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Enhancing the power to detect low-frequency variants in genome-wide screens.


ABSTRACT: In genetic association studies a conventional test statistic is proportional to the correlation coefficient between the trait and the variant, with the result that it lacks power to detect association for low-frequency variants. Considering the link between the conventional association test statistics and the linkage disequilibrium measure r(2), we propose a test statistic analogous to the standardized linkage disequilibrium D' to increase the power of detecting association for low-frequency variants. By both simulation and real data analysis we show that the proposed D' test is more powerful than the conventional methods for detecting association for low-frequency variants in a genome-wide setting. The optimal coding strategy for the D' test and its asymptotic properties are also investigated. In summary, we advocate using the D' test in a dominant model as a complementary approach to enhancing the power of detecting association for low-frequency variants with moderate to large effect sizes in case-control genome-wide association studies.

SUBMITTER: Lin CY 

PROVIDER: S-EPMC3982702 | biostudies-literature | 2014 Apr

REPOSITORIES: biostudies-literature

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Enhancing the power to detect low-frequency variants in genome-wide screens.

Lin Chang-Yun CY   Xing Guan G   Ku Hung-Chih HC   Elston Robert C RC   Xing Chao C  

Genetics 20140204 4


In genetic association studies a conventional test statistic is proportional to the correlation coefficient between the trait and the variant, with the result that it lacks power to detect association for low-frequency variants. Considering the link between the conventional association test statistics and the linkage disequilibrium measure r(2), we propose a test statistic analogous to the standardized linkage disequilibrium D' to increase the power of detecting association for low-frequency var  ...[more]

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