与危险因素相关的慢性疾病建模

Pieter H.M. Baal, H. Boshuizen
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引用次数: 1

摘要

在大多数国家,非传染性疾病已取代传染病,成为最重要的死亡原因。许多以前是致命疾病的非传染性疾病已变成慢性疾病,这在治疗和预防选择方面改变了保健格局。目前,医疗保健支出的很大一部分是针对患有多种慢性病的老年人的治疗和护理。在这方面,预防起着重要作用,因为有许多风险因素符合与多种慢性疾病有关的预防政策。本文讨论了模拟建模的使用,以更好地了解慢性病及其危险因素之间的关系,旨在为卫生政策提供信息。仿真模型揭示了与人口老龄化和优先事项设置相关的重要政策问题。重点是对一般人群中的多种慢性疾病进行建模,以及如何通过结合各种数据源一致地对慢性疾病及其危险因素之间的关系进行建模。讨论了慢性疾病建模中的方法学问题以及这些问题与数据可用性的关系。在这里,区分了(a)与构建流行病学模拟模型有关的问题和(b)与将流行病学模拟模型的结果与生活质量、医疗保健支出和劳动力市场参与等经济相关结果联系起来有关的问题。基于这一区别,讨论了几种模拟模型,将危险因素与多种慢性疾病联系起来,以探索如何在实践中处理这些问题。对今后的研究提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Chronic Diseases in Relation to Risk Factors
In most countries, non-communicable diseases have taken over infectious diseases as the most important causes of death. Many non-communicable diseases that were previously lethal diseases have become chronic, and this has changed the healthcare landscape in terms of treatment and prevention options. Currently, a large part of healthcare spending is targeted at curing and caring for the elderly, who have multiple chronic diseases. In this context prevention plays an important role, as there are many risk factors amenable to prevention policies that are related to multiple chronic diseases. This article discusses the use of simulation modeling to better understand the relations between chronic diseases and their risk factors with the aim to inform health policy. Simulation modeling sheds light on important policy questions related to population aging and priority setting. The focus is on the modeling of multiple chronic diseases in the general population and how to consistently model the relations between chronic diseases and their risk factors by combining various data sources. Methodological issues in chronic disease modeling and how these relate to the availability of data are discussed. Here, a distinction is made between (a) issues related to the construction of the epidemiological simulation model and (b) issues related to linking outcomes of the epidemiological simulation model to economic relevant outcomes such as quality of life, healthcare spending and labor market participation. Based on this distinction, several simulation models are discussed that link risk factors to multiple chronic diseases in order to explore how these issues are handled in practice. Recommendations for future research are provided.
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