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A Pan-Cancer and Polygenic Bayesian Hierarchical Model for the Effect of Somatic Mutations on Survival

机译:泛癌和多基因贝叶斯分层模型,用于生存对体细胞突变的影响

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We built a novel Bayesian hierarchical survival model based on the somatic mutation profile of patients across 50 genes and 27 cancer types. The pan-cancer quality allows for the model to “borrow” information across cancer types, motivated by the assumption that similar mutation profiles may have similar (but not necessarily identical) effects on survival across different tissues of origin or tumor types. The effect of a mutation at each gene was allowed to vary by cancer type, whereas the mean effect of each gene was shared across cancers. Within this framework, we considered 4 parametric survival models (normal, log-normal, exponential, and Weibull), and we compared their performance via a cross-validation approach in which we fit each model on training data and estimate the log-posterior predictive likelihood on test data. The log-normal model gave the best fit, and we investigated the partial effect of each gene on survival via a forward selection procedure. Through this we determined that mutations at TP53 and FAT4 were together the most useful for predicting patient survival. We validated the model via simulation to ensure that our algorithm for posterior computation gave nominal coverage rates. The code used for this analysis can be found at https://github.com/sarahsamorodnitsky/Pan-Cancer-Survival-Modeling.git , and the results are summarized at http://ericfrazerlock.com/surv_figs/SurvivalDisplay.html .
机译:基于50个基因的患者的体细胞突变谱,建立了一种新的贝叶斯分层生存模型,27种癌症类型。泛癌质量允许模型以癌症类型“借用”信息,通过假设类似的突变谱可能具有对原产地或肿瘤类型不同组织的生存率相似(但不一定相同)的影响。使每个基因对每个基因的突变的效果被癌症类型变化,而每个基因的平均效果在癌症中共用。在此框架内,我们考虑了4个参数生存模型(正常,记录正常,指数和Weibull),我们通过跨验证方法进行了比较了它们的性能,其中我们在训练数据上符合每个模型并估计日志后预测性在测试数据上的可能性。 Log-Norm Model造成最佳合适,我们通过前向选择程序研究了每个基因对生存期的部分效果。通过这,我们确定TP53和FAT4的突变在一起是预测患者存活的最有用。我们通过模拟验证了模型,以确保我们的后计算算法给出了标称覆盖率。用于此分析的代码可以在https://github.com/sarahsamorodnitsky/pan-cancer-survival-modeling.git找到,结果总结在http://ericfrazerlock.com/surv_figs/survivaldisplay.html上.html。

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