Bargshady Ghazal, Zhou Xujuan, Barua Prabal Datta, Gururajan Raj, Li Yuefeng, Acharya U Rajendra
School of Business, University of Southern Queensland, 37 Sinnathamby Blvd, Springfield Central, QLD 4300, Australia.
School of Computer Science, Queensland University of Technology, Australia.
Pattern Recognit Lett. 2022 Jan;153:67-74. doi: 10.1016/j.patrec.2021.11.020. Epub 2021 Dec 3.
Coronavirus (which is also known as COVID-19) is severely impacting the wellness and lives of many across the globe. There are several methods currently to detect and monitor the progress of the disease such as radiological image from patients' chests, measuring the symptoms and applying polymerase chain reaction (RT-PCR) test. X-ray imaging is one of the popular techniques used to visualise the impact of the virus on the lungs. Although manual detection of this disease using radiology images is more popular, it can be time-consuming, and is prone to human errors. Hence, automated detection of lung pathologies due to COVID-19 utilising deep learning (Bowles et al.) techniques can assist with yielding accurate results for huge databases. Large volumes of data are needed to achieve generalizable DL models; however, there are very few public databases available for detecting COVID-19 disease pathologies automatically. Standard data augmentation method can be used to enhance the models' generalizability. In this research, the Extensive COVID-19 X-ray and CT Chest Images Dataset has been used and generative adversarial network (GAN) coupled with trained, semi-supervised CycleGAN (SSA- CycleGAN) has been applied to augment the training dataset. Then a newly designed and finetuned Inception V3 transfer learning model has been developed to train the algorithm for detecting COVID-19 pandemic. The obtained results from the proposed Inception-CycleGAN model indicated Accuracy = 94.2%, Area under Curve = 92.2%, Mean Squared Error = 0.27, Mean Absolute Error = 0.16. The developed Inception-CycleGAN framework is ready to be tested with further COVID-19 X-Ray images of the chest.
冠状病毒(也称为COVID-19)正在严重影响全球许多人的健康和生活。目前有几种方法来检测和监测该疾病的进展,例如患者胸部的放射影像、测量症状以及应用聚合酶链反应(RT-PCR)检测。X射线成像是用于可视化病毒对肺部影响的常用技术之一。虽然使用放射影像手动检测这种疾病更为普遍,但它可能耗时且容易出现人为错误。因此,利用深度学习(鲍尔斯等人)技术自动检测COVID-19引起的肺部病变,有助于为庞大的数据库得出准确结果。要实现可推广的深度学习模型需要大量数据;然而,可用于自动检测COVID-19疾病病变的公共数据库非常少。标准的数据增强方法可用于提高模型的可推广性。在本研究中,使用了广泛的COVID-19 X射线和胸部CT图像数据集,并应用生成对抗网络(GAN)与经过训练的半监督循环生成对抗网络(SSA-CycleGAN)相结合来扩充训练数据集。然后开发了一种新设计并经过微调的Inception V3迁移学习模型,用于训练检测COVID-19大流行的算法。所提出的Inception-CycleGAN模型获得的结果表明,准确率=94.2%,曲线下面积=92.2%,均方误差=0.27,平均绝对误差=0.16。所开发的Inception-CycleGAN框架准备好使用更多的COVID-19胸部X射线图像进行测试。