Please use this identifier to cite or link to this item: https://elib.vku.udn.vn/handle/123456789/3196
Title: SSL-MedImNet: Self-Supervised Pre-training of Deep Neural Network for COVID-19 Diagnosis
Authors: Tran, Nhat Minh Hoang
Tran, The Son
Nguyen, Duy Nghiem
Le, Minh Tuan
Keywords: COVID-19
Medical imaging
Self-supervised learning
Artificial intelligence
Computed Tomography Scan
Issue Date: Aug-2022
Publisher: Springer Nature
Abstract: This paper applies self-supervised learning to diagnose coronavirus disease (COVID-19) among other pneumonia and normal cases based on chest Computed Tomography (CT) images. Being aware that medical imaging in real-world scenarios lacks well-verified and explicitly labeled datasets, which is known as a big challenge for supervised learning, we utilize Momentum Contrast v2 (MoCo v2) algorithm to pre-train our proposed Self-Supervised Medical Imaging Network (SSL-MedImNet) with remarkable generalization from substantial unlabeled data. The proposed model achieves competitive and promising performance in COVIDx CT-2, which is a well-known and high-quality dataset for COVID-19 assessment. Besides, its pre-trained representations can be transferred well for the diagnosis task. Moreover, SSL-MedImNet approximately matches its supervised candidates COVID-Net CT-1 and COVID-Net CT-2 by small distinctions. In particular, with only some additional dense layers, the proposed model achieves COVID-19 accuracy of 88.3% and specificity of 98.4% approximately, and competitive results for normal and pneumonia cases. The results advocate the potential of self-supervised learning to accomplish highly generalized understanding from unlabeled medical images and then transfer it for relevant supervised tasks in real scenarios.
Description: International Conference on Intelligence of Things (ICIT 2022); Lecture Notes on Data Engineering and Communications Technologies, Vol.148; pp: 406-415.
URI: https://doi.org/10.1007/978-3-031-15063-0_39
http://elib.vku.udn.vn/handle/123456789/3196
ISBN: 978-3-031-15063-0 (e)
Appears in Collections:NĂM 2022

Files in This Item:

 Sign in to read



Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.