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首页> 外文期刊>Journal of the Royal Society Interface >A theoretical framework for transitioning from patient-level to population-scale epidemiological dynamics: influenza A as a case study
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A theoretical framework for transitioning from patient-level to population-scale epidemiological dynamics: influenza A as a case study

机译:从患者水平转换到人口级流行病学动态的理论框架:流感A作为案例研究

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摘要

Multi-scale epidemic forecasting models have been used to inform population-scale predictions with within-host models and/or infection data collected in longitudinal cohort studies. However, most multi-scale models are complex and require significant modelling expertise to run. We formulate an alternative multi-scale modelling framework using a compartmental model with multiple infected stages. In the large-compartment limit, our easy-to-use framework generates identical results compared to previous more complicated approaches. We apply our framework to the case study of influenza A in humans. By using a viral dynamics model to generate synthetic patient-level data, we explore the effects of limited and inaccurate patient data on the accuracy of population-scale forecasts. If infection data are collected daily, we find that a cohort of at least 40 patients is required for a mean population-scale forecasting error below 10%. Forecasting errors may be reduced by including more patients in future cohort studies or by increasing the frequency of observations for each patient. Our work, therefore, provides not only an accessible epidemiological modelling framework but also an insight into the data required for accurate forecasting using multi-scale models.
机译:多尺度流行病预测模型已被用于向人口级预测通知在宿主内部模型和/或纵向队列研究中收集的感染数据。但是,大多数多尺度模型都很复杂,需要重大建模专业知识。我们使用具有多个受感染阶段的隔间模型制定替代的多尺度建模框架。与先前的更复杂的方法相比,我们的易于使用框架会产生相同的结果。我们将框架应用于人类流感A的案例研究。通过使用病毒动力学模型来产生合成患者级数据,我们探讨了有限和不准确的患者数据对人口级预测准确性的影响。如果每天收集感染数据,我们发现至少40名患者的队列是平均人口级预测误差低于10%。通过包括未来队列研究中的更多患者或通过增加每位患者的观察频率,可以减少预测错误。因此,我们的工作不仅提供了可访问的流行病学建模框架,还提供了使用多尺度模型准确预测所需的数据的洞察。

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