Yoo Wonsuk, Smith Selina A, Coughlin Steven S
Institute of Public and Preventive Health, and Department of Dental Medicine, Georgia Regents University Augusta, GA.
Department of Community Health and Sustainability, Division of Public Health, University of Massachusetts Lowell, MA.
Int J Mol Epidemiol Genet. 2015 Sep 9;6(1):1-8. eCollection 2015.
Substantial uncertainty exists as to whether combining multiple disease-associated single nucleotide polymorphisms (SNPs) into a genotype risk score (GRS) can improve the ability to predict the risk of disease in a clinically relevant way. We calculated the ability of a simple count GRS to predict the risk of a dichotomous outcome under both multiplicative and additive models of combined effects. We then compared the results of these simulations with the observed results of published GRS measured within multiple epidemiologic cohorts. If the combined effect of each disease-associated SNP included in a GRS is multiplicative on the risk scale, then a count GRS score should be useful for risk prediction with as few as 10-20 SNPs. Adding additional SNPs to the GRS under this model dramatically improves risk prediction. By contrast, if the combined effect of each SNP included in a GRS is linearly additive on the risk scale, a simple count GRS is unlikely to provide clinically useful risk prediction. Adding additional SNPs to the GRS under this model does not improve risk prediction. The combined effect of SNPs included in several published GRS measured in several well-phenotyped epidemiologic cohort studies appears to be more consistent with a linearly additive effect. A simple count GRS is unlikely to be clinically useful for predicting the risk of a dichotomous outcome. Alternative methods for constructing GRS that attempt to identify and include SNPs that demonstrate multiplicative gene-gene or gene-environment interactive effects are needed.
将多个与疾病相关的单核苷酸多态性(SNP)组合成一个基因型风险评分(GRS)是否能够以临床相关的方式提高疾病风险预测能力,目前存在很大的不确定性。我们计算了在联合效应的乘法模型和加法模型下,简单计数GRS预测二分结果风险的能力。然后,我们将这些模拟结果与在多个流行病学队列中测量的已发表GRS的观察结果进行了比较。如果GRS中包含的每个与疾病相关的SNP的联合效应在风险尺度上是相乘的,那么计数GRS评分对于仅10 - 20个SNP的风险预测应该是有用的。在此模型下,向GRS中添加额外的SNP会显著改善风险预测。相比之下,如果GRS中包含的每个SNP的联合效应在风险尺度上是线性相加的,那么简单计数GRS不太可能提供临床上有用的风险预测。在此模型下,向GRS中添加额外的SNP并不能改善风险预测。在几个表型良好的流行病学队列研究中测量的几个已发表GRS中包含的SNP的联合效应似乎更符合线性相加效应。简单计数GRS在临床上不太可能用于预测二分结果的风险。需要构建GRS的替代方法,以尝试识别和纳入显示相乘基因 - 基因或基因 - 环境相互作用效应的SNP。