Covid19 Identification from Chest X-ray Images using Machine Learning Classifiers with GLCM Features

Q4 Computer Science
Sudeep D. Thepade, S. Bang, P. Chaudhari, M. Dindorkar
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引用次数: 10

Abstract

From staying quarantined at home, practicing work from home to moving outside wearing masks and carrying sanitizers, every individual has now become so adaptive to so called ‘New Normal’ post series of lockdowns across the countries. The situation triggered by novel Coronavirus has changed the behaviour of every individual towards every other living as well as non-living entity. In the Wuhan city of China, multiple cases were reported of pneumonia caused due to unknown reasons. The concerned medical authorities confirmed the cause to be Coronavirus. The symptoms seen in these cases were not much different than those seen in case of pneumonia. Earlier the research has been carried out in the field of pneumonia identification and classification through X-ray images of chest. The difficulty in identifying Covid19 infection at initial stage is due to high resemblance of its symptoms with the infection caused due to pneumonia. Hence it is trivial to well distinguish cases of coronavirus from pneumonia that may help in saving life of patients. The paper uses chest X-ray images to identify Covid19 infection in lungs using machine learning classifiers and ensembles with Gray-Level Cooccurrence Matrix (GLCM) features. The advocated methodology extracts statistical texture features from X-ray images by computing a GLCM for each image. The matrix is computed by considering various stride combinations. These GLCM features are used to train the machine learning classifiers and ensembles. The paper explores both the multiclass classification (X-ray images are classified into one of the three classes namely Covid19 affected, Pneumonia affected and normal lungs) and binary classification (Covid19 affected and other). The dataset used for evaluating performance of the method is open sourced and can be accessed easily. Proposed method being simple and computationally effective achieves noteworthy performance in terms of Accuracy, F-Measure, MCC, PPV and Sensitivity. In sum, the best stride combination of GLCM and ensemble of machine learning classifiers is suggested as vital outcome of the proposed method for effective Covid19 identification from chest X-ray images
使用具有GLCM特征的机器学习分类器从胸部x射线图像中识别covid - 19
从在家隔离、在家练习工作,到戴着口罩、携带消毒液外出,每个人现在都已经适应了各国一系列封锁后所谓的“新常态”。新型冠状病毒引发的局势改变了每个人对其他生物和非生物实体的行为。中国武汉市报告了多例不明原因肺炎病例。有关医疗部门确认病因为冠状病毒。这些病例的症状与肺炎病例的症状没有太大区别。早期的研究已经在通过胸部x射线图像进行肺炎的识别和分类领域进行了。新冠肺炎的症状与肺炎引起的感染非常相似,因此在初期很难确诊。因此,区分冠状病毒和肺炎是微不足道的,这可能有助于挽救患者的生命。本文利用胸部x射线图像,利用具有灰度协同矩阵(GLCM)特征的机器学习分类器和集合来识别肺部的covid - 19感染。该方法通过计算每个图像的GLCM来提取x射线图像的统计纹理特征。通过考虑不同步幅组合来计算矩阵。这些GLCM特征用于训练机器学习分类器和集成器。本文探讨了多类分类(将x线图像分为covid - 19感染、肺炎感染和正常肺三类之一)和二元分类(covid - 19感染和其他)。用于评估该方法性能的数据集是开源的,可以很容易地访问。该方法简单、计算有效,在精度、F-Measure、MCC、PPV和灵敏度方面均取得了显著的性能。总之,GLCM和机器学习分类器集成的最佳跨步组合被认为是从胸部x射线图像中有效识别covid - 19的重要结果
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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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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