Login / Signup

Machine learning to support visual auditing of home-based lateral flow immunoassay self-test results for SARS-CoV-2 antibodies.

Nathan C K WongSepehr MeshkinfamfardValérian TurbéMatthew WhitakerMaya MosheAlessia BardanzelluTianhong DaiEduardo PignatelliWendy S BarclayAra DarziPaul ElliottHelen WardReiko J TanakaGraham S CookeRachel A McKendryChristina J AtchisonAnil A Bharath
Published in: Communications medicine (2022)
Given the potential for LFIAs to be used at scale in the COVID-19 response (for both antibody and antigen testing), even a small improvement in the accuracy of the algorithms could impact the lives of millions of people by reducing the risk of false-positive and false-negative result read-outs by members of the public. Our findings support the use of machine learning-enabled automated reading of at-home antibody lateral flow tests as a tool for improved accuracy for population-level community surveillance.
Keyphrases