Illness-death models are a class of stochastic models inside the multi-state framework. In those models, individuals are allowed to move over time between different states related to illness and death. They are of special interest when working with non-terminal diseases, as they not only consider the competing risk of death but also allow to study progression from illness to death. The intensity of each transition can be modelled including both fixed and random effects of covariates. In particular, spatially structured random effects or their multivariate versions can be used to assess spatial differences between regions and among transitions. We propose a Bayesian methodological framework based on an illness-death model with a multivariate Leroux prior for the random effects. We apply this model to a cohort study regarding progression after osteoporotic hip fracture in elderly patients. From this spatial illness-death model we assess the geographical variation in risks, cumulative incidences, and transition probabilities related to recurrent hip fracture and death. Bayesian inference is done via the integrated nested Laplace approximation (INLA).
翻译:疾病-死亡模型是多州框架内的一类随机模型,在这些模型中,允许个人在与疾病和死亡有关的不同州之间随时间移动;在与非终点疾病打交道时,这些模型具有特别的兴趣,因为它们不仅考虑到相竞的死亡风险,而且还可以研究从疾病到死亡的演变过程;每种转变的强度都可以模拟,包括共变的固定效应和随机效应。特别是,空间结构随机效应或其多变版本可以用来评估各区域和转型之间的空间差异。我们提议了一个基于疾病-死亡模型的巴伊西亚方法框架,在随机效应之前使用多变Leroux。我们将这一模型应用于关于老年病人骨质骨折后进展的群研究。我们从这一空间疾病-死亡模型中评估与经常的臀骨折和死亡有关的风险、累积性发生率和过渡概率的地理变化。贝伊斯的推论是通过综合的拉贝近值(INLA)进行的。