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Risk prediction using genome-wide association studies.

机译:使用全基因组关联研究进行风险预测。

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Over the last few years, many new genetic associations have been identified by genome-wide association studies (GWAS). There are potentially many uses of these identified variants: a better understanding of disease etiology, personalized medicine, new leads for studying underlying biology, and risk prediction. Recently, there has been some skepticism regarding the prospects of risk prediction using GWAS, primarily motivated by the fact that individual effect sizes of variants associated with the phenotype are mostly small. However, there have also been arguments that many disease-associated variants have not yet been identified; hence, prospects for risk prediction may improve if more variants are included. From a risk prediction perspective, it is reasonable to average a larger number of predictors, of which some may have (limited) predictive power, and some actually may be noise. The idea being that when added together, the combined small signals results in a signal that is stronger than the noise from the unrelated predictors. We examine various aspects of the construction of models for the estimation of disease probability. We compare different methods to construct such models, to examine how implementation of cross-validation may influence results, and to examine which single nucleotide polymorphisms (SNPs) are most useful for prediction. We carry out our investigation on GWAS of the Welcome Trust Case Control Consortium. For Crohn's disease, we confirm our results on another GWAS. Our results suggest that utilizing a larger number of SNPs than those which reach genome-wide significance, for example using the lasso, improves the construction of risk prediction models.
机译:在过去的几年中,通过全基因组关联研究(GWAS)已经发现了许多新的遗传关联。这些已识别变体的潜在用途有很多:对疾病病因学的更好理解,个性化药物,用于研究基础生物学的新线索以及风险预测。最近,人们对使用GWAS进行风险预测的前景持怀疑态度,这主要是由于与表型相关的变异体的个体效应大小大多很小。但是,也有许多人认为尚未发现许多与疾病有关的变异。因此,如果包含更多变体,则风险预测的前景可能会有所改善。从风险预测的角度来看,对大量的预测器取平均是合理的,其中一些预测器可能具有(有限的)预测能力,而某些实际上可能是噪音。这样的想法是,组合在一起的小信号产生的信号强度要强于无关预测变量的噪声。我们检查了模型的建立,以估计疾病的可能性。我们比较了构建此类模型的不同方法,研究了交叉验证的实施方式可能如何影响结果,并研究了哪些单核苷酸多态性(SNP)对预测最有用。我们对“欢迎信任案例控制协会”的GWAS进行调查。对于克罗恩氏病,我们在另一个GWAS上证实了我们的结果。我们的结果表明,利用比达到全基因组意义的SNP多的SNP(例如使用套索),可以改善风险预测模型的构建。

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