COVINet:一个基于深度学习和可解释的预测模型,用于预测美国各州的COVID-19发展轨迹。

IF 1.2 4区 数学 Q2 STATISTICS & PROBABILITY
Journal of Applied Statistics Pub Date : 2024-10-08 eCollection Date: 2025-01-01 DOI:10.1080/02664763.2024.2412284
Yukang Jiang, Ting Tian, Wenting Zhou, Yuting Zhang, Zhongfei Li, Xueqin Wang, Heping Zhang
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引用次数: 0

摘要

2019冠状病毒病自2020年1月爆发以来,对美国造成了深远的破坏性影响。准确预测流行病的发展轨迹和制定遏制其发展的战略目前是一项艰巨的挑战。针对这一危机,我们提出了COVINet,它结合了长短期记忆和门控循环单元的架构,结合了可操作的协变量,提供了高精度的预测和可解释的响应。首先,我们用五个输入特征训练COVINet模型,并在2021年4月26日之前的最后四周内,将COVINet模型的平均绝对误差(MAEs)和平均相对误差(MREs)与美国CDC的10个竞争模型进行比较。结果表明,在预测总死亡人数时,COVINet优于MAEs和MREs的所有竞争模型。然后,我们重点使用COVINet预测前10个热点州中最严重的县。对于2023年3月23日之前的最后7天或30天的所有预测来说,MREs都很小。除了预测准确性外,COVINet还具有高度的可解释性,增强了对大流行动态的理解。这种双重能力使冠状病毒网成为为大流行预防和政府决策的有效战略提供信息的有力工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COVINet: a deep learning-based and interpretable prediction model for the county-wise trajectories of COVID-19 in the United States.

The devastating impact of COVID-19 on the United States has been profound since its onset in January 2020. Predicting the trajectory of epidemics accurately and devising strategies to curb their progression are currently formidable challenges. In response to this crisis, we propose COVINet, which combines the architecture of Long Short-Term Memory and Gated Recurrent Unit, incorporating actionable covariates to offer high-accuracy prediction and explainable response. First, we train COVINet models for confirmed cases and total deaths with five input features, and compare Mean Absolute Errors (MAEs) and Mean Relative Errors (MREs) of COVINet against ten competing models from the United States CDC in the last four weeks before April 26, 2021. The results show COVINet outperforms all competing models for MAEs and MREs when predicting total deaths. Then, we focus on prediction for the most severe county in each of the top 10 hot-spot states using COVINet. The MREs are small for all predictions made in the last 7 or 30 days before March 23, 2023. Beyond predictive accuracy, COVINet offers high interpretability, enhancing the understanding of pandemic dynamics. This dual capability positions COVINet as a powerful tool for informing effective strategies in pandemic prevention and governmental decision-making.

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来源期刊
Journal of Applied Statistics
Journal of Applied Statistics 数学-统计学与概率论
CiteScore
3.40
自引率
0.00%
发文量
126
审稿时长
6 months
期刊介绍: Journal of Applied Statistics provides a forum for communication between both applied statisticians and users of applied statistical techniques across a wide range of disciplines. These areas include business, computing, economics, ecology, education, management, medicine, operational research and sociology, but papers from other areas are also considered. The editorial policy is to publish rigorous but clear and accessible papers on applied techniques. Purely theoretical papers are avoided but those on theoretical developments which clearly demonstrate significant applied potential are welcomed. Each paper is submitted to at least two independent referees.
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