Dynamical phenomena such as infectious diseases are often investigated by following up subjects longitudinally, thus generating time to event data. The spatial aspect of such data is also of primordial importance, as many infectious diseases are transmitted from one subject to another. In this paper, a spatially correlated frailty model is introduced that accommodates for the correlation between subjects based on the distance between them. Estimates are obtained through a stochastic approximation version of the Expectation Maximization algorithm combined with a Monte-Carlo Markov Chain, for which convergence is proven. The novelty of this model is that spatial correlation is introduced for survival data at the subject level, each subject having its own frailty. This univariate spatially correlated frailty model is used to analyze spatially dependent malaria data, and its results are compared with other standard models.
翻译:传染病等动态现象往往通过纵向跟踪主题来调查,从而创造时间到事件数据。这些数据的空间方面也具有根本重要性,因为许多传染病是从一个对象传播到另一个对象。在本文件中,引入了一个空间相关脆弱模型,根据它们之间的距离来考虑不同对象之间的相互关系。通过一个预估近似版本的 " 期望最大化算法 ",加上一个“蒙特-卡洛·马克夫链”,证明了它们相互融合。这一模型的新颖之处是,在主题一级为生存数据引入空间相关数据,每个对象都有自己的弱点。这一单一的空间相关脆弱模型用于分析空间上依赖的疟疾数据,其结果与其他标准模型进行比较。