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Bayesian Threshold Regression Model with Random Effects for Recurrent Events

机译:具有重复事件随机效应的贝叶斯阈值回归模型

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摘要

It is of practical importance to extend time-to-event models in order to be applicable in situations with recurrent events on the same individual or machine. The model proposed here extends in this direction a threshold regression model with random individual effects, in which event times are modeled as realizations of the first hitting times of an underlying Wiener process, leading to Inverse Gaussian distributions of times between events. In our approach, the parameters of the distribution of an event time may depend on features of the process (such as number of previous events and total elapsed time) as well as on measured, possibly time varying, covariates and the individuals’ random effects. A Bayesian approach is adopted for model estimation using an improved MCMC algorithm, which guarantees a proper choice of proposal distribution at any step of the hybrid Gibbs sampler when this is required. Model fitting is investigated using simulated data and the model is applied to a set of real data on drug users who made repeated contacts with treatment services.
机译:扩展事件发生时间模型以适用于在同一个人或机器上发生重复事件的情况具有实际意义。这里提出的模型在这个方向上扩展了具有随机个体效应的阈值回归模型,在该模型中,事件时间被建模为底层维纳过程的首次命中时间的实现,从而导致事件之间时间的逆高斯分布。在我们的方法中,事件时间分布的参数可能取决于过程的特征(例如先前事件的数量和总经过时间),还取决于测得的(可能随时间变化的)协变量和个人的随机影响。使用改进的MCMC算法采用贝叶斯方法进行模型估计,该方法可确保在需要时在混合Gibbs采样器的任何步骤中适当选择建议分布。使用模拟数据研究模型拟合,并将模型应用于一组与治疗服务反复联系的吸毒者的真实数据。

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