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Human Demographic History Impacts Genetic Risk Prediction across Diverse Populations
Author(s) -
Alicia R. Martin,
Christopher R. Gignoux,
Raymond K. Walters,
Genevieve L. Wojcik,
Benjamin M. Neale,
Simon Gravel,
Mark J. Daly,
Carlos D. Bustamante,
Eimear E. Kenny
Publication year - 2017
Publication title -
the american journal of human genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.661
H-Index - 302
eISSN - 1537-6605
pISSN - 0002-9297
DOI - 10.1016/j.ajhg.2017.03.004
Subject(s) - genome wide association study , linkage disequilibrium , genetic association , population , genetic architecture , demographic history , coalescent theory , genomics , biology , evolutionary biology , genetics , quantitative trait locus , demography , allele , genetic variation , genome , single nucleotide polymorphism , haplotype , gene , phylogenetic tree , sociology , genotype
The vast majority of genome-wide association studies (GWASs) are performed in Europeans, and their transferability to other populations is dependent on many factors (e.g., linkage disequilibrium, allele frequencies, genetic architecture). As medical genomics studies become increasingly large and diverse, gaining insights into population history and consequently the transferability of disease risk measurement is critical. Here, we disentangle recent population history in the widely used 1000 Genomes Project reference panel, with an emphasis on populations underrepresented in medical studies. To examine the transferability of single-ancestry GWASs, we used published summary statistics to calculate polygenic risk scores for eight well-studied phenotypes. We identify directional inconsistencies in all scores; for example, height is predicted to decrease with genetic distance from Europeans, despite robust anthropological evidence that West Africans are as tall as Europeans on average. To gain deeper quantitative insights into GWAS transferability, we developed a complex trait coalescent-based simulation framework considering effects of polygenicity, causal allele frequency divergence, and heritability. As expected, correlations between true and inferred risk are typically highest in the population from which summary statistics were derived. We demonstrate that scores inferred from European GWASs are biased by genetic drift in other populations even when choosing the same causal variants and that biases in any direction are possible and unpredictable. This work cautions that summarizing findings from large-scale GWASs may have limited portability to other populations using standard approaches and highlights the need for generalized risk prediction methods and the inclusion of more diverse individuals in medical genomics.

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