D. Reich3, J. Wilson5, S. Kathiresan4, A. Price1, CAC. CARe Analysis Core5 1) Genetic Epidemiology, Harvard School of Public Health, Boston, MA; 2) Harvard-MIT Division of Health, Science and Technology; 3) Department of Genetics, Harvard Medical School, Boston, MA, USA; 4) Broad Institute of Harvard and Massachusetts Institute of Technology (MIT), Cambridge, Massachusetts, USA; 5) Jackson Heart Study, Jackson State University, Jackson, MS, USA; 6) Boston University, Boston, MA, USA; 7) Institute of Molecular Medicine and Division of Epidemiology School of Public Health, University of Texas Health Sciences Center at Houston, Houston, TX, 77030, USA; 8) Department of Epidemiology, Johns Hopkins University, Baltimore, Maryland, United States of America; 9) University of North Carolina, Chapel Hill, NC, USA; 10) National Heart, Lung, and Blood Institute (NHLBI), Division of Cardiovascular Sciences, NIH, Bethesda, MD 20892, USA; 11) Cedars-Sinai Medical Center, Medical Genetics Institute, Los Angeles, CA, USA; 12) Johns Hopkins University, Baltimore, Maryland, United States of America; 13) University of Washington, Seattle, WA, USA; 14) Department of Epidemiology and Biostatistics, School of Medicine, Case Western Reserve University, Cleveland, USA; 15) Département de Médecine, Université de Montréal, C.P. 6128, succursale CentrePville, Montréal, Québec, Canada; 16) Divisions of Genetics and Endocrinology and Program in Genomics, Children’s Hospital Boston, Boston, MA, USA2.

   Resolving missing heritability, the difference between phenotypic variance explained by associated SNPs and estimates of narrow-sense heritability (h2), will inform strategies for disease mapping and prediction of complex traits. Possible explanations for missing heritability include rare variants not captured by genotyping arrays, or biased estimates of h2 due to epistatic interactions [Zuk et al. 2012]. Here, we develop a novel approach to estimating h2 based on sharing of local ancestry segments between pairs of unrelated individuals in an admixed population. Unlike recent approaches for estimating the heritability explained by genotyped markers (h2g) [Yang et al. 2010], our approach captures the total h2, because local ancestry estimated from genotyping array data captures the effects of all variants—not just those on the array. Our approach uses only unrelated individuals, and is thus not susceptible to biases caused by epistatic interactions or shared environment that can confound genealogy-based estimates of h2. Theory and simulations show that the variance explained by local ancestry (h2γ) is related to h2, Fst, and genome-wide ancestry proportion (θ): h2γ = h2*2*Fst*θ*(1-θ). Thus, we can estimate h2γ and then infer h2 from h2γ. We apply our method to 5,040 African Americans from the CARe cohort and estimate the autosomal h2 for HDL cholesterol (0.39±0.11), LDL cholesterol (0.18±0.09), and height (0.55±0.13). As expected these h2 estimates were higher than estimates of h2g from the same data using standard approaches: 0.22±0.07, 0.16±0.07 and 0.31±0.07, consistent with previous estimates. The difference between h2 and h2g suggests that rare variants contribute substantial missing heritability that can be quantified using local ancestry information. Larger sample sizes will sizes will enable h2 estimates with even lower standard errors, so that the possible contribution of epistasis to previous estimates of h2 can be precisely quantified. We additionally use local ancestry to estimate the fraction of phenotypic variance shared between European and African genomes that is explained by genotyped markers, by estimating h2g in European segments, h2g in African segments, and h2g shared between European and African segments. Given that most GWAS to date have been carried out in individuals of European descent, these estimates shed light on the importance of collecting data from non-European populations for mapping disease in those populations.


