Image cropping for malaria parasite detection on heterogeneous data.

Deep learning Diagnosis Malaria Microscopic blood smear images Plasmodium ssp.

Journal

Journal of microbiological methods
ISSN: 1872-8359
Titre abrégé: J Microbiol Methods
Pays: Netherlands
ID NLM: 8306883

Informations de publication

Date de publication:
20 Aug 2024
Historique:
received: 19 03 2024
revised: 05 08 2024
accepted: 14 08 2024
medline: 23 8 2024
pubmed: 23 8 2024
entrez: 22 8 2024
Statut: aheadofprint

Résumé

Malaria is a deadly disease of significant concern for the international community. It is an infectious disease caused by a Plasmodium spp. parasite and transmitted by the bite of an infected female Anopheles mosquito. The parasite multiplies in the liver and then destroys the person's red blood cells until it reaches the severe stage, leading to death. The most used tools for diagnosing this disease are the microscope and the rapid diagnostic test (RDT), which have limitations preventing control of the disease. Computer vision technologies present alternatives by providing the means for early detection of this disease before it reaches the severe stage, facilitating treatment and saving patients. In this article, we suggest deep learning methods for earlier and more accurate detection of malaria parasites with high generalization capabilities using microscopic images of blood smears from many heterogeneous patients. These techniques are based on an image preprocessing method that mitigates some of the challenges associated with the variety of red cell characteristics due to patient diversity and other artifacts present in the data. For the study, we collected 65,970 microscopic images from 876 different patients to form a dataset of 33,007 images with a variety that enables us to create models with a high level of generalization. Three types of convolutional neural networks were used, namely Convolutional Neural Network (CNN), DenseNet, and LeNet-5, and the highest classification accuracy on the test data was 97.50% found with the DenseNet model.

Identifiants

pubmed: 39173888
pii: S0167-7012(24)00134-9
doi: 10.1016/j.mimet.2024.107022
pii:
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

107022

Informations de copyright

Copyright © 2024. Published by Elsevier B.V.

Auteurs

Ibrahim Mouazamou Laoualy Chaharou (IML)

Institut de Mathématiques et de Sciences Physiques, Dangbo, Benin; Université d'Abomey Calavi, Benin. Electronic address: ibrahim.laoualy@imspuac.org.

Ismail Lawani (I)

Faculté des Sciences de la Sante Université d'Abomey Calavi, Cotonou, Benin.

Theophile Dagba (T)

Ecole d'Economie Appliquée et de Management Université d'Abomey Calavi, Cotonou, Benin.

Jules Degila (J)

Institut de Mathématiques et de Sciences Physiques, Dangbo, Benin; Université d'Abomey Calavi, Benin.

Habiboulaye Amadou Boubacar (HA)

IA4Africa.org, Paris, France.

Classifications MeSH