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评估流感样疾病预测中的机制和统计方法。

Evaluation of mechanistic and statistical methods in forecasting influenza-like illness.

机构信息

Department of Environmental Health Sciences, Columbia University, New York, NY, USA

Department of Environmental Health Sciences, Columbia University, New York, NY, USA.

出版信息

J R Soc Interface. 2018 Jul;15(144). doi: 10.1098/rsif.2018.0174.

Abstract

A variety of mechanistic and statistical methods to forecast seasonal influenza have been proposed and are in use; however, the effects of various data issues and design choices (statistical versus mechanistic methods, for example) on the accuracy of these approaches have not been thoroughly assessed. Here, we compare the accuracy of three forecasting approaches-a mechanistic method, a weighted average of two statistical methods and a super-ensemble of eight statistical and mechanistic models-in predicting seven outbreak characteristics of seasonal influenza during the 2016-2017 season at the national and 10 regional levels in the USA. For each of these approaches, we report the effects of real time under- and over-reporting in surveillance systems, use of non-surveillance proxies of influenza activity and manual override of model predictions on forecast quality. Our results suggest that a meta-ensemble of statistical and mechanistic methods has better overall accuracy than the individual methods. Supplementing surveillance data with proxy estimates generally improves the quality of forecasts and transient reporting errors degrade the performance of all three approaches considerably. The improvement in quality from ad hoc and post-forecast changes suggests that domain experts continue to possess information that is not being sufficiently captured by current forecasting approaches.

摘要

已经提出并使用了各种用于预测季节性流感的机械和统计方法;然而,各种数据问题和设计选择(例如,统计方法与机械方法)对这些方法准确性的影响尚未得到彻底评估。在这里,我们比较了三种预测方法的准确性——一种机械方法、两种统计方法的加权平均值和八种统计和机械模型的超级集成——在预测 2016-2017 季节全国和美国 10 个地区的季节性流感的七个爆发特征方面的准确性。对于每种方法,我们报告了实时监测系统中报告不足和报告过度、使用流感活动的非监测替代指标以及对模型预测的手动覆盖对预测质量的影响。我们的结果表明,统计和机械方法的元集成总体上具有比单个方法更高的准确性。用代理估计值补充监测数据通常会提高预测质量,而瞬时报告错误会大大降低所有三种方法的性能。来自临时和事后预测更改的质量提高表明,领域专家仍然拥有当前预测方法无法充分捕捉的信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e4f5/6073642/c7fd6e15af0e/rsif20180174-g1.jpg

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