School of Agriculture, Food and Ecosystem Sciences - Research Publications

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    Additive Genetic Variation in Schizophrenia Risk Is Shared by Populations of African and European Descent
    de Candia, TR ; Lee, SH ; Yang, J ; Browning, BL ; Gejman, PV ; Levinson, DF ; Mowry, BJ ; Hewitt, JK ; Goddard, ME ; O'Donovan, MC ; Purcell, SM ; Posthuma, D ; Visscher, PM ; Wray, NR ; Keller, MC (CELL PRESS, 2013-09-05)
    To investigate the extent to which the proportion of schizophrenia's additive genetic variation tagged by SNPs is shared by populations of European and African descent, we analyzed the largest combined African descent (AD [n = 2,142]) and European descent (ED [n = 4,990]) schizophrenia case-control genome-wide association study (GWAS) data set available, the Molecular Genetics of Schizophrenia (MGS) data set. We show how a method that uses genomic similarities at measured SNPs to estimate the additive genetic correlation (SNP correlation [SNP-rg]) between traits can be extended to estimate SNP-rg for the same trait between ethnicities. We estimated SNP-rg for schizophrenia between the MGS ED and MGS AD samples to be 0.66 (SE = 0.23), which is significantly different from 0 (p(SNP-rg = 0) = 0.0003), but not 1 (p(SNP-rg = 1) = 0.26). We re-estimated SNP-rg between an independent ED data set (n = 6,665) and the MGS AD sample to be 0.61 (SE = 0.21, p(SNP-rg = 0) = 0.0003, p(SNP-rg = 1) = 0.16). These results suggest that many schizophrenia risk alleles are shared across ethnic groups and predate African-European divergence.
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    Population Structure Analysis of Bull Genomes of European and Western Ancestry.
    Chung, NC ; Szyda, J ; Frąszczak, M ; 1000 Bull Genomes Project, (Springer Science and Business Media LLC, 2017-01-13)
    Since domestication, population bottlenecks, breed formation, and selective breeding have radically shaped the genealogy and genetics of Bos taurus. In turn, characterization of population structure among diverse bull (males of Bos taurus) genomes enables detailed assessment of genetic resources and origins. By analyzing 432 unrelated bull genomes from 13 breeds and 16 countries, we demonstrate genetic diversity and structural complexity among the European/Western cattle population. Importantly, we relaxed a strong assumption of discrete or admixed population, by adapting latent variable models for individual-specific allele frequencies that directly capture a wide range of complex structure from genome-wide genotypes. As measured by magnitude of differentiation, selection pressure on SNPs within genes is substantially greater than that on intergenic regions. Additionally, broad regions of chromosome 6 harboring largest genetic differentiation suggest positive selection underlying population structure. We carried out gene set analysis using SNP annotations to identify enriched functional categories such as energy-related processes and multiple development stages. Our population structure analysis of bull genomes can support genetic management strategies that capture structural complexity and promote sustainable genetic breadth.
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    Can we make genomic selection 100% accurate?
