Hartvigsen Gregg, Dimitroff Yannis
Biology Department, SUNY College at Geneseo, Geneseo, New York, United States of America.
PLoS One. 2025 Jun 5;20(6):e0325129. doi: 10.1371/journal.pone.0325129. eCollection 2025.
We developed a network-based SEIRV model to test different vaccine efficacies on SARS-CoV-2 (Betacoronavirus pandemicum) dynamics in a naive population of 25,000 susceptible adults. Different vaccine efficacies, derived from data, were administered at different rates across a range of different Watts-Strogatz network structures. The model suggests that differences among vaccines were of minor importance compared to vaccination rates and network structure. Additionally, we tested the effect of strain differences in transmissibility (R0 values of 2.5 and 5.0) and found that this was the most important factor influencing the number of individuals ultimately infected. However, network structure was most important in affecting the maximum number of individuals that were infectious during the epidemic peak. The interaction of network structure, vaccination effort, and difference in strain transmissibility was highly significant for all epidemic metrics. The model suggests that differences in vaccine efficacy are not as important as vaccination rate in reducing epidemic sizes. Further, the importance of the evolution of viral transmission rates and our ability to develop effective vaccines to combat these strains will be of primary concern for our ability to control future disease epidemics.
我们开发了一种基于网络的SEIRV模型,以测试不同疫苗效力对25000名易感成年人群体中SARS-CoV-2(大流行贝塔冠状病毒)动态变化的影响。根据数据得出的不同疫苗效力,在一系列不同的瓦茨-斯托加茨网络结构中以不同速率施用。该模型表明,与疫苗接种率和网络结构相比,疫苗之间的差异不太重要。此外,我们测试了传播性方面的毒株差异(R0值分别为2.5和5.0)的影响,发现这是影响最终感染个体数量的最重要因素。然而,网络结构在影响疫情高峰期间具有传染性的个体最大数量方面最为重要。对于所有疫情指标而言,网络结构、疫苗接种努力和毒株传播性差异之间的相互作用非常显著。该模型表明,在减少疫情规模方面疫苗效力的差异不如疫苗接种率重要。此外,病毒传播率的演变以及我们开发有效疫苗来对抗这些毒株的能力的重要性,将是我们控制未来疾病流行能力的首要关注点。