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使用改进的长短期记忆网络(LSTM)深度学习方法对COVID-19疫情趋势进行时间序列预测:俄罗斯、秘鲁和伊朗的案例研究

Time series prediction for the epidemic trends of COVID-19 using the improved LSTM deep learning method: Case studies in Russia, Peru and Iran.

作者信息

Wang Peipei, Zheng Xinqi, Ai Gang, Liu Dongya, Zhu Bangren

机构信息

School of Information Engineering, China University of Geosciences, Beijing, China.

Technology Innovation Center for Territory Spatial Big-data, MNR of China, Beijing, China.

出版信息

Chaos Solitons Fractals. 2020 Nov;140:110214. doi: 10.1016/j.chaos.2020.110214. Epub 2020 Aug 19.

Abstract

The COVID-19 outbreak in late December 2019 is still spreading rapidly in many countries and regions around the world. It is thus urgent to predict the development and spread of the epidemic. In this paper, we have developed a forecasting model of COVID-19 by using a deep learning method with rolling update mechanism based on the epidemical data provided by Johns Hopkins University. First, as traditional epidemical models use the accumulative confirmed cases for training, it can only predict a rising trend of the epidemic and cannot predict when the epidemic will decline or end, an improved model is built based on long short-term memory (LSTM) with daily confirmed cases training set. Second, considering the existing forecasting model based on LSTM can only predict the epidemic trend within the next 30 days accurately, the rolling update mechanism is embedded with LSTM for long-term projections. Third, by introducing Diffusion Index (DI), the effectiveness of preventive measures like social isolation and lockdown on the spread of COVID-19 is analyzed in our novel research. The trends of the epidemic in 150 days ahead are modeled for Russia, Peru and Iran, three countries on different continents. Under our estimation, the current epidemic in Peru is predicted to continue until November 2020. The number of positive cases per day in Iran is expected to fall below 1000 by mid-November, with a gradual downward trend expected after several smaller peaks from July to September, while there will still be more than 2000 increase by early December in Russia. Moreover, our study highlights the importance of preventive measures which have been taken by the government, which shows that the strict controlment can significantly reduce the spread of COVID-19.

摘要

2019年12月下旬爆发的新冠疫情仍在世界许多国家和地区迅速蔓延。因此,预测疫情的发展和传播迫在眉睫。在本文中,我们基于约翰·霍普金斯大学提供的疫情数据,采用具有滚动更新机制的深度学习方法,开发了一种新冠疫情预测模型。首先,由于传统疫情模型使用累计确诊病例进行训练,只能预测疫情的上升趋势,无法预测疫情何时会下降或结束,因此构建了一个基于长短期记忆网络(LSTM)的改进模型,使用每日确诊病例训练集。其次,考虑到现有的基于LSTM的预测模型只能准确预测未来30天内的疫情趋势,将滚动更新机制嵌入LSTM以进行长期预测。第三,通过引入扩散指数(DI),在我们的新研究中分析了社交隔离和封锁等预防措施对新冠疫情传播的有效性。对不同大陆的三个国家——俄罗斯、秘鲁和伊朗未来150天的疫情趋势进行了建模。据我们估计,秘鲁目前的疫情预计将持续到2020年11月。预计到11月中旬,伊朗每日新增确诊病例数将降至1000例以下,7月至9月出现几个较小峰值后,预计将呈逐渐下降趋势,而俄罗斯到12月初仍将新增超过2000例。此外,我们的研究强调了政府采取的预防措施的重要性,这表明严格管控可以显著减少新冠疫情的传播。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6b3/7437443/61278f5f5c11/gr1_lrg.jpg

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