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Alternating event processes during lifetimes: population dynamics and statistical inference

机译:一生中的交替事件过程:种群动态和统计推断

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In the literature studying recurrent event data, a large amount of work has been focused on univariate recurrent event processes where the occurrence of each event is treated as a single point in time. There are many applications, however, in which univariate recurrent events are insufficient to characterize the feature of the process because patients experience nontrivial durations associated with each event. This results in an alternating event process where the disease status of a patient alternates between exacerbations and remissions. In this paper, we consider the dynamics of a chronic disease and its associated exacerbation-remission process over two time scales: calendar time and time-since-onset. In particular, over calendar time, we explore population dynamics and the relationship between incidence, prevalence and duration for such alternating event processes. We provide nonparametric estimation techniques for characteristic quantities of the process. In some settings, exacerbation processes are observed from an onset time until death; to account for the relationship between the survival and alternating event processes, nonparametric approaches are developed for estimating exacerbation process over lifetime. By understanding the population dynamics and within-process structure, the paper provide a new and general way to study alternating event processes.
机译:在研究重复事件数据的文献中,大量工作集中在单变量重复事件过程上,其中将每个事件的发生都视为一个时间点。但是,在许多应用中,单变量复发事件不足以表征过程的特征,因为患者会经历与每个事件相关的不重要持续时间。这导致交替的事件过程,其中患者的疾病状态在恶化和缓解之间交替。在本文中,我们考虑了两种时间尺度上的慢性疾病动力学及其相关的恶化加重缓解过程:日历时间和发病时间。特别是在整个日历时间内,我们探索了人口动态以及此类交替事件过程的发生率,患病率和持续时间之间的关系。我们为过程的特征量提供非参数估计技术。在某些情况下,从发作到死亡都观察到病情恶化。为了说明生存过程和交替事件过程之间的关系,开发了非参数方法来估算寿命中的恶化过程。通过了解种群动态和过程内部结构,本文为研究交替事件过程提供了一种新的通用方法。

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