    Goddard, ME (WILEY, 2017-08)
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    Genome variants associated with RNA splicing variations in bovine are extensive shared between tissues
    Xiang, R ; Hayes, BJ ; Vander Jagt, CJ ; MacLeod, IM ; Khansefid, M ; Bowman, PJ ; Yuan, Z ; Prowse-Wilkins, CP ; Reich, CM ; Mason, BA ; Garner, JB ; Marett, LC ; Chen, Y ; Bolormaa, S ; Daetwyler, HD ; Chamberlain, AJ ; Goddard, ME (BMC, 2018-07-04)
    BACKGROUND: Mammalian phenotypes are shaped by numerous genome variants, many of which may regulate gene transcription or RNA splicing. To identify variants with regulatory functions in cattle, an important economic and model species, we used sequence variants to map a type of expression quantitative trait loci (expression QTLs) that are associated with variations in the RNA splicing, i.e., sQTLs. To further the understanding of regulatory variants, sQTLs were compare with other two types of expression QTLs, 1) variants associated with variations in gene expression, i.e., geQTLs and 2) variants associated with variations in exon expression, i.e., eeQTLs, in different tissues. RESULTS: Using whole genome and RNA sequence data from four tissues of over 200 cattle, sQTLs identified using exon inclusion ratios were verified by matching their effects on adjacent intron excision ratios. sQTLs contained the highest percentage of variants that are within the intronic region of genes and contained the lowest percentage of variants that are within intergenic regions, compared to eeQTLs and geQTLs. Many geQTLs and sQTLs are also detected as eeQTLs. Many expression QTLs, including sQTLs, were significant in all four tissues and had a similar effect in each tissue. To verify such expression QTL sharing between tissues, variants surrounding (±1 Mb) the exon or gene were used to build local genomic relationship matrices (LGRM) and estimated genetic correlations between tissues. For many exons, the splicing and expression level was determined by the same cis additive genetic variance in different tissues. Thus, an effective but simple-to-implement meta-analysis combining information from three tissues is introduced to increase power to detect and validate sQTLs. sQTLs and eeQTLs together were more enriched for variants associated with cattle complex traits, compared to geQTLs. Several putative causal mutations were identified, including an sQTL at Chr6:87392580 within the 5th exon of kappa casein (CSN3) associated with milk production traits. CONCLUSIONS: Using novel analytical approaches, we report the first identification of numerous bovine sQTLs which are extensively shared between multiple tissue types. The significant overlaps between bovine sQTLs and complex traits QTL highlight the contribution of regulatory mutations to phenotypic variations.
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    Comparison of methods that use whole genome data to estimate the heritability and genetic architecture of complex traits
    Evans, LM ; Tahmasbi, R ; Vrieze, SI ; Abecasis, GR ; Das, S ; Gazal, S ; Bjelland, DW ; de Candia, TR ; Goddard, ME ; Neale, BM ; Yang, J ; Visscher, PM ; Keller, MC (NATURE PORTFOLIO, 2018-05)
    Multiple methods have been developed to estimate narrow-sense heritability, h2, using single nucleotide polymorphisms (SNPs) in unrelated individuals. However, a comprehensive evaluation of these methods has not yet been performed, leading to confusion and discrepancy in the literature. We present the most thorough and realistic comparison of these methods to date. We used thousands of real whole-genome sequences to simulate phenotypes under varying genetic architectures and confounding variables, and we used array, imputed, or whole genome sequence SNPs to obtain 'SNP-heritability' estimates. We show that SNP-heritability can be highly sensitive to assumptions about the frequencies, effect sizes, and levels of linkage disequilibrium of underlying causal variants, but that methods that bin SNPs according to minor allele frequency and linkage disequilibrium are less sensitive to these assumptions across a wide range of genetic architectures and possible confounding factors. These findings provide guidance for best practices and proper interpretation of published estimates.
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    Genetic variance estimation with imputed variants finds negligible missing heritability for human height and body mass index
    Yang, J ; Bakshi, A ; Zhu, Z ; Hemani, G ; Vinkhuyzen, AAE ; Lee, SH ; Robinson, MR ; Perry, JRB ; Nolte, IM ; van Vliet-Ostaptchouk, JV ; Snieder, H ; Esko, T ; Milani, L ; Maegi, R ; Metspalu, A ; Hamsten, A ; Magnusson, PKE ; Pedersen, NL ; Ingelsson, E ; Soranzo, N ; Keller, MC ; Wray, NR ; Goddard, ME ; Visscher, PM (NATURE PUBLISHING GROUP, 2015-10)
    We propose a method (GREML-LDMS) to estimate heritability for human complex traits in unrelated individuals using whole-genome sequencing data. We demonstrate using simulations based on whole-genome sequencing data that ∼97% and ∼68% of variation at common and rare variants, respectively, can be captured by imputation. Using the GREML-LDMS method, we estimate from 44,126 unrelated individuals that all ∼17 million imputed variants explain 56% (standard error (s.e.) = 2.3%) of variance for height and 27% (s.e. = 2.5%) of variance for body mass index (BMI), and we find evidence that height- and BMI-associated variants have been under natural selection. Considering the imperfect tagging of imputation and potential overestimation of heritability from previous family-based studies, heritability is likely to be 60-70% for height and 30-40% for BMI. Therefore, the missing heritability is small for both traits. For further discovery of genes associated with complex traits, a study design with SNP arrays followed by imputation is more cost-effective than whole-genome sequencing at current prices.
