Department of Epidemiology, University of Michigan School of Public Health, Ann Arbor, MI 48109;
Department of Epidemiology, University of Michigan School of Public Health, Ann Arbor, MI 48109.
Proc Natl Acad Sci U S A. 2020 Nov 10;117(45):28506-28514. doi: 10.1073/pnas.2011529117. Epub 2020 Oct 26.
The United States experienced historically high numbers of measles cases in 2019, despite achieving national measles vaccination rates above the World Health Organization recommendation of 95% coverage with two doses. Since the COVID-19 pandemic began, resulting in suspension of many clinical preventive services, pediatric vaccination rates in the United States have fallen precipitously, dramatically increasing risk of measles resurgence. Previous research has shown that measles outbreaks in high-coverage contexts are driven by spatial clustering of nonvaccination, which decreases local immunity below the herd immunity threshold. However, little is known about how to best conduct surveillance and target interventions to detect and address these high-risk areas, and most vaccination data are reported at the state-level-a resolution too coarse to detect community-level clustering of nonvaccination characteristic of recent outbreaks. In this paper, we perform a series of computational experiments to assess the impact of clustered nonvaccination on outbreak potential and magnitude of bias in predicting disease risk posed by measuring vaccination rates at coarse spatial scales. We find that, when nonvaccination is locally clustered, reporting aggregate data at the state- or county-level can result in substantial underestimates of outbreak risk. The COVID-19 pandemic has shone a bright light on the weaknesses in US infectious disease surveillance and a broader gap in our understanding of how to best use detailed spatial data to interrupt and control infectious disease transmission. Our research clearly outlines that finer-scale vaccination data should be collected to prevent a return to endemic measles transmission in the United States.
2019 年,美国麻疹病例数量创历史新高,尽管全国麻疹疫苗接种率达到世界卫生组织建议的两剂接种率 95%以上。自 COVID-19 大流行开始以来,许多临床预防服务暂停,导致美国儿科疫苗接种率急剧下降,麻疹疫情死灰复燃的风险显著增加。先前的研究表明,高覆盖率背景下的麻疹疫情是由非疫苗接种的空间聚集驱动的,这会降低局部免疫力,使其低于群体免疫阈值。然而,对于如何最好地进行监测和针对性干预以发现和解决这些高风险地区,人们知之甚少,而且大多数疫苗接种数据都是在州一级报告的,这种分辨率太低,无法检测到最近疫情中具有非疫苗接种特征的社区级聚集。在本文中,我们进行了一系列计算实验,以评估聚集性非疫苗接种对爆发潜力的影响,以及在粗空间尺度上测量疫苗接种率来预测疾病风险时存在的偏差程度。我们发现,当非疫苗接种在局部聚集时,按州或县一级报告汇总数据可能会导致对疫情风险的严重低估。COVID-19 大流行清楚地揭示了美国传染病监测的弱点,以及我们在如何最好地利用详细的空间数据来中断和控制传染病传播方面的理解差距。我们的研究明确指出,应收集更精细的疫苗接种数据,以防止美国麻疹再次传播。