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使用加法风险模型对复发事件数据进行动态分析。

Dynamic analysis of recurrent event data using the additive hazard model.

作者信息

Fosen Johan, Borgan Ornulf, Weedon-Fekjaer Harald, Aalen Odd O

机构信息

Department of Biostatistics, Institute of Basic Medical Sciences, University of Oslo, N-0317 Oslo.

出版信息

Biom J. 2006 Jun;48(3):381-98. doi: 10.1002/bimj.200510217.

Abstract

We propose a method for analysis of recurrent event data using information on previous occurrences of the event as a time-dependent covariate. The focus is on understanding how to analyze the effect of such a dynamic covariate while at the same time ensuring that the effects of treatment and other fixed covariates are unbiasedly estimated. By applying an additive regression model for the intensity of the recurrent events, concepts like direct, indirect and total effects of the fixed covariates may be defined in an analogous way as for traditional path analysis. Theoretical considerations as well as simulations are presented, and a data set on recurrent bladder tumors is used to illustrate the methodology.

摘要

我们提出了一种分析复发事件数据的方法,该方法将事件先前发生的信息用作随时间变化的协变量。重点在于理解如何分析这种动态协变量的效应,同时确保治疗和其他固定协变量的效应得到无偏估计。通过对复发事件的强度应用加法回归模型,固定协变量的直接、间接和总效应等概念可以用与传统路径分析类似的方式来定义。文中给出了理论考量以及模拟结果,并使用一个复发性膀胱肿瘤的数据集来说明该方法。

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