Department of Chemical System Engineering, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo, 113-8656, Japan.
Sci Rep. 2021 Aug 12;11(1):16416. doi: 10.1038/s41598-021-95617-z.
Coronavirus disease 2019 (COVID-19) has spread throughout the world. The prediction of the number of cases has become essential to governments' ability to define policies and take countermeasures in advance. The numbers of cases have been estimated using compartment models of infectious diseases such as the susceptible-infected-removed (SIR) model and its derived models. However, the required use of hypothetical future values for parameters, such as the effective reproduction number or infection rate, increases the uncertainty of the prediction results. Here, we describe our model for forecasting future COVID-19 cases based on observed data by considering the time delay (t). We used machine learning to estimate the future infection rate based on real-time mobility, temperature, and relative humidity. We then used this calculation with the susceptible-exposed-infectious-removed (SEIR) model to forecast future cases with less uncertainty. The results suggest that changes in mobility affect observed infection rates with 5-10 days of time delay. This window should be accounted for in the decision-making phase especially during periods with predicted infection surges. Our prediction model helps governments and medical institutions to take targeted early countermeasures at critical decision points regarding mobility to avoid significant levels of infection rise.
新型冠状病毒肺炎(COVID-19)已在全球范围内蔓延。预测病例数量对于政府提前制定政策和采取对策的能力至关重要。使用传染病的房室模型(如易感-感染-清除(SIR)模型及其衍生模型)来估计病例数。然而,需要对有效繁殖数或感染率等参数使用假设的未来值,这增加了预测结果的不确定性。在这里,我们描述了一种基于观察数据的未来 COVID-19 病例预测模型,该模型考虑了时间延迟(t)。我们使用机器学习根据实时移动性、温度和相对湿度来估计未来的感染率。然后,我们使用这个计算结果与易感-暴露-感染-清除(SEIR)模型结合,以减少不确定性来预测未来的病例数。结果表明,移动性的变化会导致观察到的感染率出现 5-10 天的时间延迟。在决策阶段,特别是在预测感染激增期间,应考虑到这个时间窗口。我们的预测模型有助于政府和医疗机构在移动性方面的关键决策点采取有针对性的早期对策,以避免出现严重的感染率上升。