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A New Explained-Variance Based Genetic Risk Score for Predictive Modeling of Disease Risk

机译:一种新的基于解释方差的遗传风险评分用于疾病风险的预测建模

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摘要

The goal of association mapping is to identify genetic variants that predict disease, and as the field of human genetics matures, the number of successful association studies is increasing. Many such studies have shown that for many diseases, risk is explained by a reasonably large number of variants that each explains a very small amount of disease risk. This is prompting the use of genetic risk scores in building predictive models, where information across several variants is combined for predictive modeling. In the current study, we compare the performance of four previously proposed genetic risk score methods and present a new method for constructing genetic risk score that incorporates explained variance information. The methods compared include: a simple count Genetic Risk Score, an odds ratio weighted Genetic Risk Score, a direct logistic regression Genetic Risk Score, a polygenic Genetic Risk Score, and the new explained variance weighted Genetic Risk Score. We compare the methods using a wide range of simulations in two steps, with a range of the number of deleterious single nucleotide polymorphisms (SNPs) explaining disease risk, genetic modes, baseline penetrances, sample sizes, relative risks (RR) and minor allele frequencies (MAF). Several measures of model performance were compared including overall power, C-statistic and Akaike’s Information Criterion. Our results show the relative performance of methods differs significantly, with the new explained variance weighted GRS (EV-GRS) generally performing favorably to the other methods.
机译:关联作图的目的是识别可预测疾病的遗传变异,并且随着人类遗传学领域的成熟,成功进行关联研究的次数也在增加。许多此类研究表明,对于许多疾病,风险是由相当多的变体来解释的,每种变体都说明了极少量的疾病风险。这促使人们在建立预测模型中使用遗传风险评分,其中将跨多个变体的信息组合在一起进行预测建模。在当前的研究中,我们比较了先前提出的四种遗传风险评分方法的性能,并提出了一种新的构建遗传风险评分的方法,该方法结合了解释的方差信息。比较的方法包括:简单计数遗传风险评分,比值比加权遗传风险评分,直接逻辑回归遗传风险评分,多基因遗传风险评分和新解释的方差加权遗传风险评分。我们分两步使用广泛的模拟方法对方法进行了比较,其中一系列有害的单核苷酸多态性(SNP)数量可以解释疾病风险,遗传模式,基线外显率,样本量,相对风险(RR)和次要等位基因频率(MAF)。比较了几种模型性能指标,包括整体能力,C统计量和Akaike的信息标准。我们的结果表明,方法的相对性能差异显着,新解释的方差加权GRS(EV-GRS)的性能通常优于其他方法。

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