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    A General Unified Framework to Assess the Sampling Variance of Heritability Estimates Using Pedigree or Marker-Based Relationships
    Visscher, PM ; Goddard, ME (GENETICS SOCIETY AMERICA, 2015-01)
    Heritability is a population parameter of importance in evolution, plant and animal breeding, and human medical genetics. It can be estimated using pedigree designs and, more recently, using relationships estimated from markers. We derive the sampling variance of the estimate of heritability for a wide range of experimental designs, assuming that estimation is by maximum likelihood and that the resemblance between relatives is solely due to additive genetic variation. We show that well-known results for balanced designs are special cases of a more general unified framework. For pedigree designs, the sampling variance is inversely proportional to the variance of relationship in the pedigree and it is proportional to 1/N, whereas for population samples it is approximately proportional to 1/N(2), where N is the sample size. Variation in relatedness is a key parameter in the quantification of the sampling variance of heritability. Consequently, the sampling variance is high for populations with large recent effective population size (e.g., humans) because this causes low variation in relationship. However, even using human population samples, low sampling variance is possible with high N.
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    The Genetic Architecture of Climatic Adaptation of Tropical Cattle
    Porto-Neto, LR ; Reverter, A ; Prayaga, KC ; Chan, EKF ; Johnston, DJ ; Hawken, RJ ; Fordyce, G ; Garcia, JF ; Sonstegard, TS ; Bolormaa, S ; Goddard, ME ; Burrow, HM ; Henshall, JM ; Lehnert, SA ; Barendse, W ; Rueppell, O (PUBLIC LIBRARY SCIENCE, 2014-11-24)
    Adaptation of global food systems to climate change is essential to feed the world. Tropical cattle production, a mainstay of profitability for farmers in the developing world, is dominated by heat, lack of water, poor quality feedstuffs, parasites, and tropical diseases. In these systems European cattle suffer significant stock loss, and the cross breeding of taurine x indicine cattle is unpredictable due to the dilution of adaptation to heat and tropical diseases. We explored the genetic architecture of ten traits of tropical cattle production using genome wide association studies of 4,662 animals varying from 0% to 100% indicine. We show that nine of the ten have genetic architectures that include genes of major effect, and in one case, a single location that accounted for more than 71% of the genetic variation. One genetic region in particular had effects on parasite resistance, yearling weight, body condition score, coat colour and penile sheath score. This region, extending 20 Mb on BTA5, appeared to be under genetic selection possibly through maintenance of haplotypes by breeders. We found that the amount of genetic variation and the genetic correlations between traits did not depend upon the degree of indicine content in the animals. Climate change is expected to expand some conditions of the tropics to more temperate environments, which may impact negatively on global livestock health and production. Our results point to several important genes that have large effects on adaptation that could be introduced into more temperate cattle without detrimental effects on productivity.
