疟疾
血涂片
人工智能
算法
计算机科学
医学
病理
作者
Emilie Guémas,Baptiste Routier,Théo Ghelfenstein-Ferreira,Camille Cordier,Sophie Hartuis,Blandine Marion,Sébastien Bertout,Emmanuelle Varlet‐Marie,Damien Costa,Grégoire Pasquier
标识
DOI:10.1128/spectrum.01440-23
摘要
Malaria remains a global health problem, with 247 million cases and 619,000 deaths in 2021. Diagnosis of Plasmodium species is important for administering the appropriate treatment. The gold-standard diagnosis for accurate species identification remains the thin blood smear. Nevertheless, this method is time-consuming and requires highly skilled and trained microscopists. To overcome these issues, new diagnostic tools based on deep learning are emerging. This study aimed to evaluate the performances of a real-time detection transformer (RT-DETR) object detection algorithm to discriminate Plasmodium species on thin blood smear images. Performances were calculated with a test data set of 4,508 images from 170 smears coming from six French university hospitals. The RT-DETR model achieved a World Health Organization (WHO) competence level 2 for species identification. Besides, the RT-DETR algorithm may be run in real-time on low-cost devices and could be suitable for deployment in low-resource setting areas.
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