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Improved survival modeling in cancer research using a reduced piecewise exponential approach

机译:使用减少的分段指数方法改进癌症研究中的生存模型

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Statistical models for survival data are typically nonparametric, for example, the Kaplan-Meier curve. Parametric survival modeling, such as exponential modeling, however, can reveal additional insights and be more efficient than nonparametric alternatives. A major constraint of the existing exponential models is the lack of flexibility due to distribution assumptions. A flexible and parsimonious piecewise exponential model is presented to best use the exponential models for arbitrary survival data. This model identifies shifts in the failure rate over time based on an exact likelihood ratio test, a backward elimination procedure, and an optional presumed order restriction on the hazard rate. Such modeling provides a descriptive tool in understanding the patient survival in addition to the Kaplan-Meier curve. This approach is compared with alternative survival models in simulation examples and illustrated in clinical studies.
机译:生存数据的统计模型通常是非参数的,例如Kaplan-Meier曲线。但是,参数化生存建模(例如指数建模)可以揭示更多的见解,并且比非参数化的替代方法更有效。现有的指数模型的主要约束是由于分布假设而缺乏灵活性。提出了一种灵活且简约的分段指数模型,以最佳地将指数模型用于任意生存数据。该模型基于精确的似然比检验,后向消除程序以及对危险率的可选假定顺序限制来确定失败率随时间的变化。除了Kaplan-Meier曲线外,此类建模还提供了一种描述性工具,可帮助您了解患者的生存情况。在模拟实例中将该方法与替代生存模型进行了比较,并在临床研究中进行了说明。

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