Deep Learning for Malaria Diagnosis: Leveraging Convolutional Neural Networks for Accurate Parasite Detection

Widad Kadhim, Dr. Mohammed A. Taha, None Haider D. Abduljabbar
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Abstract

malaria is one of the most severe diseases worldwide. However, the current diagnostic method that involves examining blood smears under a microscope is unreliable and heavily relies on the examiner's expertise. Recent attempts to use deep-learning algorithms for malaria diagnosis have not produced satisfactory results. But, a new CNN-based machine learning model has been proposed in a research paper that can automatically detect and predict infected cells in thin blood smears with 94.63% accuracy. This model accurately accentuates the region of interest for the stained parasite in the images, which increases its reliability, transparency, and comprehensibility, making it suitable for deployment in healthcare settings.
疟疾诊断的深度学习:利用卷积神经网络进行准确的寄生虫检测
疟疾是世界上最严重的疾病之一。然而,目前的诊断方法包括在显微镜下检查血液涂片,这是不可靠的,并且严重依赖于检查人员的专业知识。最近使用深度学习算法进行疟疾诊断的尝试并没有产生令人满意的结果。但是,一篇研究论文提出了一种新的基于cnn的机器学习模型,该模型可以自动检测和预测薄血涂片中的感染细胞,准确率为94.63%。该模型准确地突出了图像中染色寄生虫感兴趣的区域,这增加了其可靠性、透明度和可理解性,使其适合在医疗保健环境中部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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