共病的纵向动力学建模

B. Maag, S. Feuerriegel, Mathias Kraus, M. Saar-Tsechansky, Thomas Züger
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引用次数: 7

摘要

在医学上,合并症是指多种同时发生的疾病。由于它们共同发生的性质,一种共病的病程往往高度依赖于另一种疾病的病程,因此,治疗可能具有显著的溢出效应。尽管患者中普遍存在合并症,但缺乏一个综合的统计框架来模拟合并症的纵向动态。在本文中,我们提出了一个概率模型来分析患者随时间的共病动态。具体来说,我们开发了一个具有个性化、非齐次过渡机制的耦合隐马尔可夫模型,命名为Comorbidity-HMM。我们的合并症- hmm的规范是由临床研究提供的:(1)它通过引入具有临床意义的潜在状态来解释疾病进展中的不同疾病状态(即急性,稳定)。(2)对共病轨迹之间的耦合进行建模,以捕捉共同进化动力学。(3)在转变机制中考虑了患者间的异质性(如危险因素、治疗方法等)。基于我们的模型,我们定义了一个溢出效应,通过耦合(即通过共病共同进化)来测量治疗对患者轨迹的间接影响。我们基于675个健康轨迹评估了我们提出的合并症- hmm,我们调查了糖尿病和慢性肝病的联合进展。与其他没有耦合的模型相比,我们发现我们的共病hmm达到了更好的拟合。此外,我们量化了溢出效应,即糖尿病治疗在多大程度上与慢性肝病从急性到稳定的疾病状态的变化相关。为此,我们的模型对合并症的治疗计划和临床研究都有直接的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling longitudinal dynamics of comorbidities
In medicine, comorbidities refer to the presence of multiple, co-occurring diseases. Due to their co-occurring nature, the course of one comorbidity is often highly dependent on the course of the other disease and, hence, treatments can have significant spill-over effects. Despite the prevalence of comorbidities among patients, a comprehensive statistical framework for modeling the longitudinal dynamics of comorbidities is missing. In this paper, we propose a probabilistic model for analyzing comorbidity dynamics over time in patients. Specifically, we develop a coupled hidden Markov model with a personalized, non-homogeneous transition mechanism, named Comorbidity-HMM. The specification of our Comorbidity-HMM is informed by clinical research: (1) It accounts for different disease states (i. e., acute, stable) in the disease progression by introducing latent states that are of clinical meaning. (2) It models a coupling among the trajectories from comorbidities to capture co-evolution dynamics. (3) It considers between-patient heterogeneity (e. g., risk factors, treatments) in the transition mechanism. Based on our model, we define a spill-over effect that measures the indirect effect of treatments on patient trajectories through coupling (i. e., through comorbidity co-evolution). We evaluated our proposed Comorbidity-HMM based on 675 health trajectories where we investigate the joint progression of diabetes mellitus and chronic liver disease. Compared to alternative models without coupling, we find that our Comorbidity-HMM achieves a superior fit. Further, we quantify the spill-over effect, that is, to what extent diabetes treatments are associated with a change in the chronic liver disease from an acute to a stable disease state. To this end, our model is of direct relevance for both treatment planning and clinical research in the context of comorbidities.
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