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A novel support vector machine-based approach for rare variant detection

机译:一种新颖的基于支持向量机的稀有变异检测方法

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摘要

[[abstract]]Advances in next-generation sequencing technologies have enabled the identification of multiple rare single nucleotide polymorphisms involved in diseases or traits. Several strategies for identifying rare variants that contribute to disease susceptibility have recently been proposed. An important feature of many of these statistical methods is the pooling or collapsing of multiple rare single nucleotide variants to achieve a reasonably high frequency and effect. However, if the pooled rare variants are associated with the trait in different directions, then the pooling may weaken the signal, thereby reducing its statistical power. In the present paper, we propose a backward support vector machine (BSVM)-based variant selection procedure to identify informative disease-associated rare variants. In the selection procedure, the rare variants are weighted and collapsed according to their positive or negative associations with the disease, which may be associated with common variants and rare variants with protective, deleterious, or neutral effects. This nonparametric variant selection procedure is able to account for confounding factors and can also be adopted in other regression frameworks. The results of a simulation study and a data example show that the proposed BSVM approach is more powerful than four other approaches under the considered scenarios, while maintaining valid type I errors.
机译:[[摘要]]下一代测序技术的进步使人们能够鉴定出与疾病或性状有关的多种罕见的单核苷酸多态性。最近提出了几种鉴定有助于疾病易感性的稀有变体的策略。这些统计方法中许多方法的重要特征是合并或折叠多个稀有单核苷酸变体,以达到合理的高频和效果。但是,如果合并的稀有变体与性状在不同方向上相关联,则合并可能会削弱信号,从而降低其统计功效。在本文中,我们提出了一种基于反向支持向量机(BSVM)的变种选择程序,以识别与疾病相关的信息性稀有变种。在选择过程中,根据罕见变体与疾病的正相关或负相关性对加权变体进行加权和折叠,这可能与常见变体和具有保护,有害或中性作用的罕见变体相关。这种非参数变量选择过程能够解决混杂因素,也可以在其他回归框架中采用。仿真研究和数据示例的结果表明,在考虑有效方案的情况下,提出的BSVM方法比其他四种方法更强大,同时保持了有效的I类错误。

著录项

  • 作者

    Fang, YH;

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  • 年度 2013
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  • 原文格式 PDF
  • 正文语种 en-US
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