Department of Statistical Science, University College London, London, UK.
Veramed, ClinBay, France.
Stat Med. 2018 May 10;37(10):1711-1731. doi: 10.1002/sim.7613. Epub 2018 Feb 20.
Juvenile dermatomyositis (JDM) is a rare autoimmune disease that may lead to serious complications, even to death. We develop a 2-state Markov regression model in a Bayesian framework to characterise disease progression in JDM over time and gain a better understanding of the factors influencing disease risk. The transition probabilities between disease and remission state (and vice versa) are a function of time-homogeneous and time-varying covariates. These latter types of covariates are introduced in the model through a latent health state function, which describes patient-specific health over time and accounts for variability among patients. We assume a nonparametric prior based on the Dirichlet process to model the health state function and the baseline transition intensities between disease and remission state and vice versa. The Dirichlet process induces a clustering of the patients in homogeneous risk groups. To highlight clinical variables that most affect the transition probabilities, we perform variable selection using spike and slab prior distributions. Posterior inference is performed through Markov chain Monte Carlo methods. Data were made available from the UK JDM Cohort and Biomarker Study and Repository, hosted at the UCL Institute of Child Health.
幼年特发性关节炎(JDM)是一种罕见的自身免疫性疾病,可能导致严重的并发症,甚至死亡。我们在贝叶斯框架中开发了一个两状态马尔可夫回归模型,以描述 JDM 随时间的疾病进展,并更好地了解影响疾病风险的因素。疾病和缓解状态(反之亦然)之间的转移概率是时间均匀和时变协变量的函数。这些后者类型的协变量通过潜在的健康状态函数引入到模型中,该函数描述了随时间变化的患者特定健康状况,并解释了患者之间的变异性。我们假设基于狄利克雷过程的非参数先验来对健康状态函数以及疾病和缓解状态之间的基线转移强度进行建模,反之亦然。狄利克雷过程将患者聚类为同质风险组。为了突出对转移概率影响最大的临床变量,我们使用尖峰和板条先验分布进行变量选择。后验推断通过马尔可夫链蒙特卡罗方法进行。数据来自英国 JDM 队列和生物标志物研究和存储库,由伦敦大学学院儿童健康研究所托管。