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Bivariate association analyses for the mixture of continuous and binary traits with the use of extended generalized estimating equations.

机译:使用扩展的广义估计方程对连续性和二进制性状的混合进行双变量关联分析。

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摘要

Genome-wide association (GWA) study is becoming a powerful tool in deciphering genetic basis of complex human diseases/traits. Currently, the univariate analysis is the most commonly used method to identify genes associated with a certain disease/phenotype under study. A major limitation with the univariate analysis is that it may not make use of the information of multiple correlated phenotypes, which are usually measured and collected in practical studies. The multivariate analysis has proven to be a powerful approach in linkage studies of complex diseases/traits, but it has received little attention in GWA. In this study, we aim to develop a bivariate analytical method for GWA study, which can be used for a complex situation in which continuous trait and a binary trait are measured under study. Based on the modified extended generalized estimating equation (EGEE) method we proposed herein, we assessed the performance of our bivariate analyses through extensive simulations as well as real data analyses. In the study, to develop an EGEE approach for bivariate genetic analyses, we combined two different generalized linear models corresponding to phenotypic variables using a seemingly unrelated regression model. The simulation results demonstrated that our EGEE-based bivariate analytical method outperforms univariate analyses in increasing statistical power under a variety of simulation scenarios. Notably, EGEE-based bivariate analyses have consistent advantages over univariate analyses whether or not there exists a phenotypic correlation between the two traits. Our study has practical importance, as one can always use multivariate analyses as a screening tool when multiple phenotypes are available, without extra costs of statistical power and false-positive rate. Analyses on empirical GWA data further affirm the advantages of our bivariate analytical method.
机译:全基因组协会(GWA)研究正在成为解读复杂人类疾病/特征的遗传基础的有力工具。当前,单变量分析是鉴定与正在研究的某种疾病/表型相关的基因的最常用方法。单变量分析的一个主要限制是它可能无法利用通常在实践研究中测量和收集的多个相关表型的信息。多元分析已被证明是对复杂疾病/特征进行关联研究的有效方法,但在GWA中却很少受到关注。在这项研究中,我们旨在开发一种用于GWA研究的双变量分析方法,该方法可用于在研究中测量连续性状和二元性状的复杂情况。基于本文提出的改进的扩展广义估计方程(EGEE)方法,我们通过广泛的模拟以及实际数据分析评估了我们的双变量分析的性能。在这项研究中,为了开发用于双变量遗传分析的EGEE方法,我们使用看似无关的回归模型组合了对应于表型变量的两个不同的广义线性模型。仿真结果表明,在多种仿真情况下,基于EGEE的双变量分析方法在提高统计功效方面优于单变量分析。值得注意的是,基于EGEE的双变量分析相对于单变量分析在两个特征之间是否存在表型相关性方面具有一致的优势。我们的研究具有实际意义,因为当可以使用多种表型时,可以始终使用多元分析作为筛选工具,而无需付出额外的统计能力和假阳性率。对GWA经验数据的分析进一步证实了我们的双变量分析方法的优势。

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