COVID-19 and pneumonia diagnosis from chest X-ray images using convolutional neural networks.

IF 2 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Network Modeling and Analysis in Health Informatics and Bioinformatics Pub Date : 2023-01-01 DOI:10.1007/s13721-023-00413-6
Muhab Hariri, Ercan Avşar
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引用次数: 4

Abstract

X-ray is a useful imaging modality widely utilized for diagnosing COVID-19 virus that infected a high number of people all around the world. The manual examination of these X-ray images may cause problems especially when there is lack of medical staff. Usage of deep learning models is known to be helpful for automated diagnosis of COVID-19 from the X-ray images. However, the widely used convolutional neural network architectures typically have many layers causing them to be computationally expensive. To address these problems, this study aims to design a lightweight differential diagnosis model based on convolutional neural networks. The proposed model is designed to classify the X-ray images belonging to one of the four classes that are Healthy, COVID-19, viral pneumonia, and bacterial pneumonia. To evaluate the model performance, accuracy, precision, recall, and F1-Score were calculated. The performance of the proposed model was compared with those obtained by applying transfer learning to the widely used convolutional neural network models. The results showed that the proposed model with low number of computational layers outperforms the pre-trained benchmark models, achieving an accuracy value of 89.89% while the best pre-trained model (Efficient-Net B2) achieved accuracy of 85.7%. In conclusion, the proposed lightweight model achieved the best overall result in classifying lung diseases allowing it to be used on devices with limited computational power. On the other hand, all the models showed a poor precision on viral pneumonia class and confusion in distinguishing it from bacterial pneumonia class, thus a decrease in the overall accuracy.

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基于卷积神经网络的胸部x线图像COVID-19和肺炎诊断
x射线是一种有用的成像方式,广泛用于诊断全球感染人数众多的COVID-19病毒。人工检查这些x射线图像可能会造成问题,特别是在缺乏医务人员的情况下。据悉,使用深度学习模型有助于从x射线图像中自动诊断COVID-19。然而,广泛使用的卷积神经网络架构通常有很多层,导致它们的计算成本很高。为了解决这些问题,本研究旨在设计一个基于卷积神经网络的轻量级鉴别诊断模型。该模型旨在对属于健康、COVID-19、病毒性肺炎和细菌性肺炎四类之一的x射线图像进行分类。为了评估模型的性能,我们计算了准确率、精密度、召回率和F1-Score。将该模型的性能与将迁移学习应用于广泛使用的卷积神经网络模型所获得的性能进行了比较。结果表明,该模型计算层数较少,优于预训练的基准模型,准确率达到89.89%,而最佳预训练模型(Efficient-Net B2)准确率达到85.7%。总之,所提出的轻量级模型在肺部疾病分类方面取得了最佳的总体结果,使其能够在计算能力有限的设备上使用。另一方面,所有模型在病毒性肺炎类别上的精度较差,并且在区分病毒性肺炎类别和细菌性肺炎类别方面存在混淆,从而降低了整体准确性。
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
CiteScore
5.40
自引率
4.30%
发文量
43
期刊介绍: NetMAHIB publishes original research articles and reviews reporting how graph theory, statistics, linear algebra and machine learning techniques can be effectively used for modelling and analysis in health informatics and bioinformatics. It aims at creating a synergy between these disciplines by providing a forum for disseminating the latest developments and research findings; hence, results can be shared with readers across institutions, governments, researchers, students, and the industry. The journal emphasizes fundamental contributions on new methodologies, discoveries and techniques that have general applicability and which form the basis for network based modelling, knowledge discovery, knowledge sharing and decision support to the benefit of patients, healthcare professionals and society in traditional and advanced emerging settings, including eHealth and mHealth .
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