Litcius/Paper detail

A deep learning based architecture for malaria parasite detection

Yousef Alraba’nah, Wael Toghuj

2023Bulletin of Electrical Engineering and Informatics30 citationsDOIOpen Access PDF

Abstract

During last decade, medical imaging has attracted great deal of research interests. Deep learning applications has revolutionized medical image analysis and diseases diagnosis. Convolutional neural networks (CNNs)-a class of deep learning-have been widely used for classification and feature extraction, and they revealed good performance for various imaging applications. However, despite the advances in medicine, malaria remains among the world’s deadliest diseases. Only in 2020, malaria recorded 241 million clinical episodes, and 627,000 deaths. The disease is examined visually through a microscope, which depends on the pathologists experience and skills and results may vary in different laboratories. This paper proposes an efficient CNN architecture that could be used in diagnosing of malaria disease. By processing on 27,558 red blood smear cell images with balanced samples of parasitized and unparasitized cells on a publicly available malaria dataset from the National Institute of Health, the proposed model achieves high accuracy rate with 99.8%, 98.2, and 97.7% for training, validation and testing sets. Furthermore, the statistical results approve that the proposed model is outperforming the state-of-the-art models.

Topics & Concepts

MalariaConvolutional neural networkDeep learningArtificial intelligenceComputer scienceFeature extractionMachine learningDiagnosis of malariaMedical imagingFeature (linguistics)Pattern recognition (psychology)MedicinePathologyPlasmodium falciparumLinguisticsPhilosophyDigital Imaging for Blood DiseasesCOVID-19 diagnosis using AISmart Agriculture and AI