SHAVE: shrinkage estimator measured for multiple visits increases power in GWAS of quantitative traits

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作者
Osorio D Meirelles
Jun Ding
Toshiko Tanaka
Serena Sanna
Hsih-Te Yang
Dawood B Dudekula
Francesco Cucca
Luigi Ferrucci
Goncalo Abecasis
David Schlessinger
机构
[1] Laboratory of Genetics,Department of Health and Human Services
[2] National Institute on Aging,Department of Biostatistics
[3] National Institutes of Health,undefined
[4] National Institute on Aging,undefined
[5] National Institutes of Health,undefined
[6] Istituto di Ricerca Genetica e Biomedica,undefined
[7] Consiglio Nazionale delle Ricerche,undefined
[8] Monserrato,undefined
[9] Center for Statistical Genetics,undefined
[10] University of Michigan,undefined
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关键词
genome-wide association study; bayesian; multiple measurements; biological variability; measurement error; random-intercept;
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摘要
Measurement error and biological variability generate distortions in quantitative phenotypic data. In longitudinal studies with repeated measurements, the multiple measurements provide a route to reduce noise and correspondingly increase the strength of signals in genome-wide association studies (GWAS).To optimize noise correction, we have developed Shrunken Average (SHAVE), an approach using a Bayesian Shrinkage estimator. This estimator uses regression toward the mean for every individual as a function of (1) their average across visits; (2) their number of visits; and (3) the correlation between visits. Computer simulations support an increase in power, with results very similar to those expected by the assumptions of the model. The method was applied to a real data set for 14 anthropomorphic traits in ∼6000 individuals enrolled in the SardiNIA project, with up to three visits (measurements) for each participant. Results show that additional measurements have a large impact on the strength of GWAS signals, especially when participants have different number of visits, with SHAVE showing a clear increase in power relative to single visits. In addition, we have derived a relation to assess the improvement in power as a function of number of visits and correlation between visits. It can also be applied in the optimization of experimental designs or usage of measuring devices. SHAVE is fast and easy to run, written in R and freely available online.
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页码:673 / 679
页数:6
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