Department of Sociology, University at Albany, State University of New York, 1400 Washington Avenue, Albany, NY, 12222, USA.
Department of Sociology, School of Humanities and Social Science of Xi'an Jiaotong University, Xi'an, Shaanxi Province, China.
J Urban Health. 2022 Jun;99(3):582-593. doi: 10.1007/s11524-022-00639-1. Epub 2022 May 31.
To examine how sociodemographic characteristics and non-pharmaceutical interventions affect the transmission of COVID-19, we analyze patient profiles and contact tracing data from almost all cases in an outbreak in Shijiazhuang, China, from January to February 2021. Because of universal testing and digital tracing, the data are of high quality. Results from negative binomial models indicate that the counts of close contacts and secondary infections vary with the cases' age and occupation. Notably, cases under age 18 are causing an increased infection rate among their close contacts and leading to more within-neighborhood secondary infections than adults aged 18-49. Also, county-wide interventions and lockdown are found to be effective at containing the spread of COVID-19. These measures can reduce the number of close contacts that each case has and largely restrict the remaining infections to the case's neighborhood. These results suggest that transmission risks of COVID-19 are associated with the case's sociodemographic characteristics and can be reduced with interventions at the county level. Implications on mitigation measures and reopening plans are discussed.
为了研究社会人口特征和非药物干预如何影响 COVID-19 的传播,我们分析了 2021 年 1 月至 2 月中国石家庄暴发疫情期间几乎所有病例的患者特征和接触者追踪数据。由于普遍的检测和数字化追踪,这些数据质量很高。负二项式模型的结果表明,密切接触者和二次感染的数量随病例的年龄和职业而变化。值得注意的是,18 岁以下的病例会导致其密切接触者的感染率增加,并导致更多的邻里间二次感染,而 18-49 岁的成年人则没有。此外,还发现全县范围的干预和封锁措施有效地控制了 COVID-19 的传播。这些措施可以减少每个病例的密切接触者数量,并将剩余的感染主要限制在病例的邻里范围内。这些结果表明,COVID-19 的传播风险与病例的社会人口特征有关,可以通过县级干预措施来降低。讨论了减轻措施和重新开放计划的影响。