数学模型在预测和控制服务不足地区传染病爆发中的作用:系统回顾和荟萃分析。

Public health challenges Pub Date : 2025-09-13 eCollection Date: 2025-09-01 DOI:10.1002/puh2.70116
Mavhunga Khumbudzo, Evans Duah, Estelle Grobler, Kuhlula Maluleke
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引用次数: 0

摘要

背景和目的:数学建模在公共卫生中发挥着重要作用,能够预测疾病暴发、评估传播动态和评估干预策略。虽然在资源丰富的环境中广泛应用,但在服务不足的环境中使用仍未得到充分探索。这篇综述的目的是检查和综合目前的证据应用数学模型预测和控制传染病在服务不足的环境。方法:在PubMed、Scopus、Medline、ScienceDirect和EBSCOhost等数据库中,使用系统评价和荟萃分析首选报告项目(PRISMA)和人群、干预、比较和结果(PICO)框架进行全面、可重复的搜索。应用数学建模和传染病控制相关的关键词和医学主题目(MeSH)术语。两位审稿人独立筛选标题、摘要和全文,第三位审稿人负责解决差异。综合采用主题分析和元分析。结果:在筛选的838项研究中,27项(3.2%)符合纳入标准。确定性模型使用最多,其次是随机模型和基于智能体的模型。模拟的疾病包括COVID-19、疟疾、结核病、埃博拉、寨卡病毒、基孔肯雅热、登革热、白喉、呼吸道感染、内脏利什曼病和麻疹。模型预测了干预措施对传播的影响,合并效应大小(Ro)为1.32 (θ = 1.3, p)。结论:数学模型在支持服务不足地区的传染病控制方面显示了价值。然而,确定性模型的优势限制了在不同背景下的适应性。数据质量差进一步限制了可靠性。今后的工作应侧重于扩大建模方法、加强数据基础设施和处理更广泛的疾病。这些发现可以通过支持数据驱动的决策、改善资源分配以及在服务不足的环境中将建模纳入疫情准备和应对战略来指导公共卫生政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The Role of Mathematical Modelling in Predicting and Controlling Infectious Disease Outbreaks in Underserved Settings: A Systematic Review and Meta-Analysis.

The Role of Mathematical Modelling in Predicting and Controlling Infectious Disease Outbreaks in Underserved Settings: A Systematic Review and Meta-Analysis.

The Role of Mathematical Modelling in Predicting and Controlling Infectious Disease Outbreaks in Underserved Settings: A Systematic Review and Meta-Analysis.

The Role of Mathematical Modelling in Predicting and Controlling Infectious Disease Outbreaks in Underserved Settings: A Systematic Review and Meta-Analysis.

Background and aim: Mathematical modelling plays an important role in public health by enabling the prediction of disease outbreaks, assessment of transmission dynamics and evaluation of intervention strategies. Although widely applied in high-resource settings, its use in underserved contexts remains underexplored. This review aimed to examine and synthesize current evidence on the application of mathematical modelling for predicting and controlling infectious diseases in underserved settings.

Methods: A comprehensive and reproducible search was conducted using Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) and population, intervention, comparison and outcome (PICO) frameworks across databases, including PubMed, Scopus, Medline, ScienceDirect and EBSCOhost. Keywords and Medical Subject Headings (MeSH) terms related to mathematical modelling and infectious disease control were applied. Two reviewers independently screened titles, abstracts and full texts, with a third resolving discrepancies. Thematic analysis and meta-analysis were used for synthesis.

Results: Out of 838 studies screened, 27 (3.2%) met inclusion criteria. Deterministic models were most used, followed by stochastic and agent-based models. Diseases modelled included COVID-19, malaria, tuberculosis (TB), Ebola, Zika, chikungunya, dengue, diphtheria, respiratory infections, visceral leishmaniasis (VL) and Mpox. Modelling predicted the impact of interventions on transmission, with pooled effect size (Ro) of 1.32 (θ = 1.3, p < 0.0001). However, challenges, such as data underreporting, gaps and inconsistencies, were common, potentially affecting model accuracy and real-world applicability.

Conclusion: Mathematical modelling has demonstrated value in supporting infectious disease control in underserved settings. However, the predominance of deterministic models limits adaptability across diverse contexts. Poor data quality further constrains reliability. Future work should focus on expanding modelling approaches, strengthening data infrastructure and addressing a broader range of diseases. These findings can guide public health policy by supporting data-driven decision-making, improving resource allocation and integrating modelling into outbreak preparedness and response strategies in underserved settings.

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