Systematic Comparison of Different Compartmental Models for Predicting COVID-19 Progression.

IF 2.2
Marwan Shams Eddin, Hussein El Hajj, Ramez Zayyat, Gayeon Lee
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Abstract

Background/Objectives: The COVID-19 pandemic highlighted the critical need for accurate predictive models to guide public health interventions and optimize healthcare resource allocation. This study evaluates how the complexity of compartmental infectious disease models influences their forecasting accuracy and utility for pandemic resource planning. Methods: We analyzed a range of compartmental models, including simple susceptible-infected-recovered (SIR) models and more complex frameworks incorporating asymptomatic carriers and deaths. These models were calibrated and tested using real-world COVID-19 data from the United States to assess their performance in predicting symptomatic and asymptomatic infection counts, peak infection timing, and resource demands. Both adaptive models (updating parameters with real-time data) and non-adaptive models were evaluated. Results: Numerical results show that while more complex models capture detailed disease dynamics, simpler models often yield better forecast accuracy, especially during early pandemic stages or when predicting peak infection periods. Adaptive models provided the most accurate short-term forecasts but required substantial computational resources, making them less practical for long-term planning. Non-adaptive models produced stable long-term forecasts useful for strategic resource allocation, such as hospital bed and ICU planning. Conclusions: Model selection should align with the pandemic stage and decision-making horizon. Simpler models are effective for rapid early-stage interventions, adaptive models excel in short-term operational forecasting, and non-adaptive models remain valuable for long-term resource planning. These findings can inform policymakers on selecting appropriate modeling approaches to improve pandemic response effectiveness.

预测COVID-19进展的不同室室模型的系统比较
背景/目的:2019冠状病毒病大流行凸显了建立准确预测模型以指导公共卫生干预和优化医疗资源配置的迫切需要。本研究评估了区隔传染病模型的复杂性如何影响其预测准确性和大流行资源规划的效用。方法:我们分析了一系列室室模型,包括简单的易感-感染-康复(SIR)模型和包含无症状携带者和死亡的更复杂的框架。使用来自美国的真实COVID-19数据对这些模型进行了校准和测试,以评估其在预测有症状和无症状感染计数、感染高峰时间和资源需求方面的表现。对自适应模型(实时数据更新参数)和非自适应模型进行了评估。结果:数值结果表明,虽然更复杂的模型能捕捉到详细的疾病动态,但更简单的模型往往能产生更好的预测准确性,特别是在大流行的早期阶段或预测感染高峰期时。自适应模型提供了最准确的短期预测,但需要大量的计算资源,这使得它们在长期规划中不太实用。非适应性模型产生稳定的长期预测,有助于战略资源分配,如医院床位和ICU规划。结论:模型选择应与大流行阶段和决策范围相一致。简单的模型对早期快速干预有效,适应性模型在短期业务预测中表现出色,非适应性模型对长期资源规划仍有价值。这些发现可以为决策者选择适当的建模方法提供信息,以提高大流行应对的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.60
自引率
0.00%
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0
审稿时长
7 weeks
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