Li Yingxue, Jia Wenxiao, Wang Junmei, Guo Jianying, Liu Qin, Li Xiang, Xie Guotong, Wang Fei
Ping An Healthcare Technology, Beijing, China.
Ping An Health Cloud Company Limited, Beijing, China.
J Healthc Inform Res. 2021;5(1):98-113. doi: 10.1007/s41666-020-00088-y. Epub 2021 Jan 6.
Countries across the world are in different stages of COVID-19 trajectory, among which many have implemented lockdown measures to prevent its spread. Although the lockdown is effective in such prevention, it may put the economy into a depression. Predicting the epidemic progression with the government switching the lockdown on or off is critical. We propose a transfer learning approach called ALeRT-COVID using attention-based recurrent neural network (RNN) architecture to predict the epidemic trends for different countries. A source model was trained on the pre-defined source countries and then transferred to each target country. The lockdown measure was introduced to our model as a predictor and the attention mechanism was utilized to learn the different contributions of the confirmed cases in the past days to the future trend. Results demonstrated that the transfer learning strategy is helpful especially for early-stage countries. By introducing the lockdown predictor and the attention mechanism, ALeRT-COVID showed a significant improvement in the prediction performance. We predicted the confirmed cases in 1 week when extending and easing lockdown separately. Our results show that lockdown measures are still necessary for several countries. We expect our research can help different countries to make better decisions on the lockdown measures.
世界各国处于新冠疫情发展的不同阶段,其中许多国家已实施封锁措施以防止疫情传播。尽管封锁在预防方面有效,但可能会使经济陷入衰退。预测政府实施或解除封锁情况下的疫情发展至关重要。我们提出一种名为ALeRT-COVID的迁移学习方法,使用基于注意力的循环神经网络(RNN)架构来预测不同国家的疫情趋势。在预定义的源国家训练一个源模型,然后将其迁移到每个目标国家。将封锁措施作为预测器引入我们的模型,并利用注意力机制来了解过去几天确诊病例对未来趋势的不同贡献。结果表明,迁移学习策略尤其对处于早期阶段的国家有帮助。通过引入封锁预测器和注意力机制,ALeRT-COVID在预测性能上有显著提升。我们分别预测了延长和放松封锁情况下1周内的确诊病例数。我们的结果表明,封锁措施对一些国家仍然是必要的。我们期望我们的研究能帮助不同国家在封锁措施上做出更好的决策。