遗传风险评分

Jessica N. Cooke Bailey, Robert P. Igo Jr
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引用次数: 71

摘要

全基因组变异数据的生成已经变得司空见惯。然而,解释和应用这些数据的潜力,以临床评估感兴趣的结果,并预测疾病风险,目前还没有完全实现。许多常见的、复杂的疾病现在有许多确定的“风险”位点,并且可能包含许多影响太小的遗传决定因素,无法在全基因组水平上检测到统计意义。将遗传数据转化为疾病易感性预测指标的一种简单而直观的方法是将这些基因座的风险效应汇总成一个单一的遗传风险评分。在这里,一些常见的方法和软件包计算遗传风险评分,重点研究常见的,复杂的疾病,描述。本文综述了构建遗传风险评分所需的基本信息和重要考虑因素,包括对表型和遗传数据的具体要求,以及它们在应用中的局限性。©2016 by John Wiley &儿子,Inc。
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Genetic Risk Scores

The generation of genome-wide variation data has become commonplace. However, the potential for interpretation and application of these data for clinical assessment of outcomes of interest, and prediction of disease risk, is currently not fully realized. Many common, complex diseases now have numerous, well-established “risk” loci, and likely harbor many genetic determinants with effects too small to be detected at genome-wide levels of statistical significance. A simple and intuitive approach for converting genetic data to a predictive measure of disease susceptibility is to aggregate the risk effects of these loci into a single genetic risk score. Here, some common methods and software packages for calculating genetic risk scores, with focus on studies of common, complex diseases, are described. The basic information needed as well as important considerations for constructing genetic risk scores, including specific requirements for phenotypic and genetic data, and limitations in their application is reviewed. © 2016 by John Wiley & Sons, Inc.

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Current Protocols in Human Genetics
Current Protocols in Human Genetics Biochemistry, Genetics and Molecular Biology-Genetics
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期刊介绍: Current Protocols in Human Genetics is the resource for designing and running successful research projects in all branches of human genetics.
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