Detection and counting of Leishmania intracellular parasites in microscopy images

Leishmaniasis is a disease caused by protozoan parasites of the genus and has a high prevalence and impact on global health. Currently, the available drugs for its treatment have drawbacks, such as high toxicity, resistance of the parasite, and high cost. Therefore, the search for new, more effectiv...

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Veröffentlicht in:Frontiers in medical technology 2024, Vol.6, p.1360280
Hauptverfasser: Portuondo-Mallet, Lariza María de la Caridad, Mollineda-Diogo, Niurka, Orozco-Morales, Rubén, Lorenzo-Ginori, Juan Valentín
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Sprache:eng
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Zusammenfassung:Leishmaniasis is a disease caused by protozoan parasites of the genus and has a high prevalence and impact on global health. Currently, the available drugs for its treatment have drawbacks, such as high toxicity, resistance of the parasite, and high cost. Therefore, the search for new, more effective, and safe drugs is a priority. The effectiveness of an anti-leishmanial drug is analyzed through studies in which a technician manually counts the intracellular form of the parasite (amastigote) within macrophages, which is slow, laborious, and prone to errors. To develop a computational system that facilitates the detection and counting of amastigotes in microscopy images obtained from studies using image processing techniques. Segmentation of objects in the microscope image that might be amastigotes was performed using the multilevel Otsu method on the saturation component of the color model. In addition, morphological operations and the watershed transform combined with the weighted external distance transform were used to separate clustered objects. Then positive (amastigote) objects were detected (and consequently counted) using a classifier algorithm, the selection of which as well as the definition of the features to be used were also part of this research. MATLAB was used for the development of the system. The results were evaluated in terms of sensitivity, precision, and the F-measure and suggested a favorable effectiveness of the proposed method. This system can help researchers by allowing large volumes of images of amastigotes to be counted using an automatic image analysis technique.
ISSN:2673-3129
2673-3129
DOI:10.3389/fmedt.2024.1360280