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The Poisson-exponential model for recurrent event data: an application to bowel motility data

机译:复发事件数据的泊松指数模型:肠蠕动数据的应用

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This paper presents a new parametric model for recurrent events, in which the time of each recurrence is associated to one or multiple latent causes and no information is provided about the responsible cause for the event. This model is characterized by a rate function and it is based on the Poisson-exponential distribution, namely the distribution of the maximum among a random number (truncated Poisson distributed) of exponential times. The time of each recurrence is then given by the maximum lifetime value among all latent causes. Inference is based on a maximum likelihood approach. A simulation study is performed in order to observe the frequentist properties of the estimation procedure for small and moderate sample sizes. We also investigated likelihood-based tests procedures. A real example from a gastroenterology study concerning small bowel motility during fasting state is used to illustrate the methodology. Finally, we apply the proposed model to a real data set and compare it with the classical Homogeneous Poisson model, which is a particular case.
机译:本文提出了一种针对重复事件的新参数模型,其中,每次重复发生的时间都与一个或多个潜在原因相关,并且未提供有关事件负责原因的信息。该模型的特征在于比率函数,它基于泊松指数分布,即在随机次数(截短泊松分布)的指数时间中最大值的分布。然后,通过所有潜在原因中的最大寿命值来给出每次复发的时间。推论基于最大似然法。为了观察中小样本量的估计程序的频率特性,进行了模拟研究。我们还研究了基于似然性的测试程序。胃肠病学研究中有关空腹状态下小肠蠕动的一个真实示例用于说明该方法。最后,我们将提出的模型应用于真实数据集,并将其与经典的均匀泊松模型进行比较,这是一个特例。

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