Deep Learning-Based CAD System for COVID-19 Diagnosis via Spectral-Temporal Images

Omneya Attallah
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引用次数: 11

Abstract

The diagnosis of COVID-19 and understanding the condition of the patients who have critical responses is crucial to stop the rapid propagation of such disease. Consequently, diminishing adverse impacts that affected various industrial divisions, especially healthcare. Deep learning methods have proven their great capabilities in studying and analyzing computed tomography (CT) images containing COVID-19. Most related studies utilized the spatial information of CT images to train deep learning models. Nevertheless, training these models with spatial-temporal images could enhance diagnostic accuracy. This paper proposes a computer-assisted diagnostic (CAD) system for COVID-19 diagnosis using three deep learning models trained with spectral-temporal images. First, it uses the multilevel discrete wavelet transform (DWT) to analyze the original CT images and obtain the spectral-temporal images. Then, it uses these images from different DWT levels to train three ResNets deep learning models. Afterward, for each ResNet trained with images of each DWT level, it extracts deep features. Next, for each ResNet, it fuses these deep features and then uses a feature selection approach to reduce their dimension. Finally, support vector machine (SVM) classifiers are used to perform classification. The performance of the proposed CAD proves that training ResNets with spectral-temporal images is better than using CT images. Also, the fusion and feature selection steps have enhanced the diagnostic accuracy, thus the proposed CAD could be employed to help radiologists in COVID-19 inspection.
基于深度学习的COVID-19频谱-时间图像诊断CAD系统
COVID-19的诊断和了解出现关键反应的患者的病情对于阻止这种疾病的快速传播至关重要。因此,减少对各个工业部门,特别是医疗保健部门的不利影响。深度学习方法在研究和分析包含新冠病毒的计算机断层扫描(CT)图像方面已经证明了强大的能力。大多数相关研究利用CT图像的空间信息来训练深度学习模型。然而,用时空图像训练这些模型可以提高诊断的准确性。本文提出了一种基于谱时图像训练的三种深度学习模型的新型冠状病毒诊断计算机辅助诊断(CAD)系统。首先,利用多层离散小波变换(DWT)对原始CT图像进行分析,得到时域光谱图像;然后,它使用这些来自不同DWT级别的图像来训练三个ResNets深度学习模型。然后,对于每个用DWT级别的图像训练的ResNet,它提取深度特征。接下来,对于每个ResNet,它融合这些深度特征,然后使用特征选择方法降低它们的维数。最后,利用支持向量机(SVM)分类器进行分类。所提出的CAD的性能证明了用光谱时间图像训练ResNets比用CT图像训练ResNets效果更好。此外,融合和特征选择步骤提高了诊断的准确性,因此所提出的CAD可以用于帮助放射科医生进行COVID-19检查。
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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