Yousefpanah, Kolsoum and Ebadi, M. J. and Sabzekar, Sina and Zakaria, Nor Hidayati and Osman, Nurul Aida and Ali Ahmadian, Ali Ahmadian (2024) An emerging network for COVID-19 CT-scan classification using an ensemble deep transfer learning model. Acta Tropica, 257 (NA). NA-NA. ISSN 0001-706X
Full text not available from this repository.
Official URL: http://dx.doi.org/10.1016/j.actatropica.2024.10727...
Abstract
Over the past few years, the widespread outbreak of COVID-19 has caused the death of millions of people worldwide. Early diagnosis of the virus is essential to control its spread and provide timely treatment. Artificial intelligence methods are often used as powerful tools to reach a COVID-19 diagnosis via computed tomography (CT) samples. In this paper, artificial intelligence-based methods are introduced to diagnose COVID-19. At first, a network called CT6-CNN is designed, and then two ensemble deep transfer learning models are developed based on Xception, ResNet-101, DenseNet-169, and CT6-CNN to reach a COVID-19 diagnosis by CT samples. The publicly available SARS-CoV-2 CT dataset is utilized for our implementation, including 2481 CT scans. The dataset is separated into 2108, 248, and 125 images for training, validation, and testing, respectively. Based on experimental results, the CT6-CNN model achieved 94.66% accuracy, 94.67% precision, 94.67% sensitivity, and 94.65% F1-score rate. Moreover, the ensemble learning models reached 99.2% accuracy. Experimental results affirm the effectiveness of designed models, especially the ensemble deep learning models, to reach a diagnosis of COVID-19.
Item Type: | Article |
---|---|
Uncontrolled Keywords: | Artificial intelligence, COVID-19, Deep learning, Machine learning, Soft Voting |
Subjects: | H Social Sciences > HD Industries. Land use. Labor > HD30.2 Knowledge management |
Divisions: | International Business School |
ID Code: | 108879 |
Deposited By: | Widya Wahid |
Deposited On: | 11 Dec 2024 09:39 |
Last Modified: | 11 Dec 2024 09:39 |
Repository Staff Only: item control page