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Multivariate piecewise exponential survival modeling

机译:多元分段指数生存建模

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摘要

In this article, we develop a piecewise Poisson regression method to analyze survival data from complex sample surveys involving cluster-correlated, differential selection probabilities, and longitudinal responses, to conveniently draw inference on absolute risks in time intervals that are prespecified by investigators. Extensive simulations evaluate the developed methods with extensions to multiple covariates under various complex sample designs, including stratified sampling, sampling with selection probability proportional to a measure of size (PPS), and a multi-stage cluster sampling. We applied our methods to a study of mortality in men diagnosed with prostate cancer in the Prostate, Lung, Colorectal, and Ovarian (PLCO) cancer screening trial to investigate whether a biomarker available from biospecimens collected near time of diagnosis stratifies subsequent risk of death. Poisson regression coefficients and absolute risks of mortality (and the corresponding 95% confidence intervals) for prespecified age intervals by biomarker levels are estimated. We conclude with a brief discussion of the motivation, methods, and findings of the study.
机译:在本文中,我们开发了一种分段的Poisson回归方法,可以分析来自复杂样本调查的生存数据,这些调查涉及聚类相关,差分选择概率和纵向响应,以方便地推断出调查员预先指定的时间间隔内的绝对风险。广泛的仿真评估了在各种复杂样本设计下扩展到多个协变量的开发方法,包括分层抽样,具有与量度成比例的选择概率抽样(PPS)以及多阶段聚类抽样。我们将我们的方法应用于前列腺癌,肺癌,结肠直肠癌和卵巢癌(PLCO)癌症筛查试验中诊断为前列腺癌的男性死亡率的研究,以调查可在诊断时间附近收集的生物样本中的生物标志物是否将随后的死亡风险分层。通过生物标志物水平估算了预先确定的年龄区间的Poisson回归系数和绝对死亡风险(以及相应的95%置信区间)。最后,我们简要讨论了本研究的动机,方法和发现。

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