TY - JOUR
T1 - Increased power of mixed models facilitates association mapping of 10 loci for metabolic traits in an isolated population
AU - Kenny, Eimear E.
AU - Kim, Minseung
AU - Gusev, Alexander
AU - Lowe, Jennifer K.
AU - Salit, Jacqueline
AU - Smith, J. Gustav
AU - Kovvali, Sirisha
AU - Kang, Hyun Min
AU - Newton-Cheh, Christopher
AU - Daly, Mark J.
AU - Stoffel, Markus
AU - Altshuler, David M.
AU - Friedman, Jeffrey M.
AU - Eskin, Eleazar
AU - Breslow, Jan L.
AU - Pe'er, Itsik
N1 - Funding Information:
This work was supported by grants from the Starr Foundation and Howard Hughes Medical Institute for all measurement of metabolic traits and genotypes. Measurements of electrocardiographic traits in Kosrae were supported by a K23 from the National Heart, Lung and Blood Institute (grant number 080025), a Doris Duke Charitable Foundation Clinical Scientist Development Award and a Burroughs Wellcome Fund Career Award for Medical Scientists to CNC. Support from a Women & Science fellowship was provided to EEK. Support from the National Science Foundation (grant numbers CAREER 0845677, EMT 0829882) was provided to IP.
PY - 2011/2
Y1 - 2011/2
N2 - The potential benefits of using population isolates in genetic mapping, such as reduced genetic, phenotypic and environmental heterogeneity, are offset by the challenges posed by the large amounts of direct and cryptic relatedness in these populations confounding basic assumptions of independence. We have evaluated four representative specialized methods for association testing in the presence of relatedness; (i) within-family (ii) within- and between-family and (iii) mixed-models methods, using simulated traits for 2906 subjects with known genome-wide genotype data from an extremely isolated population, the Island of Kosrae, Federated States of Micronesia. We report that mixed models optimally extract association information from such samples, demonstrating 88% power to rank the true variant as among the top 10 genome-wide with 56% achieving genome-wide significance, a >80%improvement over the othermethods, and demonstrate that population isolates have similar power to non-isolate populations for observing variants of known effects. Wethen used the mixed-model method to reanalyze data for 17 published phenotypes relating to metabolic traits and electrocardiographic measures, along with another 8 previously unreported. We replicate nine genome-wide significant associations with known loci of plasma cholesterol, high-density lipoprotein, low-density lipoprotein, triglycerides, thyroid stimulating hormone, homocysteine, C-reactive protein and uric acid, with only one detected in the previous analysis of the same traits. Further, we leveraged shared identity-by-descent genetic segments in the region of the uric acid locus to fine-map the signal, refining the known locus by a factor of 4. Finally, we report a novel associations for height (rs17629022, P < 2.1 × 10-8).
AB - The potential benefits of using population isolates in genetic mapping, such as reduced genetic, phenotypic and environmental heterogeneity, are offset by the challenges posed by the large amounts of direct and cryptic relatedness in these populations confounding basic assumptions of independence. We have evaluated four representative specialized methods for association testing in the presence of relatedness; (i) within-family (ii) within- and between-family and (iii) mixed-models methods, using simulated traits for 2906 subjects with known genome-wide genotype data from an extremely isolated population, the Island of Kosrae, Federated States of Micronesia. We report that mixed models optimally extract association information from such samples, demonstrating 88% power to rank the true variant as among the top 10 genome-wide with 56% achieving genome-wide significance, a >80%improvement over the othermethods, and demonstrate that population isolates have similar power to non-isolate populations for observing variants of known effects. Wethen used the mixed-model method to reanalyze data for 17 published phenotypes relating to metabolic traits and electrocardiographic measures, along with another 8 previously unreported. We replicate nine genome-wide significant associations with known loci of plasma cholesterol, high-density lipoprotein, low-density lipoprotein, triglycerides, thyroid stimulating hormone, homocysteine, C-reactive protein and uric acid, with only one detected in the previous analysis of the same traits. Further, we leveraged shared identity-by-descent genetic segments in the region of the uric acid locus to fine-map the signal, refining the known locus by a factor of 4. Finally, we report a novel associations for height (rs17629022, P < 2.1 × 10-8).
UR - http://www.scopus.com/inward/record.url?scp=78751695726&partnerID=8YFLogxK
U2 - 10.1093/hmg/ddq510
DO - 10.1093/hmg/ddq510
M3 - Article
C2 - 21118897
AN - SCOPUS:78751695726
SN - 0964-6906
VL - 20
SP - 827
EP - 839
JO - Human Molecular Genetics
JF - Human Molecular Genetics
IS - 4
M1 - ddq510
ER -