An Explainable Multichannel Model for COVID-19 Time Series Prediction

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Hongjiang He, Jiang Xie, Xinwei Lu, Dingkai Huang, Wenjun Zhang
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引用次数: 0

Abstract

The COVID-19 pandemic has affected every country and changed people's lives. Accurate prediction of COVID-19 trends can help prevent the further spread of the outbreak. However, the changing environment affects the COVID-19 prediction performance, and previous models are limited in practical applications. An explainable multichannel deep learning model with spatial, temporal and environmental channels for time series prediction, STE-COVIDNet, was proposed. The time series data of COVID-19 infection, weather, in-state population mobility, and vaccination were collected from May, 2020, to October, 2021, in the USA. In the environmental channel of STE-COVIDNet, an attention mechanism was applied to extract significant environmental factors related to the spread of COVID-19. In addition, the attention weights of these factors were analyzed with the actual situation. STE-COVIDNet was found to be superior to other advanced prediction models of COVID-19 infection cases. The analysis results of attention weight were reported to be consistent with existing studies and reports. It was found that the same environmental factors that influence the spread of COVID-19 can vary across time and region, which explains why findings of previous studies on the relationship between the environment and COVID-19 vary by region and time. STE-COVIDNet is an explainable model that can adapt to environmental changes and thus improve predictive performance.
新冠肺炎时间序列预测的可解释多通道模型
新冠肺炎疫情影响到每个国家,改变了人们的生活。准确预测COVID-19趋势有助于防止疫情进一步蔓延。然而,环境的变化会影响COVID-19的预测性能,并且先前的模型在实际应用中受到限制。提出了一种具有空间、时间和环境通道的可解释多通道深度学习模型STE-COVIDNet。收集2020年5月至2021年10月美国COVID-19感染、天气、州内人口流动和疫苗接种的时间序列数据。在ste - covid - net环境通道中,应用关注机制提取与COVID-19传播相关的显著环境因素。并结合实际情况对各因素的关注权重进行了分析。STE-COVIDNet模型优于其他先进的COVID-19感染病例预测模型。注意权重的分析结果与已有的研究报告一致。研究发现,影响新冠病毒传播的相同环境因素可能在不同的时间和地区有所不同,这也解释了为什么以往关于环境与新冠病毒之间关系的研究结果在不同的地区和时间有所不同。ste - covid - net是一个可解释的模型,可以适应环境变化,从而提高预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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