An IoMT-Based Federated and Deep Transfer Learning Approach to the Detection of Diverse Chest Diseases Using Chest X-Raysopen access
- Authors
- Kakkar, Barkha; Johri, Prashant; Kumar, Yogesh; Park, Hyunwoo; Son, Youngdoo; Shafi, Jana
- Issue Date
- May-2022
- Publisher
- 한국컴퓨터산업협회
- Keywords
- Deep Learning; Chest Diseases; Federated Learning; Disease Prediction; X-Ray Dataset
- Citation
- Human-centric Computing and Information Sciences, v.12, pp 1 - 18
- Pages
- 18
- Indexed
- SCIE
SCOPUS
- Journal Title
- Human-centric Computing and Information Sciences
- Volume
- 12
- Start Page
- 1
- End Page
- 18
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/3149
- DOI
- 10.22967/HCIS.2022.12.024
- ISSN
- 2192-1962
2192-1962
- Abstract
- Since chest illnesses are so frequent these days, it is critical to identify and diagnose them effectively. As such, this study proposes a model designed to accurately predict chest disorders by analyzing multiple chest x-ray pictures obtained from a dataset, consisting of 112,120 chest X-ray images, obtained the National Institute of Health (NIH) X-ray. The study used photos from 30,805 individuals with a total of 14 different types of chest disorder, including atelectasis, consolidation, infiltration, and pneumothorax, as well as a class called "No findings" for cases in which the ailment was undiagnosed. Six distinct transfer-learning approaches, namely, VGG-16, MobileNet V2, ResNet-50, DenseNet-161, Inception V3, and VGG-19, were used in the deep learning and federated learning environment to predict the accuracy rate of detecting chest disorders. The VGG-16 model showed the best accuracy at 0.81, with a recall rate of 0.90. As a result, the Fl score of VGG-16 is 0.85, which was higher than the Fl scores computed by other transfer learning approaches. VGG-19 obtained a maximum rate of accuracy of 97.71% via federated transfer learning. According to the classification report, the VGG-16 model is the best transfer-learning model for correctly detecting chest illness.
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Collections - College of Engineering > Department of Industrial and Systems Engineering > 1. Journal Articles

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