Graduate School of Information Science, University of Hyogo, Kobe 650-0047, Japan.
Department of Electrical and Mechanical Engineering, Nagoya Institute of Technology, Nagoya 466-8555, Japan.
Comput Biol Med. 2022 Oct;149:105986. doi: 10.1016/j.compbiomed.2022.105986. Epub 2022 Aug 17.
Recently, a high number of daily positive COVID-19 cases have been reported in regions with relatively high vaccination rates; hence, booster vaccination has become necessary. In addition, infections caused by the different variants and correlated factors have not been discussed in depth. With large variabilities and different co-factors, it is difficult to use conventional mathematical models to forecast the incidence of COVID-19. Machine learning based on long short-term memory was applied to forecasting the time series of new daily positive cases (DPC), serious cases, hospitalized cases, and deaths. Data acquired from regions with high rates of vaccination, such as Israel, were blended with the current data of other regions in Japan such that the effect of vaccination was considered in efficient manner. The protection provided by symptomatic infection was also considered in terms of the population effectiveness of vaccination as well as the vaccination protection waning effect and ratio and infectivity of different viral variants. To represent changes in public behavior, public mobility and interactions through social media were also included in the analysis. Comparing the observed and estimated new DPC in Tel Aviv, Israel, the parameters characterizing vaccination effectiveness and the waning protection from infection were well estimated; the vaccination effectiveness of the second dose after 5 months and the third dose after two weeks from infection by the delta variant were 0.24 and 0.95, respectively. Using the extracted parameters regarding vaccination effectiveness, DPC in three major prefectures of Japan were replicated. The key factor influencing the prevention of COVID-19 transmission is the vaccination effectiveness at the population level, which considers the waning protection from vaccination rather than the percentage of fully vaccinated people. The threshold of the efficiency at the population level was estimated as 0.3 in Tel Aviv and 0.4 in Tokyo, Osaka, and Aichi. Moreover, a weighting scheme associated with infectivity results in more accurate forecasting by the infectivity model of viral variants. Results indicate that vaccination effectiveness and infectivity of viral variants are important factors in future forecasting of DPC. Moreover, this study demonstrate a feasible way to project the effect of vaccination using data obtained from other country.
最近,报告了高疫苗接种率地区大量的每日新增 COVID-19 病例;因此,加强接种成为必要。此外,不同变异株及其相关因素引起的感染尚未深入讨论。由于存在较大的变异性和不同的共同因素,使用传统的数学模型很难预测 COVID-19 的发病率。本研究基于长短期记忆的机器学习被应用于预测新的每日新增阳性病例(DPC)、严重病例、住院病例和死亡病例的时间序列。来自高疫苗接种率地区的数据,如以色列,与日本其他地区的当前数据混合,以有效地考虑疫苗接种的效果。还考虑了症状性感染的保护作用,以及疫苗接种人群效力、疫苗保护减弱效应和比例以及不同病毒变异株的传染性。为了代表公众行为的变化,还包括通过社交媒体进行的公众流动性和互动的分析。将以色列特拉维夫的观察到的和估计的新 DPC 进行比较,疫苗接种效果和感染减弱保护的特征参数估计良好;5 个月后接种第二剂和感染 delta 变异株后两周接种第三剂的疫苗接种效果分别为 0.24 和 0.95。利用提取的疫苗接种效果参数,复制了日本三个主要县的 DPC。影响 COVID-19 传播预防的关键因素是人群层面的疫苗接种效果,该效果考虑了疫苗接种保护减弱,而不是完全接种疫苗的人群百分比。人群层面效率的阈值在特拉维夫和东京、大阪和爱知分别估计为 0.3 和 0.4。此外,与传染性相关的加权方案导致通过病毒变异株的传染性模型进行更准确的预测。结果表明,疫苗接种效果和病毒变异株的传染性是未来 DPC 预测的重要因素。此外,本研究还展示了一种使用从其他国家获得的数据来预测疫苗接种效果的可行方法。