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Discriminative accuracy of genomic profiling comparing multiplicative and additive risk models

机译:比较乘法和累加风险模型的基因组图谱的判别准确性

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摘要

Genetic prediction of common diseases is based on testing multiple genetic variants with weak effect sizes. Standard logistic regression and Cox Proportional Hazard models that assess the combined effect of multiple variants on disease risk assume multiplicative joint effects of the variants, but this assumption may not be correct. The risk model chosen may affect the predictive accuracy of genomic profiling. We investigated the discriminative accuracy of genomic profiling by comparing additive and multiplicative risk models. We examined genomic profiles of 40 variants with genotype frequencies varying from 0.1 to 0.4 and relative risks varying from 1.1 to 1.5 in separate scenarios assuming a disease risk of 10%. The discriminative accuracy was evaluated by the area under the receiver operating characteristic curve. Predicted risks were more extreme at the lower and higher risks for the multiplicative risk model compared with the additive model. The discriminative accuracy was consistently higher for multiplicative risk models than for additive risk models. The differences in discriminative accuracy were negligible when the effect sizes were small (<1.2), but were substantial when risk genotypes were common or when they had stronger effects. Unraveling the exact mode of biological interaction is important when effect sizes of genetic variants are moderate at the least, to prevent the incorrect estimation of risks.
机译:常见疾病的遗传预测是基于测试效果大小较弱的多个遗传变异而进行的。评估多个变体对疾病风险的综合影响的标准逻辑回归和Cox比例危害模型假设这些变体具有相乘的联合效应,但这种假设可能不正确。选择的风险模型可能会影响基因组分析的预测准确性。通过比较加性和乘性风险模型,我们研究了基因组图谱的判别准确性。在假设疾病风险为10%的情况下,我们检查了40种变异的基因组概况,其基因型频率在0.1至0.4之间变化,相对风险在1.1至1.5之间变化。通过接收器工作特性曲线下方的面积评估判别精度。与加性模型相比,乘性风险模型在较低和较高风险下的预测风险更为极端。乘法风险模型的判别准确性始终高于累加风险模型。当效应量较小(<1.2)时,判别准确性的差异可忽略不计,但是当风险基因型常见或效应更强时,判别准确性的差异就很大。当遗传变异的效应大小至少适中时,阐明生物学相互作用的确切模式非常重要,以防止错误估计风险。

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