Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.

Bibliographic Details
Main Author: ASLAN, Emrah
Publication Date: 2025
Format: Article
Language: eng
Source: ITEGAM-JETIA
Download full: https://itegam-jetia.org/journal/index.php/jetia/article/view/1392
Summary: This study emphasizes that early diagnosis and treatment of malaria is critical in reducing health problems and mortality from the disease, especially in developing countries where the disease is prevalent. Malaria is a potentially fatal disease transmitted to humans by mosquitoes infected by a blood parasite called Plasmodium. The traditional method of diagnosis relies on experts examining red blood cells under a microscope and is inefficient as it is dependent on expert knowledge and experience. Nowadays, machine learning methods that provide high accuracy are increasingly used in disease detection. In this paper, a Convolutional Neural Network (CNN) architecture is proposed to distinguish between parasitized and non-parasitized cells. In addition, the performance of the proposed CNN architecture is compared to pre-trained CNN models such as VGG-19 and EfficientNetB3. The studies were carried out using the Malaria Dataset supplied by the National Institute of Health (NIH), and our proposed architecture was shown to function with 99.12% accuracy. The results of the study reveal that it is effective in improving the accuracy of cell images containing Plasmodium. In addition, a software that predicts whether cell images are noisy or not has been developed.
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spelling Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.This study emphasizes that early diagnosis and treatment of malaria is critical in reducing health problems and mortality from the disease, especially in developing countries where the disease is prevalent. Malaria is a potentially fatal disease transmitted to humans by mosquitoes infected by a blood parasite called Plasmodium. The traditional method of diagnosis relies on experts examining red blood cells under a microscope and is inefficient as it is dependent on expert knowledge and experience. Nowadays, machine learning methods that provide high accuracy are increasingly used in disease detection. In this paper, a Convolutional Neural Network (CNN) architecture is proposed to distinguish between parasitized and non-parasitized cells. In addition, the performance of the proposed CNN architecture is compared to pre-trained CNN models such as VGG-19 and EfficientNetB3. The studies were carried out using the Malaria Dataset supplied by the National Institute of Health (NIH), and our proposed architecture was shown to function with 99.12% accuracy. The results of the study reveal that it is effective in improving the accuracy of cell images containing Plasmodium. In addition, a software that predicts whether cell images are noisy or not has been developed.ITEGAM - Instituto de Tecnologia e Educação Galileo da Amazônia2025-01-29info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionPeer-reviewed Articleapplication/pdfhttps://itegam-jetia.org/journal/index.php/jetia/article/view/139210.5935/jetia.v11i51.1392ITEGAM-JETIA; v.11 n.51 2025; 35-42ITEGAM-JETIA; v.11 n.51 2025; 35-42ITEGAM-JETIA; v.11 n.51 2025; 35-422447-022810.5935/jetia.v11i51reponame:ITEGAM-JETIAinstname:Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM)instacron:ITEGAMenghttps://itegam-jetia.org/journal/index.php/jetia/article/view/1392/943Copyright (c) 2025 ITEGAM-JETIAinfo:eu-repo/semantics/openAccessASLAN, Emrah2025-03-05T15:36:39Zoai:ojs.itegam-jetia.org:article/1392Revistahttps://itegam-jetia.org/journal/index.php/jetiaPRIhttps://itegam-jetia.org/journal/index.php/jetia/oaieditor@itegam-jetia.orgopendoar:2025-03-05T15:36:39ITEGAM-JETIA - Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM)false
dc.title.none.fl_str_mv Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
title Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
spellingShingle Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
ASLAN, Emrah
title_short Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
title_full Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
title_fullStr Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
title_full_unstemmed Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
title_sort Development of malaria diagnosis with convolutional neural network architectures: a CNN-based software for accurate cell image analysis.
author ASLAN, Emrah
author_facet ASLAN, Emrah
author_role author
dc.contributor.author.fl_str_mv ASLAN, Emrah
description This study emphasizes that early diagnosis and treatment of malaria is critical in reducing health problems and mortality from the disease, especially in developing countries where the disease is prevalent. Malaria is a potentially fatal disease transmitted to humans by mosquitoes infected by a blood parasite called Plasmodium. The traditional method of diagnosis relies on experts examining red blood cells under a microscope and is inefficient as it is dependent on expert knowledge and experience. Nowadays, machine learning methods that provide high accuracy are increasingly used in disease detection. In this paper, a Convolutional Neural Network (CNN) architecture is proposed to distinguish between parasitized and non-parasitized cells. In addition, the performance of the proposed CNN architecture is compared to pre-trained CNN models such as VGG-19 and EfficientNetB3. The studies were carried out using the Malaria Dataset supplied by the National Institute of Health (NIH), and our proposed architecture was shown to function with 99.12% accuracy. The results of the study reveal that it is effective in improving the accuracy of cell images containing Plasmodium. In addition, a software that predicts whether cell images are noisy or not has been developed.
publishDate 2025
dc.date.none.fl_str_mv 2025-01-29
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Peer-reviewed Article
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://itegam-jetia.org/journal/index.php/jetia/article/view/1392
10.5935/jetia.v11i51.1392
url https://itegam-jetia.org/journal/index.php/jetia/article/view/1392
identifier_str_mv 10.5935/jetia.v11i51.1392
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv https://itegam-jetia.org/journal/index.php/jetia/article/view/1392/943
dc.rights.driver.fl_str_mv Copyright (c) 2025 ITEGAM-JETIA
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2025 ITEGAM-JETIA
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv ITEGAM - Instituto de Tecnologia e Educação Galileo da Amazônia
publisher.none.fl_str_mv ITEGAM - Instituto de Tecnologia e Educação Galileo da Amazônia
dc.source.none.fl_str_mv ITEGAM-JETIA; v.11 n.51 2025; 35-42
ITEGAM-JETIA; v.11 n.51 2025; 35-42
ITEGAM-JETIA; v.11 n.51 2025; 35-42
2447-0228
10.5935/jetia.v11i51
reponame:ITEGAM-JETIA
instname:Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM)
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instname_str Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM)
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institution ITEGAM
reponame_str ITEGAM-JETIA
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repository.name.fl_str_mv ITEGAM-JETIA - Instituto de Tecnologia e Educação Galileo da Amazônia (ITEGAM)
repository.mail.fl_str_mv editor@itegam-jetia.org
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