Department of Electrical and Mechanical Engineering, Nagoya Institute of Technology, Nagoya 466-8555, Japan.
Department of Mathematics, Faculty of Science, Suez Canal University, Ismailia 41522, Egypt.
Int J Environ Res Public Health. 2021 May 27;18(11):5736. doi: 10.3390/ijerph18115736.
With the wide spread of COVID-19 and the corresponding negative impact on different life aspects, it becomes important to understand ways to deal with the pandemic as a part of daily routine. After a year of the COVID-19 pandemic, it has become obvious that different factors, including meteorological factors, influence the speed at which the disease is spread and the potential fatalities. However, the impact of each factor on the speed at which COVID-19 is spreading remains controversial. Accurate forecasting of potential positive cases may lead to better management of healthcare resources and provide guidelines for government policies in terms of the action required within an effective timeframe. Recently, Google Cloud has provided online COVID-19 forecasting data for the United States and Japan, which would help in predicting future situations on a state/prefecture scale and are updated on a day-by-day basis. In this study, we propose a deep learning architecture to predict the spread of COVID-19 considering various factors, such as meteorological data and public mobility estimates, and applied it to data collected in Japan to demonstrate its effectiveness. The proposed model was constructed using a neural network architecture based on a long short-term memory (LSTM) network. The model consists of multi-path LSTM layers that are trained using time-series meteorological data and public mobility data obtained from open-source data. The model was tested using different time frames, and the results were compared to Google Cloud forecasts. Public mobility is a dominant factor in estimating new positive cases, whereas meteorological data improve their accuracy. The average relative error of the proposed model ranged from 16.1% to 22.6% in major regions, which is a significant improvement compared with Google Cloud forecasting. This model can be used to provide public awareness regarding the morbidity risk of the COVID-19 pandemic in a feasible manner.
随着 COVID-19 的广泛传播及其对不同生活方面的相应负面影响,了解如何将其作为日常生活的一部分来应对成为当务之急。在 COVID-19 大流行一年后,很明显,包括气象因素在内的不同因素会影响疾病传播的速度和潜在的死亡率。然而,每个因素对 COVID-19 传播速度的影响仍存在争议。准确预测潜在的阳性病例可能会导致更好地管理医疗资源,并为政府政策提供在有效时间内所需行动的指导方针。最近,谷歌云为美国和日本提供了在线 COVID-19 预测数据,这有助于预测未来各州/府的情况,并每天更新。在这项研究中,我们提出了一种深度学习架构,该架构考虑了各种因素,如气象数据和公共流动性估计,来预测 COVID-19 的传播,并将其应用于日本收集的数据,以证明其有效性。所提出的模型是使用基于长短时记忆 (LSTM) 网络的神经网络架构构建的。该模型由多路径 LSTM 层组成,这些层使用从开源数据中获得的时间序列气象数据和公共流动性数据进行训练。该模型使用不同的时间框架进行了测试,并将结果与谷歌云的预测进行了比较。公共流动性是估计新阳性病例的主要因素,而气象数据则提高了其准确性。该模型在主要地区的平均相对误差范围为 16.1%至 22.6%,与谷歌云预测相比有显著提高。该模型可用于以可行的方式提供 COVID-19 大流行发病率风险的公众意识。