Your browser doesn't support javascript.
Transfer learning with fine-tuned deep CNN ResNet50 model for classifying COVID-19 from chest X-ray images.
Hossain, Md Belal; Iqbal, S M Hasan Sazzad; Islam, Md Monirul; Akhtar, Md Nasim; Sarker, Iqbal H.
  • Hossain MB; Department of Computer Science and Engineering, Pabna University of Science and Technology, Pabna 6600, Bangladesh.
  • Iqbal SMHS; Department of Computer Science and Engineering, Pabna University of Science and Technology, Pabna 6600, Bangladesh.
  • Islam MM; Department of Textile Engineering, Uttara University, Dhaka 1230, Bangladesh.
  • Akhtar MN; Department of Computer Science and Engineering, Dhaka University of Engineering Technology, Gazipur, 1707, Bangladesh.
  • Sarker IH; Department of Computer Science and Engineering, Chittagong University of Engineering & Technology, Chittagong 4349, Bangladesh.
Inform Med Unlocked ; 30: 100916, 2022.
Article in English | MEDLINE | ID: covidwho-1747884
ABSTRACT
COVID-19 cases are putting pressure on healthcare systems all around the world. Due to the lack of available testing kits, it is impractical for screening every patient with a respiratory ailment using traditional methods (RT-PCR). In addition, the tests have a high turn-around time and low sensitivity. Detecting suspected COVID-19 infections from the chest X-ray might help isolate high-risk people before the RT-PCR test. Most healthcare systems already have X-ray equipment, and because most current X-ray systems have already been computerized, there is no need to transfer the samples. The use of a chest X-ray to prioritize the selection of patients for subsequent RT-PCR testing is the motivation of this work. Transfer learning (TL) with fine-tuning on deep convolutional neural network-based ResNet50 model has been proposed in this work to classify COVID-19 patients from the COVID-19 Radiography Database. Ten distinct pre-trained weights, trained on varieties of large-scale datasets using various approaches such as supervised learning, self-supervised learning, and others, have been utilized in this work. Our proposed i N a t 2021 _ M i n i _ S w A V _ 1 k model, pre-trained on the iNat2021 Mini dataset using the SwAV algorithm, outperforms the other ResNet50 TL models. For COVID instances in the two-class (Covid and Normal) classification, our work achieved 99.17% validation accuracy, 99.95% train accuracy, 99.31% precision, 99.03% sensitivity, and 99.17% F1-score. Some domain-adapted ( I m a g e N e t _ C h e s t X - r a y 14 ) and in-domain (ChexPert, ChestX-ray14) models looked promising in medical image classification by scoring significantly higher than other models.
Keywords

Full text: Available Collection: International databases Database: MEDLINE Type of study: Diagnostic study / Prognostic study Topics: Variants Language: English Journal: Inform Med Unlocked Year: 2022 Document Type: Article Affiliation country: J.imu.2022.100916

Similar

MEDLINE

...
LILACS

LIS


Full text: Available Collection: International databases Database: MEDLINE Type of study: Diagnostic study / Prognostic study Topics: Variants Language: English Journal: Inform Med Unlocked Year: 2022 Document Type: Article Affiliation country: J.imu.2022.100916