AI can evolve without labels: self-evolving vision transformer for chest X-ray diagnosis through knowledge distillation

Although deep learning-based computer-aided diagnosis systems have recently achieved expert-level performance, developing a robust deep learning model requires large, high-quality data with manual annotation, which is expensive to obtain. This situation poses the problem that the chest x-rays collec...

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Veröffentlicht in:arXiv.org 2022-02
Hauptverfasser: Park, Sangjoon, Kim, Gwanghyun, Oh, Yujin, Seo, Joon Beom, Lee, Sang Min, Kim, Jin Hwan, Moon, Sungjun, Lim, Jae-Kwang, Park, Chang Min, Ye, Jong Chul
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container_title arXiv.org
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creator Park, Sangjoon
Kim, Gwanghyun
Oh, Yujin
Seo, Joon Beom
Lee, Sang Min
Kim, Jin Hwan
Moon, Sungjun
Lim, Jae-Kwang
Park, Chang Min
Ye, Jong Chul
description Although deep learning-based computer-aided diagnosis systems have recently achieved expert-level performance, developing a robust deep learning model requires large, high-quality data with manual annotation, which is expensive to obtain. This situation poses the problem that the chest x-rays collected annually in hospitals cannot be used due to the lack of manual labeling by experts, especially in deprived areas. To address this, here we present a novel deep learning framework that uses knowledge distillation through self-supervised learning and self-training, which shows that the performance of the original model trained with a small number of labels can be gradually improved with more unlabeled data. Experimental results show that the proposed framework maintains impressive robustness against a real-world environment and has general applicability to several diagnostic tasks such as tuberculosis, pneumothorax, and COVID-19. Notably, we demonstrated that our model performs even better than those trained with the same amount of labeled data. The proposed framework has a great potential for medical imaging, where plenty of data is accumulated every year, but ground truth annotations are expensive to obtain.
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subjects Annotations
CAI
Chest
Computer assisted instruction
Computer Science - Computer Vision and Pattern Recognition
Computer Science - Learning
Deep learning
Diagnosis
Distillation
Labels
Medical imaging
Pneumothorax
Tuberculosis
title AI can evolve without labels: self-evolving vision transformer for chest X-ray diagnosis through knowledge distillation
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