Wu Colin O, Zheng Gang, Kwak Minjung
Office of Biostatistics Research, National Heart, Lung and Blood Institute, Bethesda, MD 20892, USA.
Biometrics. 2013 Jun;69(2):417-26. doi: 10.1111/biom.12012. Epub 2013 Mar 14.
Genetic association studies in practice often involve multiple traits resulting from a common disease mechanism, and samples for such studies are often stratified based on some trait outcomes. In such situations, statistical methods using only one of these traits may be inadequate and lead to under-powered tests for detecting genetic associations. We propose in this article an estimation and testing procedure for evaluating the shared-association of a genetic marker on the joint distribution of multiple traits of a common disease. Specifically, we assume that the disease mechanism involves both quantitative and qualitative traits, and our samples could be stratified based on the qualitative trait. Through a joint likelihood function, we derive a class of estimators and test statistics for evaluating the shared genetic association on both the quantitative and qualitative traits. Our simulation study shows that the joint likelihood test procedure is potentially more powerful than association tests based on separate traits. Application of our proposed procedure is demonstrated through the rheumatoid arthritis data provided by the Genetic Analysis Workshop 16 (GAW16).
在实际应用中,基因关联研究通常涉及由共同疾病机制导致的多个性状,并且此类研究的样本常根据某些性状结果进行分层。在这种情况下,仅使用其中一个性状的统计方法可能并不充分,会导致检测基因关联的检验效能不足。在本文中,我们提出一种估计和检验程序,用于评估基因标记对常见疾病多个性状联合分布的共享关联。具体而言,我们假设疾病机制涉及定量和定性性状,且我们的样本可根据定性性状进行分层。通过联合似然函数,我们推导出一类用于评估定量和定性性状共享基因关联的估计量和检验统计量。我们的模拟研究表明,联合似然检验程序可能比基于单个性状的关联检验更具效能。通过遗传分析研讨会16(GAW16)提供的类风湿性关节炎数据展示了我们所提出程序的应用。