02419nas a2200229 4500000000100000008004100001260001600042653002900058653002000087653004200107653002100149653001100170100001200181700001300193700001300206700001400219245010900233856008700342490000800429520173800437022001402175 2025 d bElsevier BV10aLeishmaniasis, Cutaneous10aComputer vision10aArtificial intelligence in healthcare10aDiagnostic tools10aYOLOv81 aGadri S1 aBounab S1 aBenazi N1 aZerouak F00aA new diagnostic method and tool for cutaneous leishmaniasis based on artificial intelligence techniques uhttps://www.sciencedirect.com/science/article/abs/pii/S001048252500664X?via%3Dihub0 v1923 a
Cutaneous leishmaniasis (CL) is a parasitic disease caused by protozoan parasites of the genus Leishmania, leading to significant morbidity in endemic regions. While effective, traditional diagnostic methods often suffer from limitations such as the requirement for specialized expertise and prolonged processing times. Artificial intelligence (AI) methodologies have recently emerged to enhance CL's diagnostic accuracy and efficiency.
This project aims to develop and make available to biologists a new, rapid, more efficient, and more precise cutaneous leishmaniasis diagnosis method and tool based on the latest techniques of artificial intelligence AI and computer vision (CV).
We used a deep learning model (YOLO 8) to detect Leishmania parasite bodies in microscopic images; we trained the model on microscopic images collected at the Algerian Pasteur Institute, Annex of M'sila. We implemented the proposed model on a mobile application to validate its performance.
YOLO v8's application to the detection of Leishmania parasite bodies in microscopic images gives a high accuracy of 97 % over the entire test dataset.
This research demonstrated the significant potential of AI-based object detection models, particularly YOLOv8, for accurately detecting Leishmania parasites in microscopic images. The obtained results pave the way for promising clinical applications and further research in this field.
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