Field evaluation of the diagnostic performance of EasyScan GO: a digital malaria microscopy device based on machine-learning
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...
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