Graduate School of Global Environmental Studies, Sophia University, Tokyo, Japan.
Chubu Institute for Advanced Studies, Chubu University, Kasugai, Japan.
Front Public Health. 2022 Aug 3;10:911336. doi: 10.3389/fpubh.2022.911336. eCollection 2022.
Coronavirus disease (COVID-19) rapidly spread from Wuhan, China to other parts of China and other regions/countries around the world, resulting in a pandemic due to large populations moving through the massive transport hubs connecting all regions of China railways and a major international airport. COVID-19 will remain a threat until safe and effective vaccines and antiviral drugs have been developed, distributed, and administered on a global scale. Thus, there is urgent need to establish effective implementation of preemptive non-pharmaceutical interventions for appropriate prevention and control strategies, and predicting future COVID-19 cases is required to monitor and control the issue.
This study attempts to utilize a three-layer graph convolutional network (GCN) model to predict future COVID-19 cases in 190 regions and countries using COVID-19 case data, commercial flight route data, and digital maps of public transportation in terms of transnational human mobility. We compared the performance of the proposed GCN model to a multilayer perceptron (MLP) model on a dataset of COVID-19 cases (excluding the graph representation). The prediction performance of the models was evaluated using the mean squared error.
Our results demonstrate that the proposed GCN model can achieve better graph utilization and performance compared to the baseline in terms of both prediction accuracy and stability.
The proposed GCN model is a useful means to predict COVID-19 cases at regional and national levels. Such predictions can be used to facilitate public health solutions in public health responses to the COVID-19 pandemic using deep learning and data pooling. In addition, the proposed GCN model may help public health policymakers in decision making in terms of epidemic prevention and control strategies.
冠状病毒病(COVID-19)迅速从中国武汉传播到中国其他地区以及世界其他地区/国家,由于大量人口通过连接中国各地的大规模交通枢纽(铁路和一个主要国际机场)流动,导致疫情大流行。在全球范围内安全有效地开发、分发和使用疫苗和抗病毒药物之前,COVID-19 将继续构成威胁。因此,迫切需要建立有效的预先非药物干预措施,以实施适当的预防和控制策略,并且需要预测未来的 COVID-19 病例,以进行监测和控制。
本研究试图利用三层图卷积网络(GCN)模型,根据跨国人口流动,使用 COVID-19 病例数据、商业航班航线数据和公共交通数字地图,预测 190 个地区和国家的未来 COVID-19 病例。我们比较了所提出的 GCN 模型和多层感知器(MLP)模型在 COVID-19 病例数据集(不包括图形表示)上的性能。使用均方误差评估模型的预测性能。
我们的结果表明,与基线相比,所提出的 GCN 模型在预测准确性和稳定性方面都可以更好地利用和表现图形。
所提出的 GCN 模型是一种有用的方法,可以在区域和国家层面预测 COVID-19 病例。这些预测可以用于通过深度学习和数据共享来促进公共卫生应对 COVID-19 大流行的公共卫生解决方案。此外,所提出的 GCN 模型可能有助于公共卫生政策制定者在疫情防控策略方面做出决策。