Castiglione Aniello, Vijayakumar Pandi, Nappi Michele, Sadiq Saima, Umer Muhammad
Department of Science and TechnologyUniversity of Naples Parthenope 80143 Naples Italy.
Department of Computer Science and EngineeringUniversity College of Engineering Tindivanam Tindivanam 604001 India.
IEEE Trans Industr Inform. 2021 Feb 5;17(9):6480-6488. doi: 10.1109/TII.2021.3057524. eCollection 2021 Sep.
It is widely known that a quick disclosure of the COVID-19 can help to reduce its spread dramatically. Transcriptase polymerase chain reaction could be a more useful, rapid, and trustworthy technique for the evaluation and classification of the COVID-19 disease. Currently, a computerized method for classifying computed tomography (CT) images of chests can be crucial for speeding up the detection while the COVID-19 epidemic is rapidly spreading. In this article, the authors have proposed an optimized convolutional neural network model (ADECO-CNN) to divide infected and not infected patients. Furthermore, the ADECO-CNN approach is compared with pretrained convolutional neural network (CNN)-based VGG19, GoogleNet, and ResNet models. Extensive analysis proved that the ADECO-CNN-optimized CNN model can classify CT images with 99.99% accuracy, 99.96% sensitivity, 99.92% precision, and 99.97% specificity.
众所周知,快速披露新型冠状病毒肺炎(COVID-19)疫情有助于大幅减少其传播。转录酶聚合酶链反应可能是用于评估和分类COVID-19疾病的更有用、快速且可靠的技术。目前,在COVID-19疫情迅速蔓延的情况下,一种用于胸部计算机断层扫描(CT)图像分类的计算机化方法对于加快检测至关重要。在本文中,作者提出了一种优化的卷积神经网络模型(ADECO-CNN)来区分感染和未感染患者。此外,将ADECO-CNN方法与基于预训练卷积神经网络(CNN)的VGG19、GoogleNet和ResNet模型进行了比较。广泛分析证明,ADECO-CNN优化的CNN模型能够以99.99%的准确率、99.96%的灵敏度、99.92%的精确率和99.97%的特异性对CT图像进行分类。