Research Laboratory for Nuclear Reactors, Tokyo Institute of Technology, Tokyo, Japan.
Hitachi Research Laboratory, Hitachi Ltd, Hitachi, Japan.
JMIR Public Health Surveill. 2020 Dec 16;6(4):e23624. doi: 10.2196/23624.
COVID-19 currently poses a global public health threat. Although Tokyo, Japan, is no exception to this, it was initially affected by only a small-level epidemic. Nevertheless, medical collapse nearly happened since no predictive methods were available to assess infection counts. A standard susceptible-infectious-removed (SIR) epidemiological model has been widely used, but its applicability is limited often to the early phase of an epidemic in the case of a large collective population. A full numerical simulation of the entire period from beginning until end would be helpful for understanding COVID-19 trends in (separate) counts of inpatient and infectious cases and can also aid the preparation of hospital beds and development of quarantine strategies.
This study aimed to develop an epidemiological model that considers the isolation period to simulate a comprehensive trend of the initial epidemic in Tokyo that yields separate counts of inpatient and infectious cases. It was also intended to induce important corollaries of governing equations (ie, effective reproductive number) and equations for the final count.
Time-series data related to SARS-CoV-2 from February 28 to May 23, 2020, from Tokyo and antibody testing conducted by the Japanese government were adopted for this study. A novel epidemiological model based on a discrete delay differential equation (apparent time-lag model [ATLM]) was introduced. The model can predict trends in inpatient and infectious cases in the field. Various data such as daily new confirmed cases, cumulative infections, inpatients, and PCR (polymerase chain reaction) test positivity ratios were used to verify the model. This approach also derived an alternative formulation equivalent to the standard SIR model.
In a typical parameter setting, the present ATLM provided 20% less infectious cases in the field compared to the standard SIR model prediction owing to isolation. The basic reproductive number was inferred as 2.30 under the condition that the time lag T from infection to detection and isolation is 14 days. Based on this, an adequate vaccine ratio to avoid an outbreak was evaluated for 57% of the population. We assessed the date (May 23) that the government declared a rescission of the state of emergency. Taking into consideration the number of infectious cases in the field, a date of 1 week later (May 30) would have been most effective. Furthermore, simulation results with a shorter time lag of T=7 and a larger transmission rate of α=1.43α0 suggest that infections at large should reduce by half and inpatient numbers should be similar to those of the first wave of COVID-19.
A novel mathematical model was proposed and examined using SARS-CoV-2 data for Tokyo. The simulation agreed with data from the beginning of the pandemic. Shortening the period from infection to hospitalization is effective against outbreaks without rigorous public health interventions and control.
目前,COVID-19 对全球公共卫生构成威胁。尽管日本东京也未能幸免,但最初仅受到小范围疫情的影响。然而,由于缺乏预测感染人数的方法,医疗系统险些崩溃。标准的易感-感染-清除(SIR)传染病模型已被广泛应用,但在大规模人群中,其适用性通常仅限于疫情早期。对整个时期(从开始到结束)进行全面数值模拟有助于了解(单独)住院和传染性病例的 COVID-19 趋势,并有助于准备医院床位和制定隔离策略。
本研究旨在开发一种传染病模型,该模型考虑隔离期以模拟东京初始疫情的综合趋势,产生住院和传染性病例的单独计数。还旨在引出控制方程(即有效繁殖数)和最终计数方程的重要推论。
本研究采用了 2020 年 2 月 28 日至 5 月 23 日来自东京的 SARS-CoV-2 时间序列数据和日本政府进行的抗体检测。引入了一种基于离散时滞微分方程(明显时滞模型[ATLM])的新型传染病模型。该模型可预测现场住院和传染性病例的趋势。使用各种数据,如每日新增确诊病例、累计感染病例、住院病例和聚合酶链反应(PCR)检测阳性率,对模型进行了验证。该方法还推导出了与标准 SIR 模型等效的替代公式。
在典型参数设置下,由于隔离,本研究中的 ATLM 提供的现场传染性病例数比标准 SIR 模型预测的少 20%。在感染到检测和隔离的时间滞后 T 为 14 天的条件下,推断出基本繁殖数为 2.30。在此基础上,评估了 57%的人口接种足够疫苗以避免疫情爆发的比例。我们评估了政府宣布解除紧急状态的日期(5 月 23 日)。考虑到现场的传染性病例数,5 月 30 日(一周后)将是最有效的日期。此外,T=7 的更短时间滞后和更大的传播率α=1.43α0的模拟结果表明,大规模感染应减少一半,住院人数应与 COVID-19 第一波相似。
提出了一种新的数学模型,并使用来自东京的 SARS-CoV-2 数据对其进行了检验。该模拟与大流行开始时的数据一致。缩短从感染到住院的时间可以在不进行严格的公共卫生干预和控制的情况下有效控制疫情爆发。