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Chronic disease projections in heterogeneous ageing populations: approximating multi-state models of joint distributions byn modelling marginal distributions

机译:异质人口老龄化的慢性疾病预测:通过对边际分布建模来近似关节分布的多状态模型

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摘要

To quantify the effects of changes in risk factors for chronic diseases on morbidity and mortality, Markov-type multi-state models are used. However, with multiple risk factors and many diseases relating to these risk factors, these models contain a large number of states. In this paper, we present an alternative modelling methodology implemented in the National Institute for Public Health and the Environment chronic disease model. This model includes multiple states based on risk factor levels and disease stages but only keeps track of the marginal probability values. Starting from the multi-state model, differential equations are derived that describe the change of the marginal distribution for each risk factor class and disease stage, taking into account population heterogeneity and competing mortality risks. The model is illustrated by presenting results of a scenario affecting disease incidence by altering the risk factor distribution of the population. To show the strength of the approximating model, we compare its results to those of the multi-state Markov model.
机译:为了量化慢性病危险因素变化对发病率和死亡率的影响,使用了马尔可夫型多状态模型。但是,由于存在多种危险因素以及与这些危险因素有关的多种疾病,这些模型包含大量状态。在本文中,我们提出了在美国国家公共卫生与环境研究所慢性病模型中实施的替代建模方法。该模型包括基于风险因素水平和疾病阶段的多种状态,但仅跟踪边际概率值。从多状态模型开始,推导了微分方程,该方程描述了每种风险因素类别和疾病阶段的边际分布变化,同时考虑了人口异质性和竞争性死亡风险。通过展示通过改变人群的危险因素分布来影响疾病发生率的情景结果来说明该模型。为了显示近似模型的强度,我们将其结果与多状态马尔可夫模型的结果进行比较。

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