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近期流感样疾病预测:自回归时间序列方法评估。

Near-term forecasts of influenza-like illness: An evaluation of autoregressive time series approaches.

机构信息

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

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

出版信息

Epidemics. 2019 Jun;27:41-51. doi: 10.1016/j.epidem.2019.01.002. Epub 2019 Jan 17.

Abstract

Seasonal influenza in the United States is estimated to cause 9-35 million illnesses annually, with resultant economic burden amounting to $47-$150 billion. Reliable real-time forecasts of influenza can help public health agencies better manage these outbreaks. Here, we investigate the feasibility of three autoregressive methods for near-term forecasts: an Autoregressive Integrated Moving Average (ARIMA) model with time-varying order; an ARIMA model fit to seasonally adjusted incidence rates (ARIMA-STL); and a feed-forward autoregressive artificial neural network with a single hidden layer (AR-NN). We generated retrospective forecasts for influenza incidence one to four weeks in the future at US National and 10 regions in the US during 5 influenza seasons. We compared the relative accuracy of the point and probabilistic forecasts of the three models with respect to each other and in relation to two large external validation sets that each comprise at least 20 other models. Both the probabilistic and point forecasts of AR-NN were found to be more accurate than those of the other two models overall. An additional sub-analysis found that the three models benefitted considerably from the use of search trends based 'nowcast' as a proxy for surveillance data, and these three models with use of nowcasts were found to be the highest ranked models in both validation datasets. When the nowcasts were withheld, the three models remained competitive relative to models in the validation sets. The difference in accuracy among the three models, and relative to models of the validation sets, was found to be largely statistically significant. Our results suggest that autoregressive models even when not equipped to capture transmission dynamics can provide reasonably accurate near-term forecasts for influenza. Existing support in open-source libraries make them suitable non-naïve baselines for model comparison studies and for operational forecasts in resource constrained settings where more sophisticated methods may not be feasible.

摘要

据估计,美国季节性流感每年导致 9000 万至 3.5 亿例疾病,由此产生的经济负担达 470 亿至 1500 亿美元。可靠的实时流感预测可以帮助公共卫生机构更好地管理这些疫情爆发。在这里,我们研究了三种自回归方法用于短期预测的可行性:一个具有时变阶的自回归整合移动平均(ARIMA)模型;一个拟合季节性调整发病率的 ARIMA 模型(ARIMA-STL);以及一个具有单个隐藏层的前馈自回归人工神经网络(AR-NN)。我们在五个流感季节期间,对美国全国和 10 个地区未来一至四周的流感发病率进行了回溯预测。我们比较了这三个模型的点预测和概率预测的相对准确性,以及相对于两个包含至少 20 个其他模型的外部验证集。总体而言,AR-NN 的概率和点预测都比其他两个模型更准确。一项额外的子分析发现,这三个模型都从基于搜索趋势的“即时预测”作为监测数据的代理中获益匪浅,使用即时预测的这三个模型在两个验证数据集中的排名都最高。当即时预测被扣留时,这三个模型与验证数据集中的模型相比仍然具有竞争力。这三个模型之间的准确性差异,以及相对于验证数据集中的模型的准确性差异,在很大程度上具有统计学意义。我们的研究结果表明,即使没有配备捕捉传播动态的能力,自回归模型也可以为流感提供相当准确的短期预测。在开源库中现有的支持使它们成为模型比较研究和资源受限环境中操作预测的合适非原始基线,在这些环境中,更复杂的方法可能不可行。

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