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SNP set analysis for detecting disease association using exon sequence data

机译:SNP采用外显子序列数据检测疾病关联的分析

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Rare variants are believed to play an important role in disease etiology. Recent advances in high-throughput sequencing technology enable investigators to systematically characterize the genetic effects of both common and rare variants. We introduce several approaches that simultaneously test the effects of common and rare variants within a single-nucleotide polymorphism (SNP) set based on logistic regression models and logistic kernel machine models. Gene-environment interactions and SNP-SNP interactions are also considered in some of these models. We illustrate the performance of these methods using the unrelated individuals data from Genetic Analysis Workshop 17. Three true disease genes ( FLT1 , PIK3C3 , and KDR ) were consistently selected using the proposed methods. In addition, compared to logistic regression models, the logistic kernel machine models were more powerful, presumably because they reduced the effective number of parameters through regularization. Our results also suggest that a screening step is effective in decreasing the number of false-positive findings, which is often a big concern for association studies.
机译:据信罕见的变体在疾病病因中发挥着重要作用。高通量测序技术的最新进展使调查人员能够系统地表征常见和罕见变种的遗传效果。我们介绍了几种方法,同时测试了基于逻辑回归模型和物流核机模型的单核苷酸多态性(SNP)组中常见和罕见变体的影响。在其中一些模型中也考虑了基因环境相互作用和SNP-SNP交互。我们说明了使用来自遗传分析研讨会17的无关个体数据的这些方法的性能。使用所提出的方法,一致地选择三种真正的疾病基因(FLT1,PIK3C3和KDR)。此外,与Logistic回归模型相比,Logistic核心机器模型更强大,可能是因为它们通过正规化降低了有效的参数数量。我们的结果还表明,筛选步骤有效地减少了虚假阳性结果的数量,这往往是关联研究的重要关注。

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