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A Unified Method for Detecting Secondary Trait Associations with Rare Variants: Application to Sequence Data

机译:一种用于检测具有稀有变异的次要性状关联的统一方法:在序列数据中的应用

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摘要

Next-generation sequencing has made possible the detection of rare variant (RV) associations with quantitative traits (QT). Due to high sequencing cost, many studies can only sequence a modest number of selected samples with extreme QT. Therefore association testing in individual studies can be underpowered. Besides the primary trait, many clinically important secondary traits are often measured. It is highly beneficial if multiple studies can be jointly analyzed for detecting associations with commonly measured traits. However, analyzing secondary traits in selected samples can be biased if sample ascertainment is not properly modeled. Some methods exist for analyzing secondary traits in selected samples, where some burden tests can be implemented. However p-values can only be evaluated analytically via asymptotic approximations, which may not be accurate. Additionally, potentially more powerful sequence kernel association tests, variable selection-based methods, and burden tests that require permutations cannot be incorporated. To overcome these limitations, we developed a unified method for analyzing secondary trait associations with RVs (STAR) in selected samples, incorporating all RV tests. Statistical significance can be evaluated either through permutations or analytically. STAR makes it possible to apply more powerful RV tests to analyze secondary trait associations. It also enables jointly analyzing multiple cohorts ascertained under different study designs, which greatly boosts power. The performance of STAR and commonly used RV association tests were comprehensively evaluated using simulation studies. STAR was also implemented to analyze a dataset from the SardiNIA project where samples with extreme low-density lipoprotein levels were sequenced. A significant association between LDLR and systolic blood pressure was identified, which is supported by pharmacogenetic studies. In summary, for sequencing studies, STAR is an important tool for detecting secondary-trait RV associations.
机译:下一代测序使检测具有定量特征(QT)的稀有变异(RV)关联成为可能。由于高昂的测序成本,许多研究只能对极少量QT的少量选定样品进行测序。因此,个人研究中的联想测试可能会被忽略。除主要特征外,还经常测量许多临床上重要的次要特征。如果可以对多个研究进行联合分析以检测与通常测量的性状的关联,则将非常有益。但是,如果样本确定未正确建模,则分析所选样本中的次要特征可能会产生偏差。存在一些用于分析所选样本中次生性状的方法,其中可以执行一些负担测试。但是,p值只能通过渐近逼近进行分析性评估,这可能不准确。此外,可能无法使用功能更强大的序列内核关联测试,基于变量选择的方法以及需要置换的负担测试。为了克服这些局限性,我们开发了一种统一的方法,该方法结合了所有RV测试,用于分析选定样本中与RV(STAR)相关的次要性状关联。统计显着性可以通过排列或分析来评估。 STAR使应用更强大的RV测试来分析次生性状关联成为可能。它还可以联合分析在不同研究设计下确定的多个队列,这大大提高了功能。使用模拟研究综合评估了STAR的性能和常用的RV关联测试。 STAR还用于分析SardiNIA项目的数据集,该项目对具有极低密度脂蛋白水平的样品进行了测序。鉴定了LDLR与收缩压之间的显着相关性,这得到了药物遗传学研究的支持。总之,对于测序研究,STAR是检测次生RV关联的重要工具。

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