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    Defining the role of common variation in the genomic and biological architecture of adult human height
    Wood, AR ; Esko, T ; Yang, J ; Vedantam, S ; Pers, TH ; Gustafsson, S ; Chun, AY ; Estrada, K ; Luan, J ; Kutalik, Z ; Amin, N ; Buchkovich, ML ; Croteau-Chonka, DC ; Day, FR ; Duan, Y ; Fall, T ; Fehrmann, R ; Ferreira, T ; Jackson, AU ; Karjalainen, J ; Lo, KS ; Locke, AE ; Maegi, R ; Mihailov, E ; Porcu, E ; Randall, JC ; Scherag, A ; Vinkhuyzen, AAE ; Westra, H-J ; Winkler, TW ; Workalemahu, T ; Zhao, JH ; Absher, D ; Albrecht, E ; Anderson, D ; Baron, J ; Beekman, M ; Demirkan, A ; Ehret, GB ; Feenstra, B ; Feitosa, MF ; Fischer, K ; Fraser, RM ; Goel, A ; Gong, J ; Justice, AE ; Kanoni, S ; Kleber, ME ; Kristiansson, K ; Lim, U ; Lotay, V ; Lui, JC ; Mangino, M ; Leach, IM ; Medina-Gomez, C ; Nalls, MA ; Nyholt, DR ; Palmer, CD ; Pasko, D ; Pechlivanis, S ; Prokopenko, I ; Ried, JS ; Ripke, S ; Shungin, D ; Stancakova, A ; Strawbridge, RJ ; Sung, YJ ; Tanaka, T ; Teumer, A ; Trompet, S ; van der Laan, SW ; van Setten, J ; Van Vliet-Ostaptchouk, JV ; Wang, Z ; Yengo, L ; Zhang, W ; Afzal, U ; Arnloev, J ; Arscott, GM ; Bandinelli, S ; Barrett, A ; Bellis, C ; Bennett, AJ ; Berne, C ; Blueher, M ; Bolton, JL ; Boettcher, Y ; Boyd, HA ; Bruinenberg, M ; Buckley, BM ; Buyske, S ; Caspersen, IH ; Chines, PS ; Clarke, R ; Claudi-Boehm, S ; Cooper, M ; Daw, EW ; De Jong, PA ; Deelen, J ; Delgado, G ; Denny, JC ; Dhonukshe-Rutten, R ; Dimitriou, M ; Doney, ASF ; Doerr, M ; Eklund, N ; Eury, E ; Folkersen, L ; Garcia, ME ; Geller, F ; Giedraitis, V ; Go, AS ; Grallert, H ; Grammer, TB ; Graessler, J ; Groenberg, H ; de Groot, LCPGM ; Groves, CJ ; Haessler, J ; Hall, P ; Haller, T ; Hallmans, G ; Hannemann, A ; Hartman, CA ; Hassinen, M ; Hayward, C ; Heard-Costa, NL ; Helmer, Q ; Hemani, G ; Henders, AK ; Hillege, HL ; Hlatky, MA ; Hoffmann, W ; Hoffmann, P ; Holmen, O ; Houwing-Duistermaat, JJ ; Illig, T ; Isaacs, A ; James, AL ; Jeff, J ; Johansen, B ; Johansson, A ; Jolley, J ; Juliusdottir, T ; Junttila, J ; Kho, AN ; Kinnunen, L ; Klopp, N ; Kocher, T ; Kratzer, W ; Lichtner, P ; Lind, L ; Lindstroem, J ; Lobbens, S ; Lorentzon, M ; Lu, Y ; Lyssenko, V ; Magnusson, PKE ; Mahajan, A ; Maillard, M ; McArdle, WL ; McKenzie, CA ; McLachlan, S ; McLaren, PJ ; Menni, C ; Merger, S ; Milani, L ; Moayyeri, A ; Monda, KL ; Morken, MA ; Mueller, G ; Mueller-Nurasyid, M ; Musk, AW ; Narisu, N ; Nauck, M ; Nolte, IM ; Noethen, MM ; Oozageer, L ; Pilz, S ; Rayner, NW ; Renstrom, F ; Robertson, NR ; Rose, LM ; Roussel, R ; Sanna, S ; Scharnagl, H ; Scholtens, S ; Schumacher, FR ; Schunkert, H ; Scott, RA ; Sehmi, J ; Seufferlein, T ; Shin, J ; Silventoinen, K ; Smit, JH ; Smith, AV ; Smolonska, J ; Stanton, AV ; Stirrups, K ; Stott, DJ ; Stringham, HM ; Sundstrom, J ; Swertz, MA ; Syvanen, A-C ; Tayo, BO ; Thorleifsson, G ; Tyrer, JP ; van Dijk, S ; van Schoor, NM ; van der Velde, N ; van Heemst, D ; van Oort, FVA ; Vermeulen, SH ; Verweij, N ; Vonk, JM ; Waite, LL ; Waldenberger, M ; Wennauer, R ; Wilkens, LR ; Willenborg, C ; Wilsgaard, T ; Wojczynski, MK ; Wong, A ; Wright, AF ; Zhang, Q ; Arveiler, D ; Bakker, SJL ; Beilby, J ; Bergman, RN ; Bergmann, S ; Biffar, R ; Blangero, J ; Boomsma, DI ; Bornstein, SR ; Bovet, P ; Brambilla, P ; Brown, MJ ; Campbell, H ; Caulfield, MJ ; Chakravarti, A ; Collins, R ; Collins, FS ; Crawford, DC ; Cupples, LA ; Danesh, J ; de Faire, U ; den Ruijter, HM ; Erbel, R ; Erdmann, J ; Eriksson, JG ; Farrall, M ; Ferrannini, E ; Ferrieres, J ; Ford, I ; Forouhi, NG ; Forrester, T ; Gansevoort, RT ; Gejman, PV ; Gieger, C ; Golay, A ; Gottesman, O ; Gudnason, V ; Gyllensten, U ; Haas, DW ; Hall, AS ; Harris, TB ; Hattersley, AT ; Heath, AC ; Hengstenberg, C ; Hicks, AA ; Hindorff, LA ; Hingorani, AD ; Hofman, A ; Hovingh, GK ; Humphries, SE ; Hunt, SC ; Hypponen, E ; Jacobs, KB ; Jarvelin, M-R ; Jousilahti, P ; Jula, AM ; Kaprio, J ; Kastelein, JJP ; Kayser, M ; Kee, F ; Keinanen-Kiukaanniemi, SM ; Kiemeney, LA ; Kooner, JS ; Kooperberg, C ; Koskinen, S ; Kovacs, P ; Kraja, AT ; Kumari, M ; Kuusisto, J ; Lakka, TA ; Langenberg, C ; Le Marchand, L ; Lehtimaki, T ; Lupoli, S ; Madden, PAF ; Mannisto, S ; Manunta, P ; Marette, A ; Matise, TC ; McKnight, B ; Meitinger, T ; Moll, FL ; Montgomery, GW ; Morris, AD ; Morris, AP ; Murray, JC ; Nelis, M ; Ohlsson, C ; Oldehinkel, AJ ; Ong, KK ; Ouwehand, WH ; Pasterkamp, G ; Peters, A ; Pramstaller, PP ; Price, JF ; Qi, L ; Raitakari, OT ; Rankinen, T ; Rao, DC ; Rice, TK ; Ritchie, M ; Rudan, I ; Salomaa, V ; Samani, NJ ; Saramies, J ; Sarzynski, MA ; Schwarz, PEH ; Sebert, S ; Sever, P ; Shuldiner, AR ; Sinisalo, J ; Steinthorsdottir, V ; Stolk, RP ; Tardif, J-C ; Toenjes, A ; Tremblay, A ; Tremoli, E ; Virtamo, J ; Vohl, M-C ; Amouyel, P ; Asselbergs, FW ; Assimes, TL ; Bochud, M ; Boehm, BO ; Boerwinkle, E ; Bottinger, EP ; Bouchard, C ; Cauchi, S ; Chambers, JC ; Chanock, SJ ; Cooper, RS ; de Bakker, PIW ; Dedoussis, G ; Ferrucci, L ; Franks, PW ; Froguel, P ; Groop, LC ; Haiman, CA ; Hamsten, A ; Hayes, MG ; Hui, J ; Hunter, DJ ; Hveem, K ; Jukema, JW ; Kaplan, RC ; Kivimaki, M ; Kuh, D ; Laakso, M ; Liu, Y ; Martin, NG ; Maerz, W ; Melbye, M ; Moebus, S ; Munroe, PB ; Njolstad, I ; Oostra, BA ; Palmer, CNA ; Pedersen, NL ; Perola, M ; Perusse, L ; Peters, U ; Powell, JE ; Power, C ; Quertermous, T ; Rauramaa, R ; Reinmaa, E ; Ridker, PM ; Rivadeneira, F ; Rotter, JI ; Saaristo, TE ; Saleheen, D ; Schlessinger, D ; Slagboom, PE ; Snieder, H ; Spector, TD ; Strauch, K ; Stumvoll, M ; Tuomilehto, J ; Uusitupa, M ; van der Harst, P ; Voelzke, H ; Walker, M ; Wareham, NJ ; Watkins, H ; Wichmann, H-E ; Wilson, JF ; Zanen, P ; Deloukas, P ; Heid, IM ; Lindgren, CM ; Mohlke, KL ; Speliotes, EK ; Thorsteinsdottir, U ; Barroso, I ; Fox, CS ; North, KE ; Strachan, DP ; Beckmann, JS ; Berndt, SI ; Boehnke, M ; Borecki, IB ; McCarthy, MI ; Metspalu, A ; Stefansson, K ; Uitterlinden, AG ; van Duijn, CM ; Franke, L ; Willer, CJ ; Price, AL ; Lettre, G ; Loos, RJF ; Weedon, MN ; Ingelsson, E ; O'Connell, JR ; Abecasis, GR ; Chasman, DI ; Goddard, ME ; Visscher, PM ; Hirschhorn, JN ; Frayling, TM (NATURE PUBLISHING GROUP, 2014-11)
    Using genome-wide data from 253,288 individuals, we identified 697 variants at genome-wide significance that together explained one-fifth of the heritability for adult height. By testing different numbers of variants in independent studies, we show that the most strongly associated ∼2,000, ∼3,700 and ∼9,500 SNPs explained ∼21%, ∼24% and ∼29% of phenotypic variance. Furthermore, all common variants together captured 60% of heritability. The 697 variants clustered in 423 loci were enriched for genes, pathways and tissue types known to be involved in growth and together implicated genes and pathways not highlighted in earlier efforts, such as signaling by fibroblast growth factors, WNT/β-catenin and chondroitin sulfate-related genes. We identified several genes and pathways not previously connected with human skeletal growth, including mTOR, osteoglycin and binding of hyaluronic acid. Our results indicate a genetic architecture for human height that is characterized by a very large but finite number (thousands) of causal variants.
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    Bootstrapping of gene-expression data improves and controls the false discovery rate of differentially expressed genes
    Meuwissen, THE ; Goddard, ME (E D P SCIENCES, 2004)
    The ordinary-, penalized-, and bootstrap t-test, least squares and best linear unbiased prediction were compared for their false discovery rates (FDR), i.e. the fraction of falsely discovered genes, which was empirically estimated in a duplicate of the data set. The bootstrap-t-test yielded up to 80% lower FDRs than the alternative statistics, and its FDR was always as good as or better than any of the alternatives. Generally, the predicted FDR from the bootstrapped P-values agreed well with their empirical estimates, except when the number of mRNA samples is smaller than 16. In a cancer data set, the bootstrap-t-test discovered 200 differentially regulated genes at a FDR of 2.6%, and in a knock-out gene expression experiment 10 genes were discovered at a FDR of 3.2%. It is argued that, in the case of microarray data, control of the FDR takes sufficient account of the multiple testing, whilst being less stringent than Bonferoni-type multiple testing corrections. Extensions of the bootstrap simulations to more complicated test-statistics are discussed.