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基于卷积神经网络的胸部 X 光片 COVID-19 感染多分类检测

Multiclass Classification for Detection of COVID-19 Infection in Chest X-Rays Using CNN.

机构信息

Department of Artificial Intelligence, Industrial Innovation & Robotics Center, Faculty of Computers and Information Technology, University of Tabuk, Tabuk City, Saudi Arabia.

Department of Computer Science and Engineering, Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences (Deemed to be University), Chennai, Tamilnadu, India.

出版信息

Comput Intell Neurosci. 2022 Aug 11;2022:3289809. doi: 10.1155/2022/3289809. eCollection 2022.

DOI:10.1155/2022/3289809
PMID:35965768
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9372515/
Abstract

Coronavirus took the world by surprise and caused a lot of trouble in all the important fields in life. The complexity of dealing with coronavirus lies in the fact that it is highly infectious and is a novel virus which is hard to detect with exact precision. The typical detection method for COVID-19 infection is the RT-PCR but it is a rather expensive method which is also invasive and has a high margin of error. Radiographies are a good alternative for COVID-19 detection given the experience of the radiologist and his learning capabilities. To make an accurate detection from chest X-Rays, deep learning technologies can be involved to analyze the radiographs, learn distinctive patterns of coronavirus' presence, find these patterns in the tested radiograph, and determine whether the sample is actually COVID-19 positive or negative. In this study, we propose a model based on deep learning technology using Convolutional Neural Networks and training it on a dataset containing a total of over 35,000 chest X-Ray images, nearly 16,000 for COVID-19 positive images, 15,000 for normal images, and 5,000 for pneumonia-positive images. The model's performance was assessed in terms of accuracy, precision, recall, and 1-score, and it achieved 99% accuracy, 0.98 precision, 1.02 recall, and 99.0% 1-score, thus outperforming other deep learning models from other studies.

摘要

冠状病毒令全球猝不及防,在生活的各个重要领域都造成了很多麻烦。应对冠状病毒的复杂性在于它具有高度传染性,而且是一种新型病毒,难以准确检测。COVID-19 感染的典型检测方法是 RT-PCR,但这是一种相对昂贵的方法,具有侵入性且误差率较高。鉴于放射科医生的经验和学习能力,放射学是 COVID-19 检测的一种很好的替代方法。为了从胸部 X 光片中进行准确检测,可以使用深度学习技术来分析 X 光片,学习冠状病毒存在的独特模式,在测试的 X 光片中找到这些模式,并确定样本是否实际上 COVID-19 呈阳性或阴性。在这项研究中,我们提出了一种基于深度学习技术的模型,使用卷积神经网络,并在包含总共超过 35000 张胸部 X 光图像的数据集上进行训练,其中近 16000 张是 COVID-19 阳性图像,15000 张是正常图像,5000 张是肺炎阳性图像。该模型的性能通过准确性、精度、召回率和 1 分进行评估,它达到了 99%的准确性、0.98 的精度、1.02 的召回率和 99.0%的 1 分,因此优于其他来自其他研究的深度学习模型。

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Chest X-ray Classification for the Detection of COVID-19 Using Deep Learning Techniques.基于深度学习技术的 COVID-19 检测用胸部 X 光分类。
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