Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivax

Abstract Accurate malaria diagnosis with precise identification of Plasmodium species is crucial for an effective treatment. While microscopy is still the gold standard in malaria diagnosis, it relies heavily on trained personnel. Artificial intelligence (AI) advances, particularly convolutional neu...

Full description

Saved in:
Bibliographic Details
Main Authors: Diego A. Ramos-Briceño, Alessandro Flammia-D’Aleo, Gerardo Fernández-López, Fhabián S. Carrión-Nessi, David A. Forero-Peña
Format: Article
Language:English
Published: Nature Portfolio 2025-01-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-87979-5
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832571808710131712
author Diego A. Ramos-Briceño
Alessandro Flammia-D’Aleo
Gerardo Fernández-López
Fhabián S. Carrión-Nessi
David A. Forero-Peña
author_facet Diego A. Ramos-Briceño
Alessandro Flammia-D’Aleo
Gerardo Fernández-López
Fhabián S. Carrión-Nessi
David A. Forero-Peña
author_sort Diego A. Ramos-Briceño
collection DOAJ
description Abstract Accurate malaria diagnosis with precise identification of Plasmodium species is crucial for an effective treatment. While microscopy is still the gold standard in malaria diagnosis, it relies heavily on trained personnel. Artificial intelligence (AI) advances, particularly convolutional neural networks (CNNs), have significantly improved diagnostic capabilities and accuracy by enabling the automated analysis of medical images. Previous models efficiently detected malaria parasites in red blood cells but had difficulty differentiating between species. We propose a CNN-based model for classifying cells infected by P. falciparum, P. vivax, and uninfected white blood cells from thick blood smears. Our best-performing model utilizes a seven-channel input and correctly predicted 12,876 out of 12,954 cases. We also generated a cross-validation confusion matrix that showed the results of five iterations, achieving 63,654 out of 64,126 true predictions. The model’s accuracy reached 99.51%, a precision of 99.26%, a recall of 99.26%, a specificity of 99.63%, an F1 score of 99.26%, and a loss of 2.3%. We are now developing a system based on real-world quality images to create a comprehensive detection tool for remote regions where trained microscopists are unavailable.
format Article
id doaj-art-a0ffbcaa59ab46e9801d435f8ad5d634
institution Kabale University
issn 2045-2322
language English
publishDate 2025-01-01
publisher Nature Portfolio
record_format Article
series Scientific Reports
spelling doaj-art-a0ffbcaa59ab46e9801d435f8ad5d6342025-02-02T12:17:28ZengNature PortfolioScientific Reports2045-23222025-01-0115111110.1038/s41598-025-87979-5Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivaxDiego A. Ramos-Briceño0Alessandro Flammia-D’Aleo1Gerardo Fernández-López2Fhabián S. Carrión-Nessi3David A. Forero-Peña4School of Systems Engineering, Faculty of Engineering, Universidad Metropolitana de CaracasSchool of Systems Engineering, Faculty of Engineering, Universidad Metropolitana de CaracasDepartment of Electronics and Circuits, Faculty of Engineering, Universidad Simón BolívarBiomedical Research and Therapeutic Vaccines InstituteBiomedical Research and Therapeutic Vaccines InstituteAbstract Accurate malaria diagnosis with precise identification of Plasmodium species is crucial for an effective treatment. While microscopy is still the gold standard in malaria diagnosis, it relies heavily on trained personnel. Artificial intelligence (AI) advances, particularly convolutional neural networks (CNNs), have significantly improved diagnostic capabilities and accuracy by enabling the automated analysis of medical images. Previous models efficiently detected malaria parasites in red blood cells but had difficulty differentiating between species. We propose a CNN-based model for classifying cells infected by P. falciparum, P. vivax, and uninfected white blood cells from thick blood smears. Our best-performing model utilizes a seven-channel input and correctly predicted 12,876 out of 12,954 cases. We also generated a cross-validation confusion matrix that showed the results of five iterations, achieving 63,654 out of 64,126 true predictions. The model’s accuracy reached 99.51%, a precision of 99.26%, a recall of 99.26%, a specificity of 99.63%, an F1 score of 99.26%, and a loss of 2.3%. We are now developing a system based on real-world quality images to create a comprehensive detection tool for remote regions where trained microscopists are unavailable.https://doi.org/10.1038/s41598-025-87979-5MalariaPlasmodium infectionArtificial intelligenceDeep learningNeural network modelMedical image processing
spellingShingle Diego A. Ramos-Briceño
Alessandro Flammia-D’Aleo
Gerardo Fernández-López
Fhabián S. Carrión-Nessi
David A. Forero-Peña
Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivax
Scientific Reports
Malaria
Plasmodium infection
Artificial intelligence
Deep learning
Neural network model
Medical image processing
title Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivax
title_full Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivax
title_fullStr Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivax
title_full_unstemmed Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivax
title_short Deep learning-based malaria parasite detection: convolutional neural networks model for accurate species identification of Plasmodium falciparum and Plasmodium vivax
title_sort deep learning based malaria parasite detection convolutional neural networks model for accurate species identification of plasmodium falciparum and plasmodium vivax
topic Malaria
Plasmodium infection
Artificial intelligence
Deep learning
Neural network model
Medical image processing
url https://doi.org/10.1038/s41598-025-87979-5
work_keys_str_mv AT diegoaramosbriceno deeplearningbasedmalariaparasitedetectionconvolutionalneuralnetworksmodelforaccuratespeciesidentificationofplasmodiumfalciparumandplasmodiumvivax
AT alessandroflammiadaleo deeplearningbasedmalariaparasitedetectionconvolutionalneuralnetworksmodelforaccuratespeciesidentificationofplasmodiumfalciparumandplasmodiumvivax
AT gerardofernandezlopez deeplearningbasedmalariaparasitedetectionconvolutionalneuralnetworksmodelforaccuratespeciesidentificationofplasmodiumfalciparumandplasmodiumvivax
AT fhabianscarrionnessi deeplearningbasedmalariaparasitedetectionconvolutionalneuralnetworksmodelforaccuratespeciesidentificationofplasmodiumfalciparumandplasmodiumvivax
AT davidaforeropena deeplearningbasedmalariaparasitedetectionconvolutionalneuralnetworksmodelforaccuratespeciesidentificationofplasmodiumfalciparumandplasmodiumvivax