负荷检测中调控稀有等位基因的知识约束k -媒介聚类。

R Michael Sivley, Alexandra E Fish, William S Bush
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引用次数: 2

摘要

很少发生的遗传变异被假设会影响人类疾病,但由于在大多数可行规模的数据集中缺乏统计能力,将这些罕见变异与疾病联系起来是具有挑战性的。已经开发了几种统计测试,要么将基因组区域的多个罕见变异分解为单个变量(存在/不存在),要么统计一个区域内罕见等位基因的数量,将罕见等位基因的负担与疾病风险联系起来。然而,这两种方法都依赖于用户指定的基因组区域来生成这些崩溃或负担变量,通常是一个完整的基因。最近的研究表明,大多数常见疾病的风险变异是在调控区域内发现的,而不是在基因内。为了捕捉非基因调控区域中罕见等位基因对负荷测试的影响,我们将简单的滑动窗口方法与知识引导的k- medioids聚类方法进行对比,将罕见变异分组为统计上强大的、生物学上有意义的窗口。我们应用这些方法来检测改变附近基因表达的基因组区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge-constrained K-medoids Clustering of Regulatory Rare Alleles for Burden Tests.

Rarely occurring genetic variants are hypothesized to influence human diseases, but statistically associating these rare variants to disease is challenging due to a lack of statistical power in most feasibly sized datasets. Several statistical tests have been developed to either collapse multiple rare variants from a genomic region into a single variable (presence/absence) or to tally the number of rare alleles within a region, relating the burden of rare alleles to disease risk. Both these approaches, however, rely on user-specification of a genomic region to generate these collapsed or burden variables, usually an entire gene. Recent studies indicate that most risk variants for common diseases are found within regulatory regions, not genes. To capture the effect of rare alleles within non-genic regulatory regions for burden tests, we contrast a simple sliding window approach with a knowledge-guided k-medoids clustering method to group rare variants into statistically powerful, biologically meaningful windows. We apply these methods to detect genomic regions that alter expression of nearby genes.

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