Department of Electrical Engineering, Jadavpur University, Kolkata, 700032, India.
Department of Information Technology, Jadavpur University, Kolkata, 700106, India.
Sci Rep. 2021 Jul 8;11(1):14133. doi: 10.1038/s41598-021-93658-y.
COVID-19 has crippled the world's healthcare systems, setting back the economy and taking the lives of several people. Although potential vaccines are being tested and supplied around the world, it will take a long time to reach every human being, more so with new variants of the virus emerging, enforcing a lockdown-like situation on parts of the world. Thus, there is a dire need for early and accurate detection of COVID-19 to prevent the spread of the disease, even more. The current gold-standard RT-PCR test is only 71% sensitive and is a laborious test to perform, leading to the incapability of conducting the population-wide screening. To this end, in this paper, we propose an automated COVID-19 detection system that uses CT-scan images of the lungs for classifying the same into COVID and Non-COVID cases. The proposed method applies an ensemble strategy that generates fuzzy ranks of the base classification models using the Gompertz function and fuses the decision scores of the base models adaptively to make the final predictions on the test cases. Three transfer learning-based convolutional neural network models are used, namely VGG-11, Wide ResNet-50-2, and Inception v3, to generate the decision scores to be fused by the proposed ensemble model. The framework has been evaluated on two publicly available chest CT scan datasets achieving state-of-the-art performance, justifying the reliability of the model. The relevant source codes related to the present work is available in: GitHub.
COVID-19 已经使全球的医疗体系陷入瘫痪,使经济倒退,并夺走了许多人的生命。虽然世界各地都在测试和供应潜在的疫苗,但要将其送到每个人手中还需要很长时间,尤其是随着病毒新变种的出现,世界上某些地区再次采取了类似封锁的措施。因此,迫切需要早期、准确地检测 COVID-19,以阻止疾病的传播。目前的金标准 RT-PCR 检测的灵敏度只有 71%,而且检测过程繁琐,导致无法进行全面的人群筛查。为此,在本文中,我们提出了一种使用肺部 CT 扫描图像对 COVID-19 进行分类的自动化 COVID-19 检测系统。该方法采用了一种集成策略,使用 Gompertz 函数为基础分类模型生成模糊等级,并自适应地融合基础模型的决策分数,从而对测试病例做出最终预测。该方法使用了三种基于迁移学习的卷积神经网络模型,即 VGG-11、Wide ResNet-50-2 和 Inception v3,生成决策分数,由所提出的集成模型进行融合。该框架在两个公开的胸部 CT 扫描数据集上进行了评估,达到了最先进的性能,证明了该模型的可靠性。与本工作相关的源代码可在 GitHub 上获取。