Dynamic survival models are a flexible tool for overcoming limitations of popular methods in the field of survival analysis. While this flexibility allows them to uncover more intricate relationships between covariates and the time-to-event, it also has them running the risk of overfitting. This paper proposes a solution to this issue based on state of the art global-local shrinkage priors and shows that they are able to effectively regularize the amount of time-variation observed in the parameters. Further, a novel approach to accounting for unobserved heterogeneity in the data through a dynamic factor model is introduced. An efficient MCMC sampler is developed and made available in an accompanying R package. Finally, the method is applied to a current data set of survival times of patients with adenocarcinoma of the gastroesophageal junction.
翻译:动态生存模型是克服生存分析领域流行方法的局限性的灵活工具,虽然这种灵活性允许它们发现共变和时间与活动之间更为复杂的关系,但也有过度适应的风险。本文件根据全球和地方最先进的收缩前科,提出解决这一问题的办法,并表明它们能够有效地规范参数中观察到的时间变换量。此外,还采用了一种新的方法,通过动态要素模型来计算数据中未观察到的异质性。开发了高效的MCMC取样器,并在一个附带的R包中提供。最后,该方法应用到目前一组有胃肠炎患者存活时间的数据。