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A Unifying Framework for Evaluating the Predictive Power of Genetic Variants Based on the Level of Heritability Explained

机译:基于遗传水平的评估遗传变异预测能力的统一框架

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摘要

An increasing number of genetic variants have been identified for many complex diseases. However, it is controversial whether risk prediction based on genomic profiles will be useful clinically. Appropriate statistical measures to evaluate the performance of genetic risk prediction models are required. Previous studies have mainly focused on the use of the area under the receiver operating characteristic (ROC) curve, or AUC, to judge the predictive value of genetic tests. However, AUC has its limitations and should be complemented by other measures. In this study, we develop a novel unifying statistical framework that connects a large variety of predictive indices together. We showed that, given the overall disease probability and the level of variance in total liability (or heritability) explained by the genetic variants, we can estimate analytically a large variety of prediction metrics, for example the AUC, the mean risk difference between cases and non-cases, the net reclassification improvement (ability to reclassify people into high- and low-risk categories), the proportion of cases explained by a specific percentile of population at the highest risk, the variance of predicted risks, and the risk at any percentile. We also demonstrate how to construct graphs to visualize the performance of risk models, such as the ROC curve, the density of risks, and the predictiveness curve (disease risk plotted against risk percentile). The results from simulations match very well with our theoretical estimates. Finally we apply the methodology to nine complex diseases, evaluating the predictive power of genetic tests based on known susceptibility variants for each trait.
机译:对于许多复杂疾病,已经鉴定出越来越多的遗传变异。但是,基于基因组图谱的风险预测是​​否在临床上有用还是有争议的。需要采取适当的统计措施来评估遗传风险预测模型的性能。以前的研究主要集中在使用接收器工作特征(ROC)曲线或AUC下的面积来判断基因测试的预测价值。但是,AUC有其局限性,应通过其他措施加以补充。在这项研究中,我们开发了一个新颖的统一统计框架,该框架将各种预测指标连接在一起。我们表明,鉴于遗传变异解释的总体疾病概率和总责任(或遗传性)方差水平,我们可以通过分析方法估算各种预测指标,例如AUC,病例之间的平均风险差异和非案例,净重分类改进(将人员重新分类为高风险和低风险类别的能力),由最高风险的特定人口百分比解释的案例比例,预测风险的方差以及任何风险百分位。我们还演示了如何构建图表以可视化风险模型的性能,例如ROC曲线,风险密度和可预测性曲线(疾病风险与风险百分比的关系图)。仿真结果与我们的理论估计非常吻合。最后,我们将该方法应用于九种复杂疾病,并基于每个特征的易感性变异评估基因测试的预测能力。

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