Author
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Author 1
Sikandar Ali
University of Swat, Swat 01923, Pakistan
Summary
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IECE Contributions

Open Access | Research Article | 16 February 2025
Leveraging Machine Learning and Deep Learning for Advanced Malaria Detection Through Blood Cell Images
IECE Journal of Image Analysis and Processing | Volume 1, Issue 1: 17-26, 2025 | DOI:10.62762/JIAP.2025.514726
Abstract
Malaria remains a significant global health challenge, causing hundreds of thousands of deaths annually, particularly in tropical and subtropical regions. This study proposes an advanced automated approach for malaria detection by classifying red blood cell images using machine learning and deep learning techniques. Three distinct models: Logistic Regression (LR), Support Vector Machine (SVM), and Inception-V3 were implemented and rigorously evaluated on a dataset comprising 27,558 cell images. The LR model achieved an accuracy of 65.38%, while SVM demonstrated improved classification performance with an accuracy of 84%. The deep learning-based Inception-V3 model outperformed both, achieving... More >

Graphical Abstract
Leveraging Machine Learning and Deep Learning for Advanced Malaria Detection Through Blood Cell Images