Using Simple Dynamic Analytic Framework To Characterize And Forecast Epidemics

A. Tariq, K. Roosa, G. Chowell
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Abstract

Mathematical modeling provides a powerful analytic framework to investigate the transmission and control of infectious diseases. However, the reliability of the results stemming from modeling studies heavily depend on the validity of assumptions underlying the models as well as the quality of data that is employed to calibrate them. When substantial uncertainty about the epidemiology of newly emerging diseases (e.g. the generation interval, asymptomatic transmission) hampers the application of mechanistic models that incorporate modes of transmission and parameters characterizing the natural history of the disease, phenomenological growth models provide a starting point to make inferences about key transmission parameters, such as the reproduction number, and forecast the trajectory of the epidemic in order to inform public health policies. We describe in detail the methodology and application of three phenomenological growth models, the generalized-growth model, generalized logistic growth model and the Richards model in context of the COVID-19 epidemic in Pakistan.
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用简单的动态分析框架描述和预测流行病
数学建模为研究传染病的传播和控制提供了一个强大的分析框架。然而,建模研究结果的可靠性在很大程度上取决于模型基础假设的有效性以及用于校准模型的数据的质量。当新出现疾病的流行病学存在很大的不确定性(例如,产生间隔、无症状传播),妨碍了将传播方式和表征疾病自然史的参数纳入其中的机制模型的应用时,现象学增长模型提供了一个起点,可以推断出关键的传播参数,例如繁殖数;并预测流行病的发展轨迹,以便为公共卫生政策提供信息。我们详细描述了三种现象学增长模型的方法和应用,即广义增长模型、广义logistic增长模型和理查兹模型在巴基斯坦COVID-19疫情背景下的应用。
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