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Data generation for the Cox proportional hazards model with time-dependent covariates: A method for medical researchers

机译:具有时间相关协变量的Cox比例风险模型的数据生成:医学研究人员的一种方法

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摘要

The proliferation of longitudinal studies has increased the importance of statistical methods for time-to-event data that can incorporate time-dependent covariates. The Cox proportional hazards model is one such method that is widely used. As more extensions of the Cox model with time-dependent covariates are developed, simulations studies will grow in importance as well. An essential starting point for simulation studies of time-to-event models is the ability to produce simulated survival times from a known data generating process. This paper develops a method for the generation of survival times that follow a Cox proportional hazards model with time-dependent covariates. The method presented relies on a simple transformation of random variables generated according to a truncated piecewise exponential distribution and allows practitioners great flexibility and control over both the number of time-dependent covariates and the number of time periods in the duration of follow-up measurement. Within this framework, an additional argument is suggested that allows researchers to generate time-to-event data in which covariates change at integer-valued steps of the time scale. The purpose of this approach is to produce data for simulation experiments that mimic the types of data structures applied that researchers encounter when using longitudinal biomedical data. Validity is assessed in a set of simulation experiments, and results indicate that the proposed procedure performs well in producing data that conform to the assumptions of the Cox proportional hazards model.
机译:纵向研究的兴起增加了统计方法对事件时间数据的重要性,这些数据可以纳入时间相关的协变量。 Cox比例风险模型就是一种被广泛使用的方法。随着具有时间相关协变量的Cox模型的更多扩展被开发,模拟研究也将变得越来越重要。时间变化模型的仿真研究的基本出发点是能够从已知的数据生成过程中生成仿真的生存时间。本文开发了一种生成生存时间的方法,该方法遵循具有时间相关协变量的Cox比例风险模型。提出的方法依赖于根据截断的分段指数分布生成的随机变量的简单转换,并允许从业人员具有很大的灵活性,并且可以控制随时间变化的协变量的数量和后续测量期间的时间段的数量。在此框架内,提出了一个额外的论点,该论点允许研究人员生成事件发生时间的数据,其中协变量以时标的整数值步进变化。这种方法的目的是为模拟实验生成数据,以模拟研究人员在使用纵向生物医学数据时遇到的数据结构类型。在一组模拟实验中评估了有效性,结果表明,所提出的程序在产生符合Cox比例风险模型假设的数据方面表现良好。

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