| Literature DB >> 36064368 |
Nicole S Struck1,2, Eva Lorenz3,4,5, Christina Deschermeier6, Daniel Eibach3,4, Jenny Kettenbeil3, Wibke Loag3, Steven A Brieger7, Anna M Ginsbach3, Christian Obirikorang8,9, Oumou Maiga-Ascofare3,8, Yaw Adu Sarkodie10, Eric Ebenezer Amprofi Boham8,9, Evans Asamoah Adu8, Gracelyn Asare8, Amos Amoako-Adusei8, Alfred Yawson11, Alexander Owusu Boakye8,9, James Deke8,10, Nana Safi Almoustapha8, Louis Adu-Amoah8,9, Ibrahim Kwaku Duah8, Thierry A Ouedraogo12, Valentin Boudo12, Ben Rushton6, Christa Ehmen6, Daniela Fusco3,4, Leonard Gunga3, Dominik Benke3, Yannick Höppner3, Zaraniaina Tahiry Rasolojaona13, Tahinamandranto Rasamoelina13, Rivo A Rakotoarivelo14, Raphael Rakotozandrindrainy15, Boubacar Coulibaly4,12, Ali Sié4,12,16, Anthony Afum-Adjei Awuah8,9, John H Amuasi3,8,17, Aurélia Souares4,16, Jürgen May3,4,18.
Abstract
BACKGROUND: The current COVID-19 pandemic affects the entire world population and has serious health, economic and social consequences. Assessing the prevalence of COVID-19 through population-based serological surveys is essential to monitor the progression of the epidemic, especially in African countries where the extent of SARS-CoV-2 spread remains unclear.Entities:
Keywords: Bayesian model; Population-based; SARS-CoV-2; Seroprevalence; Sub-Saharan Africa
Mesh:
Substances:
Year: 2022 PMID: 36064368 PMCID: PMC9441841 DOI: 10.1186/s12889-022-13918-y
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 4.135
Demographic characteristics of the participants in the final sample of 2,163 study participants
| 03.02.2021 – 11.03.2021 | 02.02.2021 – 13.03.2021 | 26.02.2021 – 18.06.2021 | 17.02.2021 – 10.05.2021 | |
| 650 | 655 | 697 | 538 | |
| 645 | 654 | 676 | 459 | |
| 627 | 522 | 674 | 340 | |
| % female | 318 / 627 (50·7%) | 276 / 522 (52·9%) | 308 / 674 (45·7%) | 137 / 340 (40·3%) |
| 10 – 19, male | 101 / 627 (16·1%) | 41 / 522 (7·9%) | 97 / 674 (14·4%) | 30 / 340 (8·8%) |
| 10 – 19, female | 107 / 627 (17·1%) | 61 / 522 (11·7%) | 83 / 674 (12·3%) | 32 / 340 (9·4%) |
| 20 – 44, male | 153 / 627 (24·4%) | 145 / 522 (27·8%) | 187 / 674 (27·7%) | 53 / 340 (15·6%) |
| 20 – 44, female | 159 / 627 (25·4%) | 156 / 522 (29·9%) | 156 / 674 (23·2%) | 107 / 340 (31·5%) |
| ≥ 45, male | 55 / 627 (8·8%) | 60 / 522 (11·5%) | 82 / 674 (12·2%) | 54 / 340 (15·9%) |
| ≥ 45, female | 52 / 627 (8·3%) | 59 / 522 (11·3%) | 69 / 674 (10·2%) | 64 / 340 ( 18·8%) |
n Nominator of individuals in each stratum, N Denominator of individuals in each stratum
f1Discrepancy between households that consented to participate and those who were considered for analyses is explained by ID mismatches
f2Information on age is missing for 2 participants in Bobo-Dioulasso and 4 individuals in Kumasi and was replaced by random draws of the approximate age distribution (right-skewed log normal distribution) in the remaining participants
Fig. 1Overview of sampled area and serological status of study participants
Crude seropositivity and testing for acute infection
| n/N (%) | n/N (%) | n/N (%) | n/N (%) | |
|---|---|---|---|---|
| 317 / 627 (50·6)f1 | 170 / 522 (32·6)f2 | 253 / 674 (37·5)f3 | 131 / 340 (38·8)f4 | |
| 611 / 627 (97·4) | 493 / 522 (94·4) | 655 / 674 (97·2) | 322 / 340 (94·7) | |
| 16 / 627 (2·6) | 29 / 522 (5·6) | 19 / 674 (2·8) | 18/340 (5·3) | |
| 2 / 16 (12·5) | 1 / 29 (3·5) | 4 / 19 (21·1) | 2/18 (11·1) |
n N, sample size
f1Of the remaining tested participants, 6 (1·0%) had an undefined and 304 (48·5%) a negative serological result
f2Of the remaining tested participants, 6 (1·2%) had an undefined and 346 (66·3%) a negative serological result
f3Of the remaining tested participants, 1 (0·2%) had an undefined and 420 (62·3%) a negative serological result
f4Of the remaining tested participants, 13 (3·8%) had an undefined and 196 (57·7%) a negative serological result
Fig. 2Crude seropositivity and tests performed to assess acute infection with respective result
Fig. 3Estimated test-adjusted seroprevalence based on a Bayesian logistic regression model with post-stratification on age and sex of the population and administrative areas within each study region. Abbreviations: n, number of individuals in each site; Pos., positive; CrI, Credible Interval