利用血细胞图像识别和分类诊断疟疾

H. M. Bilal
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引用次数: 0

摘要

机器学习是人工智能的一个子领域,专注于开发能够从可用数据中学习而不需要持续编程的智能算法,使它们能够根据当前场景适应不同的环境。这些算法对于做出明智的决策和进行彻底的分析以发现隐藏在数据中的复杂模式至关重要。本研究使用多种机器学习分类算法,明确地基于包含寄生虫感染和未感染疟疾样本的输入图像来分析患者数据。人工智能技术被用来测量图像中寄生虫的存在。该图像分类系统旨在通过生成与颜色、纹理、细胞和寄生虫几何形状相关的图像特征来准确识别血液图像中的疟疾寄生虫。采用Weka提供的基于SVM(支持向量机)的分类器对感染和未感染的血液图像进行区分。通过大量的实验,确定SVM策略具有显著的相关性,在疟疾基本诊断中交叉验证准确率达到99.4%。这一发现在帮助临床医生准确诊断感染方面具有很大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification and Classification for Diagnosis of Malaria Disease using Blood Cell Images
Machine Learning is a subfield of artificial intelligence that focuses on developing intelligent algorithms capable of learning from available data without requiring constant programming, enabling them to adapt to different environments based on current scenarios. These algorithms are crucial in making intelligent decisions and conducting thorough analyses to uncover intricate patterns concealed within the data. This study used multiple machine-learning classification algorithms to analyze patients' data based explicitly on input images containing parasite-infected and uninfected Malaria samples. AI techniques were utilised to measure the presence of parasites in the images. The image classification system was designed to accurately identify malaria parasites in blood images by generating image features related to color, texture, and cell and parasite geometry. A classifier based on SVM (Support Vector Machine) provided by Weka was employed to differentiate between parasite-infected and non-infected blood images. Through extensive experimentation, it was determined that SVM strategies exhibited significant relevance, achieving a cross-validation accuracy of 99.4% in the basic diagnosis of malaria fever. This finding holds great potential in assisting clinicians with accurate infection diagnoses.
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