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季节性流感疫情预测剖析

Anatomy of a seasonal influenza epidemic forecast.

作者信息

Moss Robert, Zarebski Alexander E, Dawson Peter, Franklin Lucinda J, Birrell Frances A, McCaw James M

机构信息

Modelling and Simulation Unit, Melbourne School of Population and Global Health, The University of Melbourne, Victoria.

School of Mathematics and Statistics, The University of Melbourne, Victoria.

出版信息

Commun Dis Intell (2018). 2019 Mar 15;43. doi: 10.33321/cdi.2019.43.7.

Abstract

Bayesian methods have been used to predict the timing of infectious disease epidemics in various settings and for many infectious diseases, including seasonal influenza. But integrating these techniques into public health practice remains an ongoing challenge, and requires close collaboration between modellers, epidemiologists, and public health staff. During the 2016 and 2017 Australian influenza seasons, weekly seasonal influenza forecasts were produced for cities in the three states with the largest populations: Victoria, New South Wales, and Queensland. Forecast results were presented to Health Department disease surveillance units in these jurisdictions, who provided feedback about the plausibility and public health utility of these predictions. In earlier studies we found that delays in reporting and processing of surveillance data substantially limited forecast performance, and that incorporating climatic effects on transmission improved forecast performance. In this study of the 2016 and 2017 seasons, we sought to refine the forecasting method to account for delays in receiving the data, and used meteorological data from past years to modulate the force of infection. We demonstrate how these refinements improved the forecast’s predictive capacity, and use the 2017 influenza season to highlight challenges in accounting for population and clinician behaviour changes in response to a severe season.

摘要

贝叶斯方法已被用于预测各种情况下以及包括季节性流感在内的多种传染病的流行时间。但将这些技术整合到公共卫生实践中仍然是一项持续的挑战,并且需要建模人员、流行病学家和公共卫生工作人员之间密切合作。在2016年和2017年澳大利亚流感季节期间,为人口最多的三个州(维多利亚州、新南威尔士州和昆士兰州)的城市制作了每周季节性流感预测。预测结果提交给了这些辖区的卫生部疾病监测单位,他们对这些预测的合理性和公共卫生效用提供了反馈。在早期研究中,我们发现监测数据报告和处理的延迟严重限制了预测性能,并且纳入气候对传播的影响提高了预测性能。在这项针对2016年和2017年季节的研究中,我们试图改进预测方法以考虑数据接收延迟,并使用过去几年的气象数据来调节感染力。我们展示了这些改进如何提高了预测的预测能力,并利用2017年流感季节突出了在考虑人口和临床医生行为因严重季节而发生变化方面的挑战。

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