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Title: A genetic association test through combining two independent tests.

Authors: Chen, Zhongxue; Liu, Qingzhong; Wang, Kai

Published In Genomics, (2019 Sep)

Abstract: Gene- and pathway-based variant association tests are important tools in finding genetic variants that are associated with phenotypes of interest. Although some methods have been proposed in the literature, powerful and robust statistical tests are still desirable in this area. In this study, we propose a statistical test based on decomposing the genotype data into orthogonal parts from which powerful and robust independent p-value combination approaches can be utilized. Through a comprehensive simulation study, we compare the proposed test with some existing popular ones. Our simulation results show that the new test has great performance in terms of controlling type I error rate and statistical power. Real data applications are also conducted to illustrate the performance and usefulness of the proposed test.

PubMed ID: 30009923 Exiting the NIEHS site

MeSH Terms: No MeSH terms associated with this publication

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