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Efficient and flexible Integration of variant characteristics in rare variant association studies using integrated nested Laplace approximation

机译:使用集成嵌套的拉普拉斯近似稀有变体关联研究中变种特性的高效灵活集成

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Rare variants are thought to play an important role in the etiology of complex diseases and may explain a significant fraction of the missing heritability in genetic disease studies. Nextgeneration sequencing facilitates the association of rare variants in coding or regulatory regions with complex diseases in large cohorts at genome-wide scale. However, rare variant association studies (RVAS) still lack power when cohorts are small to medium-sized and if genetic variation explains a small fraction of phenotypic variance. Here we present a novel Bayesian rare variant Association Test using Integrated Nested Laplace Approximation (BATI). Unlike existing RVAS tests, BATI allows integration of individual or variant-specific features as covariates, while efficiently performing inference based on full model estimation. We demonstrate that BATI outperforms established RVAS methods on realistic, semi-synthetic whole-exome sequencing cohorts, especially when using meaningful biological context, such as functional annotation. We show that BATI achieves power above 70% in scenarios in which competing tests fail to identify risk genes, e.g. when risk variants in sum explain less than 0.5% of phenotypic variance. We have integrated BATI, together with five existing RVAS tests in the ‘Rare Variant Genome Wide Association Study’ (rvGWAS) framework for data analyzed by whole-exome or whole genome sequencing. rvGWAS supports rare variant association for genes or any other biological unit such as promoters, while allowing the analysis of essential functionalities like quality control or filtering. Applying rvGWASto a Chronic Lymphocytic Leukemia study we identified eight candidate predisposition genes, including EHMT2 and COPS7A.
机译:罕见的变异被认为在复杂疾病的病因中起重要作用,并可以解释遗传性疾病的研究缺少遗传的显著部分。下一代测序有助于在编码稀有变体或与复杂疾病中的大群组在全基因组范围的调节区的关联。然而,变体罕见关联研究(的RVAs)仍缺乏电力时群组是小到中等规模,并且如果遗传变异解释表型变异的一小部分。在这里,我们使用集成的嵌套拉普拉斯近似(BATI)提出了一种新的贝叶斯罕见变异协会测试。与现有的RVAs测试,BATI允许个人或变体的特定功能作为协整合,同时基于全模型估计有效地进行推断。我们证明BATI优于现实的,半合成全基因组测序的同伙成立的RVAs方法,使用有意义的生物学背景特别是,如功能注释。我们发现,在BATI在竞争测试中无法识别风险的基因,例如场景实现电力70%以上当风险变体的总和解释表型变异的小于0.5%。我们已经在“稀有变异全基因组关联研究”通过全外显子组或全基因组测序分析的数据(rvGWAS)框架有五个现有的RVAs测试集成BATI一起。 rvGWAS支持基因或任何其它生物单元如启动子变体罕见关联,同时允许像质量控制或过滤基本功能的分析。应用rvGWASto慢性淋巴细胞性白血病研究中,我们确定了八个候选易感基因,包括EHMT2和COPS7A。

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