Department of Information Technology, College of Computer, Qassim University, Buraydah, Saudi Arabia.
J Xray Sci Technol. 2020;28(5):841-850. doi: 10.3233/XST-200720.
This study aims to employ the advantages of computer vision and medical image analysis to develop an automated model that has the clinical potential for early detection of novel coronavirus (COVID-19) infected disease.
This study applied transfer learning method to develop deep learning models for detecting COVID-19 disease. Three existing state-of-the-art deep learning models namely, Inception ResNetV2, InceptionNetV3 and NASNetLarge, were selected and fine-tuned to automatically detect and diagnose COVID-19 disease using chest X-ray images. A dataset involving 850 images with the confirmed COVID-19 disease, 500 images of community-acquired (non-COVID-19) pneumonia cases and 915 normal chest X-ray images was used in this study.
Among the three models, InceptionNetV3 yielded the best performance with accuracy levels of 98.63% and 99.02% with and without using data augmentation in model training, respectively. All the performed networks tend to overfitting (with high training accuracy) when data augmentation is not used, this is due to the limited amount of image data used for training and validation.
This study demonstrated that a deep transfer learning is feasible to detect COVID-19 disease automatically from chest X-ray by training the learning model with chest X-ray images mixed with COVID-19 patients, other pneumonia affected patients and people with healthy lungs, which may help doctors more effectively make their clinical decisions. The study also gives an insight to how transfer learning was used to automatically detect the COVID-19 disease. In future studies, as the amount of available dataset increases, different convolution neutral network models could be designed to achieve the goal more efficiently.
本研究旨在利用计算机视觉和医学图像分析的优势,开发一种具有临床潜力的新型冠状病毒(COVID-19)感染疾病早期检测的自动化模型。
本研究应用迁移学习方法开发用于检测 COVID-19 疾病的深度学习模型。选择并微调了三个现有的最先进的深度学习模型,即 Inception ResNetV2、InceptionNetV3 和 NASNetLarge,以便使用胸部 X 射线图像自动检测和诊断 COVID-19 疾病。本研究使用了一个包含 850 张确诊 COVID-19 疾病图像、500 张社区获得性(非 COVID-19)肺炎病例图像和 915 张正常胸部 X 射线图像的数据集。
在这三个模型中,InceptionNetV3 在不使用数据增强的情况下,在模型训练中的准确率分别为 98.63%和 99.02%,表现最佳。当不使用数据增强时,所有执行的网络都倾向于过拟合(具有较高的训练准确性),这是由于用于训练和验证的图像数据量有限。
本研究表明,通过使用包含 COVID-19 患者、其他肺炎患者和健康肺部人群的胸部 X 射线图像来训练学习模型,可以从胸部 X 射线自动检测 COVID-19 疾病,这可能有助于医生更有效地做出临床决策。该研究还深入了解了如何使用迁移学习来自动检测 COVID-19 疾病。在未来的研究中,随着可用数据集数量的增加,可以设计不同的卷积神经网络模型以更有效地实现目标。