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A nonparametric analysis of waiting times from a multistate model using a novel linear hazards model approach

机译:使用新型线性危害模型方法对多状态模型的等待时间进行非参数分析

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Traditional methods for the analysis of failure time data are often employed in the analysis of waiting times of transient states from multistate models. However, such methods can exhibit bias when waiting times among model states are dependent, even when censoring is random. Furthermore, right-censoring can occur prior to entry into the transient state of interest, preventing the observation of transitions from the state and providing another potential source of bias. We introduce a nonparametric linear hazards model for waiting times from multistate models, analogous to Aalen’s linear hazards model for failure time data, where proper estimation can be carried out via reweighting, a method flexible enough to incorporate general forms of induced and other dependent censoring. We illustrate the approximate unbiasedness of the proposed regression coefficient estimators through a simulation study, while also demonstrating the bias arising from traditional Aalen’s linear hazards model estimators obtained from correlated waiting time data. Theoretical results for the parameter estimators are provided. The reweighted estimators are used in the analysis of two data sets, to identify predictors of ambulatory recovery in a data set of spinal cord injury patients receiving activity-based rehabilitation and to identify prognostic indicators for patients receiving bone marrow transplant.
机译:用于分析故障时间数据的传统方法通常用于分析多状态模型的瞬态等待时间。但是,即使检查是随机的,当模型状态之间的等待时间相关时,此类方法也会显示出偏差。此外,可以在进入感兴趣的瞬态之前进行右删失,从而防止观察到从该状态转变,并提供了另一个潜在的偏差源。我们从多状态模型引入了用于等待时间的非参数线性危害模型,类似于针对故障时间数据的Aalen线性危害模型,在该模型中,可以通过重新加权进行适当的估算,这种加权方法足够灵活,可以结合一般形式的诱导和其他相关审查。我们通过仿真研究说明了拟议的回归系数估计量的近似无偏,同时还说明了从相关的等待时间数据获得的传统Aalen线性危险模型估计量所引起的偏差。提供了参数估计器的理论结果。重新加权的估计量用于分析两个数据集,以识别接受基于活动的康复的脊髓损伤患者数据集中的门诊恢复的预测指标,并确定接受骨髓移植的患者的预后指标。

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