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Detecting genomic clustering of risk variants from sequence data: Cases versus controls

机译:从序列数据检测风险变量的基因组聚类:案例与控制

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摘要

As the ability to measure dense genetic markers approaches the limit of the DNA sequence itself, taking advantage of possible clustering of genetic variants in, and around, a gene would benefit genetic association analyses, and likely provide biological insights. The greatest benefit might be realized when multiple rare variants cluster in a functional region. Several statistical tests have been developed, one of which is based on the popular Kulldorff scan statistic for spatial clustering of disease. We extended another popular spatial clustering method - Tango's statistic - to genomic sequence data. An advantage of Tango's method is that it is rapid to compute, and when single test statistic is computed, its distribution is well approximated by a scaled χ 2 distribution, making computation of p values very rapid. We compared the Type-I error rates and power of several clustering statistics, as well as the omnibus sequence kernel association test. Although our version of Tango's statistic, which we call "Kernel Distance" statistic, took approximately half the time to compute than the Kulldorff scan statistic, it had slightly less power than the scan statistic. Our results showed that the Ionita-Laza version of Kulldorff's scan statistic had the greatest power over a range of clustering scenarios.
机译:由于测量致密遗传标记的能力接近DNA序列本身的极限,利用可能的遗传变异的聚类,基因会受益遗传关联分析,并且可能提供生物洞察。当功能区域中的多个稀有变体集群时,可能会实现最大的好处。已经开发了几种统计测试,其中一个是基于疾病的空间聚类的流行Kulldorff扫描统计数据。我们扩展了另一个流行的空间聚类方法 - 探戈的统计数据 - 基因组序列数据。探戈的方法的一个优点在于它是快速计算的,并且当计算单个测试统计时,其分布很好地通过缩放的χ2分布近似,使得对P值非常快速。我们比较了几种群集统计信息的I型错误速率和功率,以及omnibus序列内核关联测试。虽然我们的探戈的统计版本,我们称之为“内核距离”统计信息,但花费大约一半的时间来计算,而不是Kulldorff扫描统计,它的功率略低于扫描统计。我们的研究结果表明,Kulldorff扫描统计的Ionita-Laza版本在一系列聚类方案中具有最大的功率。

著录项

  • 来源
    《Human Genetics》 |2013年第11期|共9页
  • 作者单位

    Division of Biomedical Statistics and Informatics Department of Health Sciences Research Mayo;

    Division of Biomedical Statistics and Informatics Department of Health Sciences Research Mayo;

    Division of Biomedical Statistics and Informatics Department of Health Sciences Research Mayo;

    Department of Laboratory Medicine and Pathology Mayo Clinic Rochester MN United States;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医学遗传学;
  • 关键词

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