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Post hoc Analysis for Detecting Individual Rare Variant Risk Associations Using Probit Regression Bayesian Variable Selection Methods in Caseâ Control Sequencing Studies

机译:CaseControl测序研究中使用probit回归贝叶斯变量选择方法检测个体稀有变异风险关联的事后分析

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摘要

Rare variants (RVs) have been shown to be significant contributors to complex disease risk. By definition, these variants have very low minor allele frequencies and traditional singleâ marker methods for statistical analysis are underpowered for typical sequencing study sample sizes. Multimarker burdenâ type approaches attempt to identify aggregation of RVs across caseâ control status by analyzing relatively small partitions of the genome, such as genes. However, it is generally the case that the aggregative measure would be a mixture of causal and neutral variants, and these omnibus tests do not directly provide any indication of which RVs may be driving a given association. Recently, Bayesian variable selection approaches have been proposed to identify RV associations from a large set of RVs under consideration. Although these approaches have been shown to be powerful at detecting associations at the RV level, there are often computational limitations on the total quantity of RVs under consideration and compromises are necessary for largeâ scale application. Here, we propose a computationally efficient alternative formulation of this method using a probit regression approach specifically capable of simultaneously analyzing hundreds to thousands of RVs. We evaluate our approach to detect causal variation on simulated data and examine sensitivity and specificity in instances of high RV dimensionality as well as apply it to pathwayâ level RV analysis results from a prostate cancer (PC) risk caseâ control sequencing study. Finally, we discuss potential extensions and future directions of this work.
机译:稀有变异(RVs)已被证明是造成复杂疾病风险的重要因素。根据定义,这些变异体的次要等位基因频率非常低,传统的统计分析样本数量不足以进行传统的统计分析。多标记负担类型方法试图通过分析相对较小的基因组分区(例如基因)来确定跨病例控制状态的RV聚集。但是,通常情况下,汇总量度将是因果变量和中性变量的混合,并且这些综合测试不能直接提供有关哪些RV可能驱动给定关联的任何指示。最近,提出了贝叶斯变量选择方法以从正在考虑的大量RV中识别RV关联。尽管这些方法已显示出在RV级别检测关联的强大功能,但是对所考虑的RV总量的计算常常存在局限性,因此在大规模应用中必须做出折衷。在这里,我们提出了一种使用概率回归方法的方法,该方法计算效率高,可以替代公式,该方法专门能够同时分析数百到数千个RV。我们评估我们的方法,以检测模拟数据上的因果差异,并在高RV维数的情况下检查敏感性和特异性,并将其应用于前列腺癌(PC)风险病例对照测序研究的通路水平RV分析结果。最后,我们讨论了这项工作的潜在扩展和未来方向。

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