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Joint modeling of longitudinal ordinal data and competing risks survival times and analysis of the NINDS rt-PA stroke trial.

机译:纵向序数数据和竞争风险风险时间的联合建模以及NINDS rt-PA中风试验的分析。

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Existing joint models for longitudinal and survival data are not applicable for longitudinal ordinal outcomes with possible non-ignorable missing values caused by multiple reasons. We propose a joint model for longitudinal ordinal measurements and competing risks failure time data, in which a partial proportional odds model for the longitudinal ordinal outcome is linked to the event times by latent random variables. At the survival endpoint, our model adopts the competing risks framework to model multiple failure types at the same time. The partial proportional odds model, as an extension of the popular proportional odds model for ordinal outcomes, is more flexible and at the same time provides a tool to test the proportional odds assumption. We use a likelihood approach and derive an EM algorithm to obtain the maximum likelihood estimates of the parameters. We further show that all the parameters at the survival endpoint are identifiable from the data. Our joint model enables one to make inference for both the longitudinal ordinal outcome and the failure times simultaneously. In addition, the inference at the longitudinal endpoint is adjusted for possible non-ignorable missing data caused by the failure times. We apply the method to the NINDS rt-PA stroke trial. Our study considers the modified Rankin Scale only. Other ordinal outcomes in the trial, such as the Barthel and Glasgow scales, can be treated in the same way.
机译:现有的纵向和生存数据联合模型不适用于纵向顺序结果,可能由于多种原因导致不可忽略的缺失值。我们提出了一种用于纵向序数测量和竞争风险失效时间数据的联合模型,其中纵向序数结果的部分比例赔率模型通过潜在随机变量与事件时间相关联。在生存终点,我们的模型采用竞争风险框架来同时对多种故障类型进行建模。作为对序数结果的流行比例赔率模型的扩展,部分比例赔率模型更加灵活,同时提供了一种测试比例赔率假设的工具。我们使用似然法并推导了EM算法以获得参数的最大似然估计。我们进一步表明,可以从数据中识别出生存终点处的所有参数。我们的联合模型使人们可以同时推断出纵向顺序结果和失效时间。另外,针对由故障时间引起的可能的不可忽略的丢失数据,对纵向端点处的推论进行了调整。我们将该方法应用于NINDS rt-PA中风试验。我们的研究仅考虑改良的兰金量表。该试验中的其他序数结局,例如Barthel和Glasgow量表,可以以相同的方式处理。

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