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一种简单的方法来测量传染性和预测发病率。

A simple approach to measure transmissibility and forecast incidence.

机构信息

MRC Centre for Outbreak Analysis and Modelling, Imperial College London, Faculty of Medicine, London, UK; National Institute for Health Research Health Protection Research Unit in Modelling Methodology, Imperial College London, Faculty of Medicine, London, UK.

MRC Centre for Outbreak Analysis and Modelling, Imperial College London, Faculty of Medicine, London, UK.

出版信息

Epidemics. 2018 Mar;22:29-35. doi: 10.1016/j.epidem.2017.02.012. Epub 2017 Feb 24.

Abstract

Outbreaks of novel pathogens such as SARS, pandemic influenza and Ebola require substantial investments in reactive interventions, with consequent implementation plans sometimes revised on a weekly basis. Therefore, short-term forecasts of incidence are often of high priority. In light of the recent Ebola epidemic in West Africa, a forecasting exercise was convened by a network of infectious disease modellers. The challenge was to forecast unseen "future" simulated data for four different scenarios at five different time points. In a similar method to that used during the recent Ebola epidemic, we estimated current levels of transmissibility, over variable time-windows chosen in an ad hoc way. Current estimated transmissibility was then used to forecast near-future incidence. We performed well within the challenge and often produced accurate forecasts. A retrospective analysis showed that our subjective method for deciding on the window of time with which to estimate transmissibility often resulted in the optimal choice. However, when near-future trends deviated substantially from exponential patterns, the accuracy of our forecasts was reduced. This exercise highlights the urgent need for infectious disease modellers to develop more robust descriptions of processes - other than the widespread depletion of susceptible individuals - that produce non-exponential patterns of incidence.

摘要

新型病原体(如 SARS、大流行性流感和埃博拉)的爆发需要大量投资于反应性干预措施,因此实施计划有时每周修订一次。因此,对发病率的短期预测通常是重中之重。鉴于西非最近的埃博拉疫情,传染病建模网络组织了一次预测活动。挑战是要预测四个不同场景在五个不同时间点的看不见的“未来”模拟数据。我们采用与最近埃博拉疫情期间类似的方法,针对任意选择的可变时间窗口,估计当前的传染性水平。然后,利用当前估计的传染性来预测近期的发病率。我们在挑战中表现出色,并且经常能够做出准确的预测。回顾性分析表明,我们用于决定估计传染性的时间窗口的主观方法通常会做出最佳选择。但是,当近期趋势与指数模式有很大出入时,我们的预测准确性会降低。这项工作强调了传染病建模者迫切需要开发更稳健的描述,除了广泛的易感个体枯竭之外,还能产生非指数模式的发病率。

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