Forecasting seasonal influenza activity in Canada—Comparing seasonal Auto-Regressive integrated moving average and artificial neural network approaches for public health preparedness

IF 2.4 2区 农林科学 Q3 INFECTIOUS DISEASES
Armin Orang, Olaf Berke, Zvonimir Poljak, Amy L. Greer, Erin E. Rees, Victoria Ng
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Abstract

Introduction

Public health preparedness is based on timely and accurate information. Time series forecasting using disease surveillance data is an important aspect of preparedness. This study compared two approaches of time series forecasting: seasonal auto-regressive integrated moving average (SARIMA) modelling and the artificial neural network (ANN) algorithm. The goal was to model weekly seasonal influenza activity in Canada using SARIMA and compares its predictive accuracy, based on root mean square prediction error (RMSE) and mean absolute prediction error (MAE), to that of an ANN.

Methods

An initial SARIMA model was fit using automated model selection by minimizing the Akaike information criterion (AIC). Further inspection of the autocorrelation function and partial autocorrelation function led to ‘manual’ model improvements. ANNs were trained iteratively, using an automated process to minimize the RMSE and MAE.

Results

A total of 378, 462 cases of influenza was reported in Canada from the 2010–2011 influenza season to the end of the 2019–2020 influenza season, with an average yearly incidence risk of 20.02 per 100,000 population. Automated SARIMA modelling was the better method in terms of forecasting accuracy (per RMSE and MAE). However, the ANN correctly predicted the peak week of disease incidence while the other models did not.

Conclusion

Both the ANN and SARIMA models have shown to be capable tools in forecasting seasonal influenza activity in Canada. It was shown that applying both in tandem is beneficial, SARIMA better forecasted overall incidence while ANN correctly predicted the peak week.

Abstract Image

加拿大季节性流感活动预测--比较用于公共卫生准备的季节性自回归综合移动平均线和人工神经网络方法。
导言:公共卫生准备工作以及时准确的信息为基础。利用疾病监测数据进行时间序列预测是准备工作的一个重要方面。本研究比较了两种时间序列预测方法:季节性自回归综合移动平均(SARIMA)建模和人工神经网络(ANN)算法。目标是使用 SARIMA 建立加拿大每周季节性流感活动模型,并根据均方根预测误差 (RMSE) 和平均绝对预测误差 (MAE) 比较 SARIMA 和人工神经网络的预测准确性:方法:通过自动模型选择,以最小化 Akaike 信息准则(AIC)来拟合初始 SARIMA 模型。通过对自相关函数和偏自相关函数的进一步检查,对模型进行了 "手动 "改进。使用自动程序迭代训练 ANN,使 RMSE 和 MAE 最小化:从2010-2011年流感季节到2019-2020年流感季节结束,加拿大共报告了378 462例流感病例,年平均发病风险为每10万人20.02例。自动 SARIMA 建模法在预测准确性(均方根误差和最大均方根误差)方面更胜一筹。然而,ANN 能正确预测发病高峰周,而其他模型则不能:ANN 和 SARIMA 模型都是预测加拿大季节性流感活动的有效工具。结果表明,同时应用这两种模型是有益的,SARIMA 更好地预测了总体发病率,而 ANN 则正确预测了高峰周。
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来源期刊
Zoonoses and Public Health
Zoonoses and Public Health 医学-传染病学
CiteScore
5.30
自引率
4.20%
发文量
115
审稿时长
6-12 weeks
期刊介绍: Zoonoses and Public Health brings together veterinary and human health researchers and policy-makers by providing a venue for publishing integrated and global approaches to zoonoses and public health. The Editors will consider papers that focus on timely collaborative and multi-disciplinary research in zoonoses and public health. This journal provides rapid publication of original papers, reviews, and potential discussion papers embracing this collaborative spirit. Papers should advance the scientific knowledge of the sources, transmission, prevention and control of zoonoses and be authored by scientists with expertise in areas such as microbiology, virology, parasitology and epidemiology. Articles that incorporate recent data into new methods, applications, or approaches (e.g. statistical modeling) which enhance public health are strongly encouraged.
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