Department of Electrical and Computer Engineering, Carnegie Mellon University, Pittsburgh, Pennsylvania 15213, USA.
Department of Electrical and Computer Engineering, Princeton University, Princeton, New Jersey 08544, USA.
Phys Rev E. 2023 Jul;108(1-1):014306. doi: 10.1103/PhysRevE.108.014306.
Masks have remained an important mitigation strategy in the fight against COVID-19 due to their ability to prevent the transmission of respiratory droplets between individuals. In this work, we provide a comprehensive quantitative analysis of the impact of mask-wearing. To this end, we propose a novel agent-based model of viral spread on networks where agents may either wear no mask or wear one of several types of masks with different properties (e.g., cloth or surgical). We derive analytical expressions for three key epidemiological quantities: The probability of emergence, the epidemic threshold, and the expected epidemic size. In particular, we show how the aforementioned quantities depend on the structure of the contact network, viral transmission dynamics, and the distribution of the different types of masks within the population. Through extensive simulations, we then investigate the impact of different allocations of masks within the population and tradeoffs between the outward efficiency and inward efficiency of the masks. Interestingly, we find that masks with high outward efficiency and low inward efficiency are most useful for controlling the spread in the early stages of an epidemic, while masks with high inward efficiency but low outward efficiency are most useful in reducing the size of an already large spread. Last, we study whether degree-based mask allocation is more effective in reducing the probability of epidemic as well as epidemic size compared to random allocation. The result echoes the previous findings that mitigation strategies should differ based on the stage of the spreading process, focusing on source control before the epidemic emerges and on self-protection after the emergence.
由于口罩能够阻止个体之间呼吸道飞沫的传播,因此它一直是抗击 COVID-19 的重要缓解策略。在这项工作中,我们对戴口罩的影响进行了全面的定量分析。为此,我们提出了一种新的基于代理的病毒传播网络模型,其中代理可以不戴口罩,也可以戴几种具有不同特性的口罩(例如布口罩或外科口罩)。我们推导出了三个关键的流行病学数量的解析表达式:出现概率、流行病阈值和预期流行病规模。特别是,我们展示了上述数量如何取决于接触网络的结构、病毒传播动力学以及人口中不同类型口罩的分布。然后,我们通过广泛的模拟研究了人口中不同口罩分配的影响以及口罩外向效率和内向效率之间的权衡。有趣的是,我们发现具有高外向效率和低内向效率的口罩在传染病早期传播阶段最有用,而具有高内向效率但低外向效率的口罩在已经大规模传播的情况下最有用。最后,我们研究了基于度数的口罩分配是否比随机分配更能有效降低传染病的概率和规模。结果与之前的发现相呼应,即缓解策略应根据传播过程的阶段而有所不同,重点是在传染病出现之前进行源头控制,在传染病出现之后进行自我保护。