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A Comparison of Bayesian and Frequentist Approaches to Incorporating External Information for the Prediction of Prostate Cancer Risk

机译:贝叶斯方法和惯常方法结合外部信息预测前列腺癌风险的比较

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We present the most comprehensive comparison to date of the predictive benefit of genetics in addition to currently used clinical variables, using genotype data for 33 single-nucleotide polymorphisms (SNPs) in 1,547 Caucasian men from the placebo arm of the REduction by DUtasteride of prostate Cancer Events (REDUCE~R) trial. Moreover, we conducted a detailed comparison of three techniques for incorporating genetics into clinical risk prediction. The first method was a standard logistic regression model, which included separate terms for the clinical covariates and for each of the genetic markers. This approach ignores a substantial amount of external information concerning effect sizes for these Genome Wide Association Study (GWAS)-replicated SNPs. The second and third methods investigated two possible approaches to incorporating meta-analysed external SNP effect estimates - one via a weighted PCa 'risk' score based solely on the meta analysis estimates, and the other incorporating both the current and prior data via informative priors in a Bayesian logistic regression model. All methods demonstrated a slight improvement in predictive performance upon incorporation of genetics. The two methods that incorporated external information showed the greatest receiver-operating-characteristic AUCs increase from 0.61 to 0.64. The value of our methods comparison is likely to lie in observations of performance similarities, rather than difference, between three approaches of very different resource requirements. The two methods that included external information performed best, but only marginally despite substantial differences in complexity.
机译:除了目前使用的临床变量外,我们还利用遗传学数据对迄今使用的临床变量进行了最全面的比较,利用基因型数据,对安慰剂组的1547名白人男性中的33种单核苷酸多态性(SNP)进行了研究,结果显示安慰剂组可降低前列腺癌患者的度他雄胺。活动(REDUCE〜R)试用。此外,我们对将遗传学纳入临床风险预测的三种技术进行了详细的比较。第一种方法是标准的逻辑回归模型,其中包括临床协变量和每个遗传标记的单独术语。对于这些基因组广泛关联研究(GWAS)复制的SNP,这种方法忽略了大量有关效应大小的外部信息。第二种方法和第三种方法研究了两种可能的方法,以纳入经荟萃分析的外部SNP效果估计值-一种是仅基于荟萃分析估计值通过加权PCa'风险'评分,另一种方法是通过信息先验合并当前和先前的数据贝叶斯逻辑回归模型。纳入遗传学后,所有方法均显示出预测性能的轻微改善。包含外部信息的两种方法显示出最大的接收器操作特性AUC从0.61增加到0.64。我们的方法比较的价值可能在于观察在资源需求非常不同的三种方法之间的性能相似性,而不是差异。包含外部信息的两种方法效果最佳,尽管复杂程度存在很大差异,但效果仅差一点。

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