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超越统计不确定性的流行病建模中的内在随机性。

Intrinsic randomness in epidemic modelling beyond statistical uncertainty.

作者信息

Penn Matthew J, Laydon Daniel J, Penn Joseph, Whittaker Charles, Morgenstern Christian, Ratmann Oliver, Mishra Swapnil, Pakkanen Mikko S, Donnelly Christl A, Bhatt Samir

机构信息

University of Oxford, Oxford, UK.

Imperial College London, London, UK.

出版信息

Commun Phys. 2023;6(1):146. doi: 10.1038/s42005-023-01265-2. Epub 2023 Jun 20.

Abstract

Uncertainty can be classified as either aleatoric (intrinsic randomness) or epistemic (imperfect knowledge of parameters). The majority of frameworks assessing infectious disease risk consider only epistemic uncertainty. We only ever observe a single epidemic, and therefore cannot empirically determine aleatoric uncertainty. Here, we characterise both epistemic and aleatoric uncertainty using a time-varying general branching process. Our framework explicitly decomposes aleatoric variance into mechanistic components, quantifying the contribution to uncertainty produced by each factor in the epidemic process, and how these contributions vary over time. The aleatoric variance of an outbreak is itself a renewal equation where past variance affects future variance. We find that, superspreading is not necessary for substantial uncertainty, and profound variation in outbreak size can occur even without overdispersion in the offspring distribution (i.e. the distribution of the number of secondary infections an infected person produces). Aleatoric forecasting uncertainty grows dynamically and rapidly, and so forecasting using only epistemic uncertainty is a significant underestimate. Therefore, failure to account for aleatoric uncertainty will ensure that policymakers are misled about the substantially higher true extent of potential risk. We demonstrate our method, and the extent to which potential risk is underestimated, using two historical examples.

摘要

不确定性可分为偶然不确定性(内在随机性)或认知不确定性(对参数的不完全了解)。大多数评估传染病风险的框架仅考虑认知不确定性。我们只能观察到单一的疫情,因此无法通过实证确定偶然不确定性。在此,我们使用时变一般分支过程来描述认知不确定性和偶然不确定性。我们的框架明确地将偶然方差分解为机制成分,量化疫情过程中每个因素对不确定性产生的贡献,以及这些贡献如何随时间变化。一次疫情爆发的偶然方差本身就是一个更新方程,其中过去的方差会影响未来的方差。我们发现,对于显著的不确定性而言,超级传播并非必要条件,即使子代分布(即感染者产生的二代感染数的分布)不存在过度离散,疫情规模也可能出现巨大变化。偶然预测不确定性会动态且迅速地增长,因此仅使用认知不确定性进行预测会严重低估风险。所以,不考虑偶然不确定性将导致政策制定者被误导,使其对潜在风险的真实程度大幅高估。我们通过两个历史实例展示了我们的方法以及潜在风险被低估的程度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/66f8/11041706/086d82dcbd68/42005_2023_1265_Fig1_HTML.jpg

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