Applications of deep learning in disease diagnosis of chest radiographs: A survey on materials and methods

Sudipta Modak , Esam Abdel-Raheem , Luis Rueda
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引用次数: 1

Abstract

Recent advances in deep learning have given rise to high performance in image analysis operations in healthcare. Lung diseases are of particular interest, as most can be identified using non-invasive image modalities. Deep learning techniques such as convolutional neural networks, convolution autoencoders, and graph convolutional networks have been implemented in several pulmonary disease identification applications, e.g., lung nodule classification, Covid-19, and pneumonia detection. Various sources of medical images such as X-rays, computed tomography scans, magnetic resonance imaging, and positron emission tomography scans make deep learning techniques favorable to identify lung diseases with great accuracy. This paper discusses state-of-the-art methods that use deep learning on various medical imaging modalities to detect and classify diseases in the lungs. A description of a few publicly available databases is included in this study, along with some distinct deep learning techniques developed in recent times. Furthermore, several challenges and open research areas for pulmonary disease diagnosis using deep learning are discussed. The objective of this work is to direct researchers in the field of diagnosis of lung diseases.

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深度学习在胸部X线片疾病诊断中的应用:材料和方法综述
深度学习的最新进展为医疗保健领域的图像分析操作带来了高性能。肺部疾病是特别感兴趣的,因为大多数可以使用非侵入性图像模式识别。卷积神经网络、卷积自编码器和图卷积网络等深度学习技术已经在几种肺部疾病识别应用中实现,例如肺结节分类、Covid-19和肺炎检测。各种医学图像来源,如x射线、计算机断层扫描、磁共振成像和正电子发射断层扫描,使得深度学习技术有利于非常准确地识别肺部疾病。本文讨论了在各种医学成像模式上使用深度学习来检测和分类肺部疾病的最新方法。本研究包括对几个公开可用数据库的描述,以及近年来开发的一些独特的深度学习技术。此外,还讨论了利用深度学习进行肺部疾病诊断的几个挑战和开放的研究领域。这项工作的目的是指导研究人员在肺部疾病的诊断领域。
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Biomedical engineering advances
Biomedical engineering advances Bioengineering, Biomedical Engineering
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59 days
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