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Joint Effect of Unlinked Genotypes: Application to Type 2 Diabetes in the EPIC-Potsdam Case-Cohort Study

机译:未关联基因型的联合效应:在EPIC-Potsdam病例队列研究中应用于2型糖尿病

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Analyzing multiple single nucleotide polymorphisms (SNPs) is a promising approach to finding genetic effects beyond single-locus associations. We proposed the use of multilocus stepwise regression (MSR) to screen for allele combinations as a method to model joint effects, and compared the results with the often used genetic risk score (GRS), conventional stepwise selection, and the shrinkage method LASSO. In contrast to MSR, the GRS, conventional stepwise selection, and LASSO model each genotype by the risk allele doses. We reanalyzed 20 unlinked SNPs related to type 2 diabetes (T2D) in the EPIC-Potsdam case-cohort study (760 cases, 2193 noncases). No SNP-SNP interactions and no nonlinear effects were found. Two SNP combinations selected by MSR (Nagelkerke's R-2 = 0.050 and 0.048) included eight SNPs with mean allele combination frequency of 2%. GRS and stepwise selection selected nearly the same SNP combinations consisting of 12 and 13 SNPs (Nagelkerke's R-2 ranged from 0.020 to 0.029). LASSO showed similar results. The MSR method showed the best model fit measured by Nagelkerke's R-2 suggesting that further improvement may render this method a useful tool in genetic research. However, our comparison suggests that the GRS is a simple way to model genetic effects since it does not consider linkage, SNP-SNP interactions, and no non-linear effects.
机译:分析多个单核苷酸多态性(SNP)是一种寻找超越单基因座关联的遗传效应的有前途的方法。我们提议使用多基因座逐步回归(MSR)筛选等位基因组合作为模拟关节效应的方法,并将结果与​​常用遗传风险评分(GRS),常规逐步选择和收缩法LASSO进行比较。与MSR相比,GRS,常规逐步选择和LASSO通过风险等位基因剂量对每种基因型进行建模。我们在EPIC-Potsdam病例队列研究(760例,2193例非病例)中重新分析了与2型糖尿病(T2D)相关的20个未连锁SNP。没有发现SNP-SNP相互作用,也没有发现非线性效应。 MSR选择的两个SNP组合(Nagelkerke的R-2 = 0.050和0.048)包括八个SNP,平均等位基因组合频率为2%。 GRS和逐步选择选择了几乎相同的SNP组合,包括12和13个SNP(Nagelkerke的R-2范围为0.020至0.029)。 LASSO显示了相似的结果。 MSR方法显示了Nagelkerke R-2测得的最佳模型拟合,表明进一步的改进可能使该方法成为遗传研究中的有用工具。但是,我们的比较表明,GRS是建模遗传效应的简单方法,因为它没有考虑连锁,SNP-SNP相互作用,也没有非线性效应。

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