Department of Applied Mathematics, State University of Campinas, Campinas, São Paulo, Brazil.
Division of Allergy and Immunology, General Hospital of the Medicine School of University of São Paulo, São Paulo, São Paulo, Brazil.
PLoS One. 2021 Jun 15;16(6):e0252271. doi: 10.1371/journal.pone.0252271. eCollection 2021.
Coronavirus disease 2019 (CoViD-19), with the fatality rate in elder (60 years old or more) being much higher than young (60 years old or less) patients, was declared a pandemic by the World Health Organization on March 11, 2020. A mathematical model considering young and elder subpopulations under different fatality rates was formulated based on the natural history of CoViD-19 to study the transmission of the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). The model considered susceptible, exposed, asymptomatic, pre-symptomatic, mild CoViD-19, severe CoViD-19, and recovered compartments, besides compartments of isolated individuals and those who were caught by test. This model was applied to study the epidemiological scenario resulting from the adoption of quarantine (isolation or lockdown) in many countries to control the rapid propagation of CoViD-19. We chose as examples the isolation adopted in São Paulo State (Brazil) in the early phase but not at the beginning of the epidemic, and the lockdown implemented in Spain when the number of severe CoViD-19 cases was increasing rapidly. Based on the data collected from São Paulo State and Spain, the model parameters were evaluated, and we obtained a higher estimation for the basic reproduction number R0 (9.24 for São Paulo State, and 8 for Spain) compared to the currently accepted estimation of R0 around 2 using the SEIR (susceptible, exposed, infectious, and recovered compartments) model. In comparison with the lockdown in Spain, the relatively early adoption of the isolation in São Paulo State resulted in enlarging the period of the first wave of the epidemic and delaying its peak. The model allowed to explain the flattening of the epidemic curves by quarantine when associated with the protective measures (face mask, washing hands with alcohol and gel, and social distancing) adopted by the population. The description of the epidemic under quarantine and protections can be a background to foreseen the epidemiological scenarios from the release strategies, which can help guide public health policies by decision-makers.
2019 年冠状病毒病(COVID-19),其病死率在老年人(60 岁及以上)中明显高于年轻人(60 岁以下),世界卫生组织于 2020 年 3 月 11 日宣布 COVID-19 为大流行。本研究基于 COVID-19 的自然史,建立了一个考虑不同病死率的年轻和老年亚群的数学模型,以研究严重急性呼吸综合征冠状病毒 2(SARS-CoV-2)的传播。该模型考虑了易感者、暴露者、无症状者、有症状前患者、轻症 COVID-19、重症 COVID-19 和康复者,以及隔离者和检测发现者。该模型用于研究许多国家采取检疫(隔离或封锁)措施控制 COVID-19 快速传播所产生的流行病学情况。我们选择了巴西圣保罗州在疫情早期而非初期实施的隔离,以及西班牙在重症 COVID-19 病例迅速增加时实施的封锁作为研究对象。基于从圣保罗州和西班牙收集的数据,对模型参数进行了评估,与目前接受的 SEIR(易感、暴露、感染和康复)模型中 R0 约为 2 的估计值相比,我们得到了更高的基本繁殖数 R0 估计值(圣保罗州为 9.24,西班牙为 8)。与西班牙的封锁相比,圣保罗州相对较早地采取隔离措施,延长了疫情第一波的持续时间并延迟了其高峰。模型还解释了在采取人口保护措施(戴口罩、用酒精和凝胶洗手以及保持社交距离)的情况下,通过检疫措施可以使疫情曲线变平。在隔离和保护措施下对疫情的描述,可以作为预测释放策略下的流行病学情况的背景,这可以帮助决策者指导公共卫生政策。