Genome-wide association meta-analyses in over 210,000 individuals identify 20 sexually dimorphic genetic variants for body fat distribution. T. W. Winkler1, D. C. Croteau-Chonka2, T. Ferreira3, K. Fischer4, A. E. Locke5, R. Mägi3,4, D. Shungin6,7,8, T. Workalemahu9, J. Wu10, F. Day11, A. U. Jackson5, A. Justice12, R. Strawbridge13, H. Völzke14, L. Qi9, M. C. Zillikens15, C. S. Fox16, E. K. Speliotes17,18, I. Barroso19,20, E. Ingelsson21, J. N. Hirschhorn22, M. I. McCarthy23, P. W. Franks6,8,9, A. P. Morris3, L. A. Cupples10,24, K. E. North12, K. L. Mohlke2, R. J. F. Loos11,25, I. M. Heid1, C. M. Lindgren3, GIANT Consortium 1) Public Health and Gender Studies, Institute of Epidemiology and Preventive Medicine, Regensburg University Medical Center, Regensburg, Germany; 2) Department of Genetics, University of North Carolina, Chapel Hill, NC; 3) Wellcome Trust Centre for Human Genetics, University of Oxford, Oxford, UK; 4) Estonian Genome Center, University of Tartu, Tartu, Estonia; 5) Department of Biostatistics, University of Michigan, Ann Arbor, MI; 6) Department of Clinical Sciences, Skåne University Hospital, Lund University, Malmö, Sweden; 7) Department of Odontology, Umeå University, Umeå, Sweden; 8) Genetic and Molecular Epidemiology Group, Department of Public Health and Clinical Medicine, Section for Medicine, Umeå University, Umeå, Sweden; 9) Department of Nutrition, Harvard School of Public Health, Boston, MA; 10) Department of Biostatistics, School of Public Health, Boston University, Boston, MA; 11) MRC Epidemiology Unit, Institute of Metabolic Science, Addenbrooke's Hospital, Cambridge, UK; 12) Department of Epidemiology, University of North Carolina at Chapel Hill, Chapel Hill, NC; 13) Cardiovascular Genetics and Genomics Group, Karolinska Institute, Stockholm, Sweden; 14) Institute for Community Medicine, Ernst-Moritz-Arndt-University Greifswald, Greifswald, Germany; 15) Department of Internal Medicine, Erasmus MC Rotterdam, the Netherlands; 16) National Heart, Lung, and Blood Institute, Framingham, MA; 17) Broad Institute, Cambridge, MA; 18) Department of Internal Medicine, Division of Gastroenterology, and Department of Computational Medicine and Bioinformatics, University of Michigan, Ann Arbor, MI; 19) University of Cambridge Metabolic Research Labs, Institute of Metabolic Science Addenbrooke's Hospital, Cambridge, UK; 20) Wellcome Trust Sanger Institute, Wellcome Trust Genome Campus, Hinxton, UK; 21) Department of Medical Epidemiology and Biostatistics, Karolinska Institutet, Stockholm, Sweden; 22) Department of Genetics, Harvard Medical School, Boston, Massachusetts 02115, USA; 23) University of Oxford, Oxford, UK; 24) Framingham Heart Study, Framingham, MA; 25) Charles R. Bronfman Institute of Personalized Medicine, Child Health and Development Institute, Department of Preventive medicine, Mount Sinai School of Medicine, New York, NY 10029, USA.

   It is well-known that body fat distribution differs between men and women, a circumstance that may be due to innate, genetic differences between sexes. Previously, we performed a large-scale meta-analysis of GWAS of waist-to-hip ratio adjusted for BMI (WHR), a measure of body fat distribution independent of overall adiposity and found that of the 14 loci established in men and women combined, seven showed a significant sex-difference. In a subsequent genome-wide analysis that was specifically tailored to detect sex-differential genetic effects for WHR, we identified two additional loci with significant sex-difference. Despite these findings, the genetic basis affecting the sexual dimorphism of WHR as well as the genetic architecture of WHR in general are still poorly understood. We therefore conducted sex-combined and sex-stratified meta-analyses comprising >210,000 individuals (>116,000 women; >94,000 men) of European ancestry from 57 GWAS studies and 28 studies genotyped on the MetaboChip within the GIANT consortium. The sex-combined analysis yielded 39 loci with genome-wide significant association (P<5x10-8), of which 11 loci showed significant sex-difference (Bonferroni-corrected P<0.05/39). Six of these loci influence WHR in women only without any effect in men (near COBLL1, LYPLAL1, PPARG, PLXND1, MACROD1, FAM13A); four loci have an effect in women and a less pronounced effect in men (near VEGFA, ADAMTS9, HOXC13, RSPO3); and one locus has only an effect in men (near GDF5). The sex-stratified analyses identified nine additional female-specific loci that had been missed in the sex-combined analysis due to the lack of effect in men (near MAP3K1, BCL2, TNFAIP8, CMIP, NKX3-1, NMU, SFXN2, HMGA1, KCNJ2). No additional loci were identified in the male-specific analysis. We confirmed all previously established sexually dimorphic variants for WHR. Of particular interest is the PPARG region that is a well-known target in type 2 diabetes treatments and shows a female-specific association with WHR. The enrichment of female-specific associations, i.e. 19 of the 20 sexually dimorphic loci, is consistent with the heritability of WHR as estimated in the Framingham Heart study; we found that WHR is more heritable in women (h2~46%) compared to men (h2~19%). Our results highlight the importance of sex-stratified analyses and can help to better understand the genetics underpinning the sex-differences of body fat distribution.