Department of Statistics and Mathematical Modelling, National Institute of Public Health and the Environment, Bilthoven, The Netherlands.
Demography. 2012 Nov;49(4):1259-83. doi: 10.1007/s13524-012-0122-z.
In Health Impact Assessment (HIA), or priority-setting for health policy, effects of risk factors (exposures) on health need to be modeled, such as with a Markov model, in which exposure influences mortality and disease incidence rates. Because many risk factors are related to a variety of chronic diseases, these Markov models potentially contain a large number of states (risk factor and disease combinations), providing a challenge both technically (keeping down execution time and memory use) and practically (estimating the model parameters and retaining transparency). To meet this challenge, we propose an approach that combines micro-simulation of the exposure information with macro-simulation of the diseases and survival. This approach allows users to simulate exposure in detail while avoiding the need for large simulated populations because of the relative rareness of chronic disease events. Further efficiency is gained by splitting the disease state space into smaller spaces, each of which contains a cluster of diseases that is independent of the other clusters. The challenge of feasible input data requirements is met by including parameter calculation routines, which use marginal population data to estimate the transitions between states. As an illustration, we present the recently developed model DYNAMO-HIA (DYNAMIC MODEL for Health Impact Assessment) that implements this approach.
在健康影响评估(HIA)或卫生政策优先排序中,需要对风险因素(暴露)对健康的影响进行建模,例如使用马尔可夫模型,其中暴露会影响死亡率和疾病发病率。由于许多风险因素与多种慢性疾病有关,因此这些马尔可夫模型可能包含大量状态(风险因素和疾病组合),这在技术上(降低执行时间和内存使用)和实践上(估计模型参数并保持透明度)都构成了挑战。为了应对这一挑战,我们提出了一种结合暴露信息微观模拟和疾病与生存宏观模拟的方法。这种方法允许用户在详细模拟暴露的同时避免因慢性疾病事件相对罕见而需要大量模拟人群,还通过将疾病状态空间划分为较小的空间来提高效率,每个空间都包含一组相互独立的疾病。通过包含参数计算例程来满足可行输入数据要求,这些例程使用边缘人口数据来估计状态之间的转移。作为说明,我们展示了最近开发的模型 DYNAMO-HIA(健康影响评估动态模型),该模型实现了这种方法。