Refining Reproduction Number Estimates to Account for Unobserved Generations of Infection in Emerging Epidemics.

Andrea Brizzi, Megan O'Driscoll, Ilaria Dorigatti
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引用次数: 3

Abstract

Background: Estimating the transmissibility of infectious diseases is key to inform situational awareness and for response planning. Several methods tend to overestimate the basic (R0) and effective (Rt) reproduction numbers during the initial phases of an epidemic. In this work we explore the impact of incomplete observations and underreporting of the first generations of infections during the initial epidemic phase.

Methods: We propose a debiasing procedure that utilizes a linear exponential growth model to infer unobserved initial generations of infections and apply it to EpiEstim. We assess the performance of our adjustment using simulated data, considering different levels of transmissibility and reporting rates. We also apply the proposed correction to severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) incidence data reported in Italy, Sweden, the United Kingdom, and the United States.

Results: In all simulation scenarios, our adjustment outperforms the original EpiEstim method. The proposed correction reduces the systematic bias, and the quantification of uncertainty is more precise, as better coverage of the true R0 values is achieved with tighter credible intervals. When applied to real-world data, the proposed adjustment produces basic reproduction number estimates that closely match the estimates obtained in other studies while making use of a minimal amount of data.

Conclusions: The proposed adjustment refines the reproduction number estimates obtained with the current EpiEstim implementation by producing improved, more precise estimates earlier than with the original method. This has relevant public health implications.

改进繁殖数估计,以解释新出现的流行病中未观察到的感染世代。
背景:估计传染病的传播性是为态势感知和应对计划提供信息的关键。有几种方法往往高估了流行病初期的基本繁殖数(R0)和有效繁殖数(Rt)。在这项工作中,我们探讨了在初始流行阶段对第一代感染的不完整观察和少报的影响。方法:我们提出了一个去偏程序,利用线性指数增长模型来推断未观察到的感染初始代,并将其应用于EpiEstim。我们使用模拟数据评估我们的调整效果,考虑到不同水平的传播率和报告率。我们还将建议的修正应用于意大利、瑞典、英国和美国报告的严重急性呼吸综合征冠状病毒2 (SARS-CoV-2)发病率数据。结果:在所有模拟场景中,我们的调整都优于原始的EpiEstim方法。所提出的修正减少了系统偏差,并且不确定性的量化更加精确,因为用更紧密的可信区间实现了对真实R0值的更好覆盖。当应用于实际数据时,所建议的调整产生的基本再现数估计值与其他研究中获得的估计值非常吻合,同时使用的数据量最少。结论:拟议的调整通过比原始方法更早地产生改进的、更精确的估计,改进了当前EpiEstim实施获得的再现数估计。这具有相关的公共卫生影响。
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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