协变量
比例危险模型
统计
缺少数据
平滑的
数学
回归
回归分析
计量经济学
生存分析
过度分散
计数数据
泊松分布
作者
Jonathan Gellar,Elizabeth Colantuoni,Dale M. Needham,Ciprian M. Crainiceanu
标识
DOI:10.1177/1471082x14565526
摘要
We extend the Cox proportional hazards model to cases when the exposure is a densely sampled functional process, measured at baseline. The fundamental idea is to combine penalized signal regression with methods developed for mixed effects proportional hazards models. The model is fit by maximizing the penalized partial likelihood, with smoothing parameters estimated by a likelihood-based criterion such as AIC or EPIC. The model may be extended to allow for multiple functional predictors, time varying coefficients, and missing or unequally-spaced data. Methods were inspired by and applied to a study of the association between time to death after hospital discharge and daily measures of disease severity collected in the intensive care unit, among survivors of acute respiratory distress syndrome.
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