Mathematical Sciences, School of Science, RMIT University, Melbourne, Australia.
Dyson School of Design Engineering, Imperial College London, London, UK.
J R Soc Interface. 2024 Sep;21(218):20240299. doi: 10.1098/rsif.2024.0299. Epub 2024 Sep 18.
Vaccination campaigns have both direct and indirect effects that act to control an infectious disease as it spreads through a population. Indirect effects arise when vaccinated individuals block disease transmission in any infection chain they are part of, and this in turn can benefit both vaccinated and unvaccinated individuals. Indirect effects are difficult to quantify in practice but, in this article, working with the susceptible-infected-recovered (SIR) model, they are analytically calculated in important cases, through pivoting on the final size formula for epidemics. Their relationship to herd immunity is also clarified. The analysis allows us to identify the important distinction between quantifying the indirect effects of vaccination at the 'population level' versus the 'per capita' level, which often results in radically different conclusions. As an example, our analysis unpacks why the population-level indirect effect can appear significantly larger than its per capita analogue. In addition, we consider a recently proposed epidemiological non-pharmaceutical intervention (by the means of recovered individuals) used over the COVID-19 pandemic, referred to as 'shielding', and study its impact on our mathematical analysis. The shielding scheme is extended to take advantage of vaccination including imperfect vaccination.
疫苗接种活动具有直接和间接的影响,可以控制传染病在人群中的传播。当接种疫苗的个体阻止他们所参与的任何感染链中的疾病传播时,就会产生间接影响,这反过来又会使接种疫苗和未接种疫苗的个体受益。间接影响在实践中很难量化,但在本文中,通过利用易感-感染-恢复(SIR)模型,我们在重要情况下通过对流行病的最终规模公式进行枢轴运算,对其进行了分析计算。还澄清了它们与群体免疫的关系。该分析使我们能够确定在“人群水平”与“人均水平”上量化疫苗接种间接效应的重要区别,这通常会导致截然不同的结论。例如,我们的分析阐明了为什么人群水平的间接效应可能明显大于其人均类似物的原因。此外,我们还考虑了最近在 COVID-19 大流行期间提出的一种名为“屏蔽”的基于恢复个体的流行病学非药物干预措施,并研究了其对我们数学分析的影响。该屏蔽方案得到了扩展,可以利用疫苗接种,包括不完善的疫苗接种。