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首页> 外文期刊>Journal of Statistical Planning and Inference >Progressive multi-state models for informatively incomplete longitudinal data
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Progressive multi-state models for informatively incomplete longitudinal data

机译:信息不完整的纵向数据的渐进多状态模型

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Progressive multi-state models provide a convenient framework for characterizing chronic disease processes where the states represent the degree of damage resulting from the disease. Incomplete data often arise in studies of such processes, and standard methods of analysis can lead to biased parameter estimates when observation of data is response-dependent. This paper describes a joint analysis useful for fitting progressive multi-state models to data arising in longitudinal studies in such settings. Likelihood based methods are described and parameters are shown to be identifiable. An EM algorithm is described for parameter estimation, and variance estimation is carried out using the Louis' method. Simulation studies demonstrate that the proposed method works well in practice under a variety of settings. An application to data from a smoking prevention study illustrates the utility of the method.
机译:渐进多状态模型为表征慢性疾病过程提供了方便的框架,其中状态代表了疾病造成的损害程度。在此类过程的研究中通常会出现不完整的数据,而标准的分析方法在观察数据依赖于响应时会导致参数估计有偏差。本文介绍了一种联合分析,可用于在这种情况下将渐进多状态模型拟合到纵向研究中产生的数据。描述了基于可能性的方法,并显示了可识别的参数。描述了用于参数估计的EM算法,并且使用路易斯方法执行方差估计。仿真研究表明,所提出的方法在各种环境下都能很好地工作。来自吸烟预防研究的数据应用说明了该方法的实用性。

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