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疾病再现预警信号的性能:基于 COVID-19 数据的案例研究。

Performance of early warning signals for disease re-emergence: A case study on COVID-19 data.

机构信息

Luxembourg Centre for Systems Biomedicine, University of Luxembourg, Belvaux, Luxembourg.

College of Engineering, Mathematics and Physical Sciences, University of Exeter, Exeter, United Kingdom.

出版信息

PLoS Comput Biol. 2022 Mar 30;18(3):e1009958. doi: 10.1371/journal.pcbi.1009958. eCollection 2022 Mar.

Abstract

Developing measures for rapid and early detection of disease re-emergence is important to perform science-based risk assessment of epidemic threats. In the past few years, several early warning signals (EWS) from complex systems theory have been introduced to detect impending critical transitions and extend the set of indicators. However, it is still debated whether they are generically applicable or potentially sensitive to some dynamical characteristics such as system noise and rates of approach to critical parameter values. Moreover, testing on empirical data has, so far, been limited. Hence, verifying EWS performance remains a challenge. In this study, we tackle this question by analyzing the performance of common EWS, such as increasing variance and autocorrelation, in detecting the emergence of COVID-19 outbreaks in various countries. Our work illustrates that these EWS might be successful in detecting disease emergence when some basic assumptions are satisfied: a slow forcing through the transitions and not-fat-tailed noise. In uncertain cases, we observe that noise properties or commensurable time scales may obscure the expected early warning signals. Overall, our results suggest that EWS can be useful for active monitoring of epidemic dynamics, but that their performance is sensitive to certain features of the underlying dynamics. Our findings thus pave a connection between theoretical and empirical studies, constituting a further step towards the application of EWS indicators for informing public health policies.

摘要

开发快速和早期发现疾病复发的措施对于进行基于科学的传染病威胁风险评估非常重要。在过去的几年中,已经引入了来自复杂系统理论的几种预警信号(EWS)来检测即将发生的关键转变并扩展指标集。然而,它们是否具有通用性或对某些动态特性(如系统噪声和接近关键参数值的速率)是否敏感仍存在争议。此外,到目前为止,对实证数据的测试仍然有限。因此,验证 EWS 的性能仍然是一个挑战。在这项研究中,我们通过分析常见 EWS(例如方差和自相关增加)在检测不同国家 COVID-19 爆发中的性能来解决这个问题。我们的工作表明,当满足一些基本假设时,这些 EWS 可能成功地检测到疾病的出现:通过过渡的缓慢推动和非长尾噪声。在不确定的情况下,我们观察到噪声特性或可比的时间尺度可能会使预期的预警信号变得模糊。总体而言,我们的结果表明,EWS 可用于主动监测传染病动态,但它们的性能对潜在动态的某些特征敏感。因此,我们的研究结果在理论和实证研究之间建立了联系,为将 EWS 指标应用于公共卫生政策提供了进一步的依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ba24/9000113/cd491d2a16e6/pcbi.1009958.g001.jpg

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