Razzaque Abdur, Huda Tarique Mohammad Nurul, Chowdhury Razib, Haq Md Ahsanul, Sarker Protim, Akhtar Evana, Billah Md Arif, Islam Mohammad Zahirul, Hoque Dewan Md Emdadul, Ahmed Shehlina, Ahmed Yasmin H, Tofail Fahmida, Raqib Rubhana
Health System and Population Studies Division, International Centre for Diarrhoeal Disease Research, Bangladesh (icddr,b), Dhaka 1212, Bangladesh.
Department of Public Health, College of Public Health and Health Informatics, Qassim University, Al Bukairiyah 52741, Saudi Arabia.
Healthcare (Basel). 2023 May 16;11(10):1444. doi: 10.3390/healthcare11101444.
To examine the levels and socio-demographic differentials of: (a) reported COVID-like symptoms; and (b) seroprevalence data matched with COVID-like symptoms.
Survey data of reported COVID-like symptoms and seroprevalence were assessed by Roche Elecsys Anti-SARS-CoV-2 immunoassay. Survey data of 10,050 individuals for COVID-like symptoms and seroprevalence data of 3205 individuals matched with COVID-like symptoms were analyzed using bivariate and multivariate logistic analysis.
The odds of COVID-like symptoms were significantly higher for Chattogram city, for non-slum, people having longer years of schooling, working class, income-affected households, while for households with higher income had lower odd. The odds of matched seroprevalence and COVID-like symptoms were higher for non-slum, people having longer years of schooling, and for working class. Out of the seropositive cases, 37.77% were symptomatic-seropositive, and 62.23% were asymptomatic, while out of seronegative cases, 68.96% had no COVID-like symptoms.
Collecting community-based seroprevalence data is important to assess the extent of exposure and to initiate mitigation and awareness programs to reduce COVID-19 burden.
研究以下方面的水平及社会人口统计学差异:(a)报告的新冠样症状;(b)与新冠样症状匹配的血清流行率数据。
通过罗氏电化学发光法抗SARS-CoV-2免疫测定评估报告的新冠样症状和血清流行率的调查数据。使用双变量和多变量逻辑分析对10,050名个体的新冠样症状调查数据以及3205名与新冠样症状匹配个体的血清流行率数据进行分析。
吉大港城市、非贫民窟地区、受教育年限较长者、工人阶级、受收入影响家庭的人群出现新冠样症状的几率显著更高,而高收入家庭出现该症状的几率较低。非贫民窟地区、受教育年限较长者以及工人阶级出现血清流行率与新冠样症状匹配的几率更高。在血清阳性病例中,37.77%为有症状血清阳性,62.23%为无症状;而在血清阴性病例中,68.96%没有新冠样症状。
收集基于社区的血清流行率数据对于评估接触程度以及启动缓解和提高认识计划以减轻新冠疫情负担至关重要。