Evaluating Self-Supervised Learning Models for Multi-Label Pathology Detection: A Benchmark Against Supervised Learning


연구 분야: Artificial Intelligence



학회: 2025 2nd International Conference on Computational Intelligence, Communication Technology and Networking (CICTN)


초록

The analysis and objective of the current work is to check the performance of SSL Models in multi-label classification on the available dataset of NIH Chest X-ray images which is a large-scale medical imaging dataset. The performance of SSL models, Dino_v_bl6, Dino with ResNet-50, and MoCo (Momentum Contrast) has been evaluated against the supervised model ResNet. These models are supposed to train to detect multiple pathologies using chest X-ray images. We also note that self-supervised embedding models outperform traditional supervised learning to a significant extent, achieving similar or higher performance on a number of quantitative metrics when compared to the softmax supervised ResNet model. This also draws attention to the possibilities of using SSL for biosignal-specific medical images. Furthermore, SSL approaches offer a promising solution in scenarios where there is an overabundance of annotated datasets available for training models such as deep neural networks. The effectiveness of SSL approaches in addressing the problem of data annotation is also emphasized by this study.


Author Profile
Nidhi Agarwal

Department of Computer Science Engineering Galgotias University Greater Noida India

India
Author Profile
Pooja

School of Computer Science Engineering and Technology Bennett University Greater Noida India

Andorra
Author Profile
Nitish Kumar

Department of Information Technology Bharati Vidyapeeth College of Engineering New Delhi

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📄 논문 정보

발행 연도 2025년
인용수 33
출판 국가 Andorra, India
사이트 IEEE
좋아요 수 0

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