Journal ArticleOpen Access
Field evaluation of the diagnostic performance of EasyScan GO: a digital malaria microscopy device based on machine-learning
Author Affiliations
University of Geneva, University of Oxford, Worldwide Veterinary Service, Infectious Diseases Data Observatory, ...
Published InMalaria Journal
Year2022
Citations53
Abstract
BACKGROUND: Microscopic examination of Giemsa-stained blood films remains the reference standard for malaria parasite detection and quantification, but is undermined by difficulties in ensuring high-quality manual reading and inter-reader reliability. Automated parasite detection and quantification may address this issue. METHODS: A multi-centre, observational study was conducted during 2018 and 2019 at 11 sites to assess the performance of the EasyScan Go, a microscopy device employing machine-learning-based image analysis. Sensitivity, specificity, accuracy of species detection and parasite density estimation were assessed with expert microscopy as the reference. Intra- and inter-device reliability of the device was also evaluated by comparing results from repeat reads on the same and two different devices. This study has been reported in accordance with the Standards for…
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