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Nonparametric inference and uniqueness for periodically observed progressive disease models

机译:定期观察到的进行性疾病模型的非参数推论和唯一性

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In many studies examining the progression of HIV and other chronic diseases, subjects are periodically monitored to assess their progression through disease states. This gives rise to a specific type of panel data which have been termed "chain-of-events data"; e.g. data that result from periodic observation of a progressive disease process whose states occur in a prescribed order and where state transitions are not observable. Using a discrete time semi-Markov model, we develop an algorithm for nonparametric estimation of the distribution functions of sojourn times in a J state progressive disease model. Issues of uniqueness for chain-of-events data are not well-understood. Thus, a main goal of this paper is to determine the uniqueness of the nonparametric estimators of the distribution functions of sojourn times within states. We develop sufficient conditions for uniqueness of the nonparametric maximum likelihood estimator, including situations where some but not all of its components are unique. We illustrate the methods with three examples.
机译:在许多检查HIV和其他慢性疾病进展的研究中,会定期监视受试者以评估其通过疾病状态的进展。这产生了一种特殊类型的面板数据,被称为“事件链数据”;例如定期观察进行性疾病过程的数据,这些疾病的状态以规定的顺序发生并且状态转换无法观察到。使用离散时间半马尔可夫模型,我们开发了一种用于J状态进行性疾病模型中逗留时间分布函数的非参数估计算法。事件链数据的唯一性问题尚未得到很好的理解。因此,本文的主要目的是确定状态内停留时间分布函数的非参数估计量的唯一性。我们为非参数最大似然估计的唯一性开发了充分的条件,包括其中某些但并非全部组成部分都是唯一的情况。我们用三个例子说明这些方法。

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