Selected article for: "accuracy performance and machine learning application"

Author: Mendels, David-A.; Dortet, Laurent; Emeraud, Cécile; Oueslati, Saoussen; Girlich, Delphine; Ronat, Jean-Baptiste; Bernabeu, Sandrine; Bahi, Silvestre; Atkinson, Gary J. H.; Naas, Thierry
Title: Using artificial intelligence to improve COVID-19 rapid diagnostic test result interpretation
  • Cord-id: tm65klz5
  • Document date: 2021_3_23
  • ID: tm65klz5
    Snippet: Serological rapid diagnostic tests (RDTs) are widely used across pathologies, often providing users a simple, binary result (positive or negative) in as little as 5 to 20 min. Since the beginning of the COVID-19 pandemic, new RDTs for identifying SARS-CoV-2 have rapidly proliferated. However, these seemingly easy-to-read tests can be highly subjective, and interpretations of the visible “bands” of color that appear (or not) in a test window may vary between users, test models, and brands. We
    Document: Serological rapid diagnostic tests (RDTs) are widely used across pathologies, often providing users a simple, binary result (positive or negative) in as little as 5 to 20 min. Since the beginning of the COVID-19 pandemic, new RDTs for identifying SARS-CoV-2 have rapidly proliferated. However, these seemingly easy-to-read tests can be highly subjective, and interpretations of the visible “bands” of color that appear (or not) in a test window may vary between users, test models, and brands. We developed and evaluated the accuracy/performance of a smartphone application (xRCovid) that uses machine learning to classify SARS-CoV-2 serological RDT results and reduce reading ambiguities. Across 11 COVID-19 RDT models, the app yielded 99.3% precision compared to reading by eye. Using the app replaces the uncertainty from visual RDT interpretation with a smaller uncertainty of the image classifier, thereby increasing confidence of clinicians and laboratory staff when using RDTs, and creating opportunities for patient self-testing.

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