使用机器学习模型识别疟疾疾病

S. Kuzhaloli, S. Thenappan, Premavathi T, V. Nivedita, M. Mageshbabu, S. Navaneethan
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引用次数: 0

摘要

疟疾是由血液中的疟原虫引起的,由受感染的蚊子传播,是一种非常严重,有时甚至致命的疾病。图像分析和机器学习可以通过定量血载玻片上的寄生虫血症来增强诊断。建立一个自主、准确、有效的模型可以显著减少对训练有素的劳动力的需求。本文讨论了在血液涂片图像中寻找疟疾寄生虫的计算机辅助方法。这些步骤包括数据集的获取、图像的预处理、红细胞的分割、特征的提取和选择、图像的分类。该方法是基于众所周知的卷积神经网络(CNN)模型的疟原虫寄生虫和红细胞。训练后的CNN和VGG-19被给予来自同一数据集的感染和未感染红细胞的图像。VGG 19的检测准确率为96%,CNN的检测准确率为94%。
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Identification of Malaria Disease Using Machine Learning Models
Malaria, caused by Plasmodium parasites in the bloodstream spread by infected mosquitoes, is a highly severe and sometimes deadly disease. Image analysis and machine learning can enhance diagnosis by quantifying parasitemia on blood slides. The building of an autonomous, accurate, and effective model can significantly reduce the need for trained laborers. This article discusses computer-assisted approaches for finding malaria parasites in blood smear images. These procedures consist of obtaining the dataset, preprocessing the images, segmenting the red blood cells, extracting and choosing features, and classifying the images. The approach is based on well-known Convolutional neural network (CNN) models of Plasmodium parasites and erythrocytes. The trained CNN and VGG-19 are given images of infected and uninfected erythrocytes from the same dataset. VGG 19 gives 96% detection accuracy where CNN achieves 94%.
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