P Samson Anosh Babu, Annavarapu Chandra Sekhara Rao
Department of Computer Science and Engineering, Indian Institute of Technology (ISM), Dhanbad, 826004 India.
Appl Intell (Dordr). 2021;51(5):3104-3120. doi: 10.1007/s10489-021-02199-4. Epub 2021 Mar 23.
COVID-19 has proven to be a deadly virus, and unfortunately, it triggered a worldwide pandemic. Its detection for further treatment poses a severe threat to researchers, scientists, health professionals, and administrators worldwide. One of the daunting tasks during the pandemic for doctors in radiology is the use of chest X-ray or CT images for COVID-19 diagnosis. Time is required to inspect each report manually. While a CT scan is the better standard, an X-ray is still useful because it is cheaper, faster, and more widely used. To diagnose COVID-19, this paper proposes to use a deep learning-based improved Snapshot Ensemble technique for efficient COVID-19 chest X-ray classification. In addition, the proposed method takes advantage of the transfer learning technique using the ResNet-50 model, which is a pre-trained model. The proposed model uses the publicly accessible COVID-19 chest X-ray dataset consisting of 2905 images, which include COVID-19, viral pneumonia, and normal chest X-ray images. For performance evaluation, the model applied the metrics such as AU-ROC, AU-PR, and Jaccard Index. Furthermore, it also obtained a multi-class micro-average of 97% specificity, 95% -score, and 95% classification accuracy. The obtained results demonstrate that the performance of the proposed method outperformed those of several existing methods. This method appears to be a suitable and efficient approach for COVID-19 chest X-ray classification.
事实证明,新冠病毒是一种致命病毒,不幸的是,它引发了一场全球大流行。对其进行检测以便进一步治疗,给全球的研究人员、科学家、医疗专业人员和管理人员都带来了严重威胁。在疫情期间,放射科医生面临的一项艰巨任务是利用胸部X光或CT图像进行新冠病毒诊断。人工检查每份报告都需要时间。虽然CT扫描是更好的标准,但X光仍然有用,因为它更便宜、更快且应用更广泛。为了诊断新冠病毒,本文提出使用基于深度学习的改进快照集成技术进行高效的新冠病毒胸部X光分类。此外,该方法利用了使用ResNet - 50模型的迁移学习技术,这是一个预训练模型。所提出的模型使用了由2905张图像组成的可公开获取的新冠病毒胸部X光数据集,这些图像包括新冠病毒感染、病毒性肺炎和正常胸部X光图像。为了进行性能评估,该模型应用了如AU - ROC、AU - PR和杰卡德指数等指标。此外,它还获得了97%的特异性、95%的F1分数和95%的分类准确率的多类微平均值。所得结果表明,所提方法的性能优于几种现有方法。该方法似乎是一种适用于新冠病毒胸部X光分类的高效方法。