根据症状监测预测流行病

A. Skvortsov, B. Ristic, C. Woodruff
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引用次数: 13

摘要

及早发现和预测疫情爆发(恶意或自然)的规模和高峰时间,对于及时采取医疗应对措施(隔离、接种疫苗等)至关重要。解决这个问题的传统方法是基于大规模的基于代理的计算机模拟。本文提出了一种基于随机非线性滤波的替代框架。该框架基于感染动态的随机SIR流行病学模型,并对受感染人数进行综合征(通常是非医学)观察(例如,访问药房、销售某些产品、缺勤/学习等)。采用序贯蒙特卡罗方法估计SIR流行病模型的未知参数,并基于动态模型进行预测。数值结果表明,如果模型参数先验知识的不确定性不太大,所提出的框架可以提供有用的疫情峰值早期预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting an epidemic based on syndromic surveillance
Early detection and prediction of the size and the peak time of an epidemic outbreak (malicious or natural) is of crucial importance for a timely medical response (quarantine, vaccination, etc). A conventional approach to this problem is based on large scale agent-based computer simulations. This paper proposes an alternative framework formulated in the context of stochastic nonlinear filtering. The framework is based on the stochastic SIR epidemiological model of infection dynamics, with syndromic (often non-medical) observations of the number of infected people (e.g. visits to pharmacies, sale of certain products, absenteeism from work/study etc.). The unknown parameters of the SIR epidemic model are estimated via the sequential Monte Carlo method, with the prediction based on the dynamic model. The numerical results indicate that the proposed framework can provide useful early prediction of the epidemic peak if the uncertainty in prior knowledge of model parameters is not excessive.
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