基于深度学习方法的COVID-19感染流行病学预测

A. Blagojević, T. Šušteršič, Nenad Filipović
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引用次数: 0

摘要

自新型SARS-CoV-2病毒出现以来,人们对开发有助于预防其传播的流行病学机制的兴趣有所增加。流行病学模型是检验病毒传播的最重要机制。为此,我们提出了深度学习方法,LSTM神经网络模型。LSTM是一种特殊的神经网络结构,能够学习序列预测问题中的长期依赖关系。该模型使用了比利时2020年3月15日至2021年3月15日期间的在线官方统计数据。结果表明,LSTM具有较低的RMSE和MAE值,具有较好的长期预测能力。在感染病例中观察到较高的RMSE和MAE值(RMSE为397.23,MAE为315.35),由于比利时每天有数千人感染,预计这一数值会更高。在未来的研究中,我们将纳入更多的现象,特别是医疗干预和无症状感染,以便更好地描述COVID-19的传播和发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epidemiological forecasting of COVID-19 infection using deep learning approach
Since the novel SARS-CoV-2 virus appeared, interest in developing epidemiological mechanisms that would help in prevention of its spread has increased. Epidemiological models are the most important mechanisms for examining the spread of the virus. For that purpose, we propose deep learning approach, LSTM neural network model. LSTM is a special kind of neural network structure capable of learning long-term dependencies in sequence prediction problems. The model was fed with official statistical data available online for Belgium in the period of March 15th, 2020 to March 15th, 2021. Results show that LSTM is capable of predicting in long-term manner with the low values of RMSE and MAE. Higher values of RMSE and MAE are observed in the infected cases (RMSE was 397.23 and MAE was 315.35) which is expected due to thousands of infected people per day in Belgium. In future studies, we will include more phenomena, especially medical intervention and asymptomatic infection, in order to better describe the COVID-19 spread and development.
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