Wang Zhijin, Cai Bing
Computer Engineering College, Jimei University, Yinjiang Road 185, Xiamen, 361021 China.
Appl Intell (Dordr). 2022;52(1):595-606. doi: 10.1007/s10489-021-02391-6. Epub 2021 May 7.
Predicting the number of COVID-19 cases in a geographical area is important for the management of health resources and decision making. Several methods have been proposed for COVID-19 case predictions but they have important limitations in terms of model interpretability, related to COVID-19's incubation period and major trends of disease transmission. To be able to explain prediction results in terms of incubation period and transmission trends, this paper presents the Multivariate Shapelet Learning (MSL) model to learn shapelets from historical observations in multiple areas. An experimental evaluation was done to compare the prediction performance of eleven algorithms, using the data collected from 50 US provinces/states. Results show that the proposed method is effective and efficient. The learned shapelets explain increasing and decreasing trends of new confirmed cases, and reveal that the COVID-19 incubation period in the USA is around 28 days.
预测某一地理区域内的新冠病毒疾病(COVID-19)病例数量对于卫生资源管理和决策至关重要。针对COVID-19病例预测已提出了多种方法,但在模型可解释性方面存在重大局限性,这与COVID-19的潜伏期和疾病传播的主要趋势有关。为了能够根据潜伏期和传播趋势解释预测结果,本文提出了多变量形状let学习(MSL)模型,以便从多个地区的历史观测数据中学习形状let。利用从美国50个州收集的数据,进行了一项实验评估,以比较11种算法的预测性能。结果表明,所提出的方法是有效且高效的。所学习到的形状let解释了新确诊病例的增减趋势,并揭示了美国COVID-19的潜伏期约为28天。