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The versatility of multi-state models for the analysis of longitudinal data with unobservable features

机译:具有不可观察特征的纵向数据分析的多状态模型的多功能性

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摘要

Multi-state models provide a convenient statistical framework for a wide variety of medical applications characterized by multiple events and longitudinal data. We illustrate this through four examples. The potential value of the incorporation of unobserved or partially observed states is highlighted. In addition, joint modelling of multiple processes is illustrated with application to potentially informative loss to follow-up, mis-measured or missclassified data and causal inference.
机译:多状态模型为以多个事件和纵向数据为特征的各种医疗应用程序提供了方便的统计框架。我们通过四个示例说明这一点。突出了未观察到或部分观察到的状态并入的潜在价值。此外,还举例说明了多个过程的联合建模,该模型适用于后续跟踪,错误度量或分类错误的数据和因果推断的潜在信息损失。

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