Data Science Institute, Interuniversity Institute of Biostatistics and Statistical Bioinformatics, Hasselt University, Hasselt, Belgium.
Centre for Population, Family and Health, University of Antwerp, Antwerp, Belgium.
BMC Infect Dis. 2022 Nov 18;22(1):862. doi: 10.1186/s12879-022-07842-0.
An increasing number of infectious disease models consider demographic change in the host population, but the demographic methods and assumptions vary considerably. We carry out a systematic review of the methods and assumptions used to incorporate dynamic populations in infectious disease models.
We systematically searched PubMed and Web of Science for articles on infectious disease transmission in dynamic host populations. We screened the articles and extracted data in accordance with the guidelines of the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA).
We identified 46 articles containing 53 infectious disease models with dynamic populations. Population dynamics were modelled explicitly in 71% of the disease transmission models using cohort-component-based models (CCBMs) or individual-based models (IBMs), while 29% used population prospects as an external input. Fertility and mortality were in most cases age- or age-sex-specific, but several models used crude fertility rates (40%). Households were incorporated in 15% of the models, which were IBMs except for one model using external population prospects. Finally, 17% of the infectious disease models included demographic sensitivity analyses.
We find that most studies model fertility, mortality and migration explicitly. Moreover, population-level modelling was more common than IBMs. Demographic characteristics beyond age and sex are cumbersome to implement in population-level models and were for that reason only incorporated in IBMs. Several IBMs included households and networks, but the granularity of the underlying demographic processes was often similar to that of CCBMs. We describe the implications of the most common assumptions and discuss possible extensions.
越来越多的传染病模型考虑宿主人群的人口变化,但人口统计学方法和假设差异很大。我们对将动态人群纳入传染病模型中使用的方法和假设进行了系统回顾。
我们系统地在 PubMed 和 Web of Science 上搜索有关动态宿主人群中传染病传播的文章。我们根据系统评价和荟萃分析的首选报告项目(PRISMA)的指南筛选文章并提取数据。
我们确定了 46 篇包含 53 个具有动态人群的传染病模型的文章。71%的疾病传播模型使用队列成分模型(CCBM)或个体基础模型(IBM)明确建模人口动态,而 29%使用人口预测作为外部输入。生育率和死亡率在大多数情况下是年龄或年龄性别特异性的,但有几个模型使用了粗略的生育率(40%)。在 15%的模型中纳入了家庭,这些模型都是 IBM,除了一个使用外部人口预测的模型。最后,17%的传染病模型包括人口统计学敏感性分析。
我们发现大多数研究都明确地对生育率、死亡率和迁移进行建模。此外,基于人群的模型比 IBM 更常见。除了年龄和性别之外的人口特征很难在基于人群的模型中实施,因此仅在 IBM 中实施。有几个 IBM 纳入了家庭和网络,但底层人口统计过程的粒度通常与 CCBM 相似。我们描述了最常见假设的含义,并讨论了可能的扩展。