School of Mathematical and Statistical Sciences, The University of Texas Rio Grande Valley, Edinburg, TX, 78539, USA.
McLaughlin Centre for Population Health Risk Assessment, Faculty of Medicine, University of Ottawa, Ottawa, ON, K1N 6N5, Canada.
Sci Rep. 2021 Feb 8;11(1):3354. doi: 10.1038/s41598-021-82873-2.
The application, timing, and duration of lockdown strategies during a pandemic remain poorly quantified with regards to expected public health outcomes. Previous projection models have reached conflicting conclusions about the effect of complete lockdowns on COVID-19 outcomes. We developed a stochastic continuous-time Markov chain (CTMC) model with eight states including the environment (SEAMHQRD-V), and derived a formula for the basic reproduction number, R, for that model. Applying the [Formula: see text] formula as a function in previously-published social contact matrices from 152 countries, we produced the distribution and four categories of possible [Formula: see text] for the 152 countries and chose one country from each quarter as a representative for four social contact categories (Canada, China, Mexico, and Niger). The model was then used to predict the effects of lockdown timing in those four categories through the representative countries. The analysis for the effect of a lockdown was performed without the influence of the other control measures, like social distancing and mask wearing, to quantify its absolute effect. Hypothetical lockdown timing was shown to be the critical parameter in ameliorating pandemic peak incidence. More importantly, we found that well-timed lockdowns can split the peak of hospitalizations into two smaller distant peaks while extending the overall pandemic duration. The timing of lockdowns reveals that a "tunneling" effect on incidence can be achieved to bypass the peak and prevent pandemic caseloads from exceeding hospital capacity.
关于预期的公共卫生结果,大流行期间封锁策略的应用、时机和持续时间在很大程度上仍未得到量化。先前的预测模型对于完全封锁对 COVID-19 结果的影响得出了相互矛盾的结论。我们开发了一个具有八个状态的随机连续时间马尔可夫链 (CTMC) 模型,包括环境 (SEAMHQRD-V),并为该模型推导出了基本繁殖数 R 的公式。将 [公式:请参见文本] 公式作为来自 152 个国家的先前发布的社会接触矩阵中的函数应用,我们生成了 152 个国家的分布和 [公式:请参见文本] 的四个类别,并从每个季度选择一个国家作为四个社会接触类别的代表(加拿大、中国、墨西哥和尼日尔)。然后,使用该模型通过代表国家预测这些四个类别中锁定时间的效果。对锁定影响的分析是在没有其他控制措施(如社交距离和戴口罩)影响的情况下进行的,以量化其绝对影响。事实证明,锁定时间是改善大流行峰值发病率的关键参数。更重要的是,我们发现,及时锁定可以将住院高峰分成两个较小的遥远高峰,同时延长整个大流行持续时间。锁定时间揭示了发病率可以实现“隧道”效应,从而绕过高峰并防止大流行病例数超过医院容量。