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Microscopic Image Segmentation to Quantification of Leishmania Infection in Macrophages
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The determination of infection rate parameter from in vitro macrophages infected by Leishmania amastigotes is fundamental in the study of vaccine candidates and new drugs for the treatment of leishmaniasis. The conventional method that consists in the amastigotes count inside macrophages, normally is done by a trained microscope technician, which is liable to misinterpretation and sampling. The objective of this work is to develop a method for the segmentation of images to enable the automatic calculation of the infection rate by amastigotes. Segmentation is based on mathematical morphology in the context of a computer vision system. The results obtained by computer vision system presents a 95% accuracy in comparison to the conventional method. Therefore, the proposed method can contribute to the speed and accuracy of analysis of infection rate, minimizing errors from the traditional methods, especially in situations where exhaustive repetitions of the procedure are required from the technician.
Fronteiras: Journal of Social, Technological and Environmental Science
Guilherme Coelho
Arlindo Rodrigues Galvão Filho
Rafael Viana-de-Carvalho
Gustavo Teodoro-Laureano
Samyra Almeida-da-Silveira
Clebio Eleutério-da-Silva
Rosa Maria Plácido Pereira
Anderson da Silva Soares
Telma Woerle de Lima Soares
Adriano Gomes-da-Silva
Hamilton Barbosa Napolitano
Clarimar José Coelho
Title: Microscopic Image Segmentation to Quantification of Leishmania Infection in Macrophages
Description:
The determination of infection rate parameter from in vitro macrophages infected by Leishmania amastigotes is fundamental in the study of vaccine candidates and new drugs for the treatment of leishmaniasis.
The conventional method that consists in the amastigotes count inside macrophages, normally is done by a trained microscope technician, which is liable to misinterpretation and sampling.
The objective of this work is to develop a method for the segmentation of images to enable the automatic calculation of the infection rate by amastigotes.
Segmentation is based on mathematical morphology in the context of a computer vision system.
The results obtained by computer vision system presents a 95% accuracy in comparison to the conventional method.
Therefore, the proposed method can contribute to the speed and accuracy of analysis of infection rate, minimizing errors from the traditional methods, especially in situations where exhaustive repetitions of the procedure are required from the technician.
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