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Change-point diagnostics in competing risks models: Two posterior predictive p-value approaches

机译:竞争风险模型中的变更点诊断:两种后验预测p值方法

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摘要

This paper presents a Bayesian diagnostic procedure for examining change-point assumption in the competing risks model framework. It considers the family of distributions arising from the cause-specific model as reported by Chiang (Introduction to stochastic processes in biostatistics. Wiley, New York, 1968) upon which change-points are added to accommodate possible distributional heterogeneity. Model departure, due to misspecification of change-points associated with either the overall survival distribution or cause-specific probabilities, is quantified in terms of a sequence of cumulative-sum statistics between each pair of adjacent change-points assumed. When assessing the asymptotic behavior of each sequence of cumulative-sum statistics using its posterior predictive p-values, see Rubin (Ann Stat 12:1151–1172, 1984) and partial posterior predictive p-values as reported by Bayarri and Berger (J Am Stat Assoc 95:1127–1142, 2000), we show that both types of p-values attain their greatest departure from 0.5 at the change-point that is missed in the assumed model, from which a diagnostic procedure is formalized. Statistical power of these two types of p-values is discussed.
机译:本文提出了一种贝叶斯诊断程序,用于检查竞争风险模型框架中的变更点假设。它考虑了蒋介石(生物统计学中的随机过程简介,Wiley,纽约,1968年)报告的因因模型所产生的分布族,在其上添加了变化点以适应可能的分布异质性。由于与总体生存分布或特定原因的概率相关的变更点的规格不正确,模型偏离可通过假定的每对相邻变更点之间的累积和统计序列来量化。当使用后验预测p值评估每个累积和统计序列的渐近行为时,请参阅Rubin(Ann Stat 12:1151-1117,1984)和Bayarri和Berger报告的部分后验p值(J Am Stat Assoc 95:1127–1142,2000),我们证明了这两种类型的p值在假设模型中遗漏的变化点上都偏离了0.5,这是最大的偏离。讨论了这两种类型的p值的统计功效。

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