Shaheed Kashif, Abbas Qaisar, Hussain Ayyaz, Qureshi Imran
Department of Multimedia Systems, Faculty of Electronics, Telecommunication and Informatics, Gdansk University of Technology, 80-233 Gdansk, Poland.
College of Computer and Information Sciences, Imam Mohammad Ibn Saud Islamic University (IMSIU), Riyadh 11432, Saudi Arabia.
Diagnostics (Basel). 2023 Aug 3;13(15):2583. doi: 10.3390/diagnostics13152583.
Computed tomography (CT) scans, or radiographic images, were used to aid in the early diagnosis of patients and detect normal and abnormal lung function in the human chest. However, the diagnosis of lungs infected with coronavirus disease 2019 (COVID-19) was made more accurately from CT scan data than from a swab test. This study uses human chest radiography pictures to identify and categorize normal lungs, lung opacities, COVID-19-infected lungs, and viral pneumonia (often called pneumonia). In the past, several CAD systems using image processing, ML/DL, and other forms of machine learning have been developed. However, those CAD systems did not provide a general solution, required huge hyper-parameters, and were computationally inefficient to process huge datasets. Moreover, the DL models required high computational complexity, which requires a huge memory cost, and the complexity of the experimental materials' backgrounds, which makes it difficult to train an efficient model. To address these issues, we developed the Inception module, which was improved to recognize and detect four classes of Chest X-ray in this research by substituting the original convolutions with an architecture based on modified-Xception (m-Xception). In addition, the model incorporates depth-separable convolution layers within the convolution layer, interlinked by linear residuals. The model's training utilized a two-stage transfer learning process to produce an effective model. Finally, we used the XgBoost classifier to recognize multiple classes of chest X-rays. To evaluate the m-Xception model, the 1095 dataset was converted using a data augmentation technique into 48,000 X-ray images, including 12,000 normal, 12,000 pneumonia, 12,000 COVID-19 images, and 12,000 lung opacity images. To balance these classes, we used a data augmentation technique. Using public datasets with three distinct train-test divisions (80-20%, 70-30%, and 60-40%) to evaluate our work, we attained an average of 96.5% accuracy, 96% F1 score, 96% recall, and 96% precision. A comparative analysis demonstrates that the m-Xception method outperforms comparable existing methods. The results of the experiments indicate that the proposed approach is intended to assist radiologists in better diagnosing different lung diseases.
计算机断层扫描(CT)或射线图像被用于辅助患者的早期诊断,并检测人体胸部的正常和异常肺功能。然而,根据CT扫描数据对感染2019冠状病毒病(COVID-19)的肺部进行诊断比通过拭子检测更为准确。本研究使用人体胸部X光片来识别和分类正常肺部、肺混浊、感染COVID-19的肺部以及病毒性肺炎(通常称为肺炎)。过去,已经开发了几种使用图像处理、机器学习/深度学习(ML/DL)和其他形式机器学习的计算机辅助诊断(CAD)系统。然而,这些CAD系统没有提供通用解决方案,需要大量超参数,并且在处理海量数据集时计算效率低下。此外,深度学习模型需要很高的计算复杂度,这需要巨大的内存成本,以及实验材料背景的复杂性,这使得训练一个高效的模型变得困难。为了解决这些问题,我们开发了Inception模块,在本研究中通过用基于改进的深度可分离卷积神经网络(m-Xception)架构替换原始卷积来改进该模块,以识别和检测四类胸部X光片。此外,该模型在卷积层中纳入了深度可分离卷积层,并通过线性残差相互连接。该模型的训练采用两阶段迁移学习过程以生成一个有效的模型。最后,我们使用XgBoost分类器来识别多类胸部X光片。为了评估m-Xception模型,利用数据增强技术将1095个数据集转换为48000张X光图像,包括12000张正常图像、12000张肺炎图像、12000张COVID-19图像和12000张肺混浊图像。为了平衡这些类别,我们使用了数据增强技术。使用具有三种不同训练-测试划分(80-20%、70-30%和60-40%)的公共数据集来评估我们的工作,我们平均获得了96.5%的准确率、96%的F1分数、96%的召回率和96%的精确率。对比分析表明,m-Xception方法优于现有的同类方法。实验结果表明,所提出的方法旨在帮助放射科医生更好地诊断不同的肺部疾病。