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A small‐sample kernel association test for correlated data with application to microbiome association studies

机译:具有应用于微生物组关联研究的相关数据的小样本核关联测试

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摘要

Abstract Recent research has highlighted the importance of the human microbiome in many human disease and health conditions. Most current microbiome association analyses focus on unrelated samples; such methods are not appropriate for analysis of data collected from more advanced study designs such as longitudinal and pedigree studies, where outcomes can be correlated. Ignoring such correlations can sometimes lead to suboptimal results or even possibly biased conclusions. Thus, new methods to handle correlated outcome data in microbiome association studies are needed. In this paper, we propose the correlated sequence kernel association test (CSKAT) to address such correlations using the linear mixed model. Specifically, random effects are used to account for the outcome correlations and a variance component test is used to examine the microbiome effect. Compared to existing genetic association tests for longitudinal and family samples, we implement a correction procedure to better calibrate the null distribution of the score test statistic to accommodate the small sample size nature of data collected from a typical microbiome study. Comprehensive simulation studies are conducted to demonstrate the validity and efficiency of our method, and we show that CSKAT achieves a higher power than existing methods while correctly controlling the Type I error rate. We also apply our method to a microbiome data set collected from a UK twin study to illustrate its potential usefulness. A free implementation of our method in R software is available at https://github.com/jchen1981/SSKAT .
机译:摘要最近的研究突出了人类微生物组在许多人类疾病和健康状况中的重要性。大多数当前的微生物组合协会分析了关注无关的样本;这些方法不适用于分析从更高级的研究设计中收集的数据,例如纵向和血统研究,其中结果可以相关。忽略这种相关性有时会导致次优效果甚至可能有偏见的结论。因此,需要在微生物组关联研究中处理相关结果数据的新方法。在本文中,我们提出了相关序列核关联测试(CSKAT)来解决使用线性混合模型来解决这些相关性。具体地,随机效应用于考虑结果相关性,并且使用方差分量试验来检查微生物组效应。与纵向和家庭样本的现有遗传结合试验相比,我们实现了更好的校正过程以更好地校准得分测试统计数据的空分布,以适应从典型的微生物组研究中收集的数据的小样本尺寸性质。进行综合仿真研究以展示我们方法的有效性和效率,并且我们表明CSKAT比现有方法达到更高的功率,同时正确控制I型错误率。我们还将我们的方法应用于从英国双床研究中收集的微生物组数据集,以说明其潜在的有用性。我们在R软件中自由实施在HTTPS://github.com/jchen1981 / sskat中获得。

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