Chest X-ray Image Classification for COVID-19 diagnoses

Endra Yuliawan, Shofwatul Uyun
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Abstract

Background: Radiologists used chest radiographs to detect coronavirus disease 2019 (COVID-19) in patients and determine the severity levels. The COVID-19 cases were grouped into five classes, each receiving different treatments. An intelligent system is needed to advance the detection and identify vector features of X-ray images with a quality that is too poor to be read by radiologists. Deep learning is an intelligent system that can be used in this case. Objective: The current study compares the classification and accuracy of detection methods with two, three dan five classes. Methods: Deep learning can classify visual geometry group VGG 19 architectures with 1000 classes. The classification of the five classes' convolutional neural network (CNN) underwent model validation with a confusion matrix to produce accuracy and class values. The system could then diagnose patients’ examinations by radiology specialists. Results: The results of the five-class method showed 98% accuracy, the three-class method showed 99.99%, and the two-class showed 99.99%. Conclusion: It can be concluded that using the VGG 19 model is effective. This system can classify and diagnose viruses in patients to assist radiologists by reading the images.   Keywords: COVID-19, CNN, Classification, Deep Learning
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胸部x线图像分类诊断COVID-19
背景:放射科医生使用胸部x线片检测患者的冠状病毒病2019 (COVID-19)并确定严重程度。将新冠肺炎病例分为五类,每一类接受不同的治疗。需要一个智能系统来推进x射线图像的检测和识别矢量特征,这些图像的质量太差,放射科医生无法读取。深度学习是一个可以在这种情况下使用的智能系统。目的:比较二类、三类、五类检测方法的分类和准确率。方法:采用深度学习方法对视觉几何组VGG 19个结构进行1000类分类。对五类卷积神经网络(CNN)进行分类,用混淆矩阵进行模型验证,得到准确率和类值。然后,该系统可以通过放射科专家对患者的检查进行诊断。结果:五类法的准确度为98%,三类法的准确度为99.99%,两类法的准确度为99.99%。结论:采用VGG - 19模型是有效的。该系统可以对患者的病毒进行分类和诊断,通过读取图像来辅助放射科医生。关键词:COVID-19, CNN,分类,深度学习
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