基于x线图像分类的COVID-19检测

Kavya Garlapati, N. Kota, Yasaswini Swarna Mondreti, Preethi Gutha, Aswathy K. Nair
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引用次数: 6

摘要

新冠肺炎疫情发源于中国,蔓延至世界各地,成为一场毁灭性的大流行。由于病例激增和用于检测的药品供应短缺,COVID-19的检测已成为医疗部门的一项关键任务。考虑到其紧迫性,需要一种即时辅助自动检测系统来早期诊断疾病,并帮助受影响的患者得到即时治疗。在这项工作中,我们旨在提出一种基于肺部x射线图像的自动检测系统,因为放射摄影模式是一种有前途的快速诊断方法。在这项工作中,我们建立了一个机器学习模型,考虑了从2000张公开数据集中获取的x射线图像。从图像中提取相关特征建立模型,然后对x射线图像进行适当的分割。x射线图像容易受到噪声和空间混叠的影响,导致边界难以区分,因此需要对图像进行适当的分割,对不同的分割技术进行了全面的验证,其中Sobel展示了准确的结果,不仅在检测边缘方面有效,而且在去除图像内部噪声方面也很好。将预处理后的图像输入到支持向量机(SVM)模型中,分类准确率达到99.17%,预测新冠肺炎与其他肺部疾病的准确率、召回率和F1分数分别达到99.24%、98.13%和98.68%。利用优势。该模型可以帮助医务人员,可用于个人的初步筛选。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of COVID-19 Using X-ray Image Classification
COVID 19 disease rooted in China, spread across other parts of the world and became a devastating pandemic. The detection of COVID-19 has become a crucial task in the medical sector because of the soaring cases and the paucity of pharmaceutical supplies for detection. Considering the urgency, an immediate auxiliary automatic detection system is required for early diagnosis of the disease and helps the affected patients to be under immediate care. In this work, we aimed to propose an automatic detection system based on lung X-ray images, as radiography modalities is a promising way of faster diagnosis. In this work, we built a machine learning model considering X-ray images taken from publicly available data sets of 2000 images. The relevant features from the images were taken for building the model, prior that proper segmentation was applied to the X-ray images. The X-ray images are prone to noise and spatial aliasing which leads the boundary to be indistinguishable, so proper image segmentation is required Comprehensive validation has been performed on different segmentation techniques, among those, Sobel demonstrated an accurate result, which is not only effective in detecting edges but also good in removing noises within the image. Further, the preprocessed image is fed to a support vector machine (SVM) model, which accomplished the maximum classification accuracy of 99.17%, also SVM achieved precision, recall, and F1 score of 99.24%,98.13%,98.68% respectively in predicting the COVID-19 versus other pulmonary diseases. Taking the advantage. the model can be helpful to medical persons that can be used as an initial screening of individuals.
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