Performance of a point of care test for detecting IgM and IgG antibodies against SARS-CoV-2 and seroprevalence in blood donors and health care workers in Panama

Author:

Villarreal AlcibiadesORCID,Rangel Giselle,Zhang Xu,Wong Digna,Britton GabrielleORCID,Fernandez Patricia L.ORCID,Pérez AmbarORCID,Oviedo Diana,Restrepo Carlos,Carreirra María B.ORCID,Sambrano DilciaORCID,Eskildsen Gilberto,De La Guardia CarolinaORCID,Zaldivar Yamitzel,Franco Danilo,López-Vergès SandraORCID,Zhang DexiORCID,Fan Fanjing,Wang Baojun,Sáez-Llorens XavierORCID,DeAntonio RodrigoORCID,Torres-Atencio IvonneORCID,Ortega-Barria EduardoORCID,Kosagisharaf RaoORCID,Lleonart RicardoORCID,Chong Li,Goodridge AmadorORCID,

Abstract

ABSTRACTNovel severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) is the etiologic agent of the ongoing coronavirus disease 2019 (COVID-19) pandemic, which has reached 28 million cases worldwide in eight months. The serological detection of antibodies against the virus will play a pivotal role in complementing molecular tests to improve diagnostic accuracy, contact tracing, vaccine efficacy testing and seroprevalence surveillance. Here, we aimed first to evaluate a lateral flow assay’s ability to identify specific IgM and IgG antibodies against SARS-CoV-2 and second, to report the seroprevalence of these antibodies among health care workers and healthy volunteer blood donors in Panama. We recruited study participants between April 30th and July 7th, 2020. For the test validation and performance evaluation, we analyzed serum samples from participants with clinical symptoms and confirmed positive RT-PCR for SARS-CoV-2, participants with other confirmed infectious diseases, and a set of pre-pandemic serum samples. We used two by two table analysis to determine the test sensitivity and specificity as well as the kappa agreement value with a 95% confidence interval. Then, we used the lateral flow assay to determine seroprevalence among serum samples from COVID-19 patients, potentially exposed health care workers, and healthy volunteer donors. Our results show this assay reached a positive percent agreement of 97.2% (95% CI 84.2-100.0%) for detecting both IgM and IgG. The assay showed a kappa of 0.898 (95%CI 0.811-0.985) and 0.918 (95% CI 0.839-0.997) for IgM and IgG, respectively. The evaluation of serum samples from hospitalized COVID-19 patients indicates a correlation between test sensitivity and the number of days since symptom onset; the highest positive percent agreement (87% (95% CI 67.0-96.3%)) was observed at ≥15 days post-symptom onset. We found an overall antibody seroprevalence of 11.6% (95% CI 8.5-15.8%) among both health care workers and healthy blood donors. Our findings suggest this lateral flow assay could contribute significantly to implementing seroprevalence testing in locations with active community transmission of SARS-CoV-2.

Publisher

Cold Spring Harbor Laboratory

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