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疫情预测比天气预报更复杂:人类行为和互联网数据流在疫情预测中的作用

Epidemic Forecasting is Messier Than Weather Forecasting: The Role of Human Behavior and Internet Data Streams in Epidemic Forecast.

作者信息

Moran Kelly R, Fairchild Geoffrey, Generous Nicholas, Hickmann Kyle, Osthus Dave, Priedhorsky Reid, Hyman James, Del Valle Sara Y

机构信息

Analytics, Intelligence, and Technology Division.

Theoretical Division.

出版信息

J Infect Dis. 2016 Dec 1;214(suppl_4):S404-S408. doi: 10.1093/infdis/jiw375.

DOI:10.1093/infdis/jiw375
PMID:28830111
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5181546/
Abstract

Mathematical models, such as those that forecast the spread of epidemics or predict the weather, must overcome the challenges of integrating incomplete and inaccurate data in computer simulations, estimating the probability of multiple possible scenarios, incorporating changes in human behavior and/or the pathogen, and environmental factors. In the past 3 decades, the weather forecasting community has made significant advances in data collection, assimilating heterogeneous data steams into models and communicating the uncertainty of their predictions to the general public. Epidemic modelers are struggling with these same issues in forecasting the spread of emerging diseases, such as Zika virus infection and Ebola virus disease. While weather models rely on physical systems, data from satellites, and weather stations, epidemic models rely on human interactions, multiple data sources such as clinical surveillance and Internet data, and environmental or biological factors that can change the pathogen dynamics. We describe some of similarities and differences between these 2 fields and how the epidemic modeling community is rising to the challenges posed by forecasting to help anticipate and guide the mitigation of epidemics. We conclude that some of the fundamental differences between these 2 fields, such as human behavior, make disease forecasting more challenging than weather forecasting.

摘要

数学模型,比如那些预测流行病传播或天气的模型,必须克服在计算机模拟中整合不完整和不准确数据、估计多种可能情况的概率、纳入人类行为和/或病原体的变化以及环境因素等挑战。在过去30年里,天气预报领域在数据收集、将异构数据流融入模型以及向公众传达其预测的不确定性方面取得了重大进展。流行病建模者在预测新兴疾病(如寨卡病毒感染和埃博拉病毒病)的传播时也在努力应对这些相同的问题。虽然天气模型依赖物理系统、卫星数据和气象站,但流行病模型依赖人类互动、多种数据源(如临床监测和互联网数据)以及可能改变病原体动态的环境或生物因素。我们描述了这两个领域之间的一些异同,以及流行病建模界如何应对预测带来的挑战,以帮助预测和指导疫情的缓解。我们得出结论,这两个领域之间的一些根本差异,比如人类行为,使得疾病预测比天气预报更具挑战性。