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arxiv 2303.14153 v1 pith:YA7G5KUV submitted 2023-03-24 cs.CV cs.LG

Local Contrastive Learning for Medical Image Recognition

classification cs.CV cs.LG
keywords imagelearninglocalmedicalradiologychestcontrastiveframeworks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The proliferation of Deep Learning (DL)-based methods for radiographic image analysis has created a great demand for expert-labeled radiology data. Recent self-supervised frameworks have alleviated the need for expert labeling by obtaining supervision from associated radiology reports. These frameworks, however, struggle to distinguish the subtle differences between different pathologies in medical images. Additionally, many of them do not provide interpretation between image regions and text, making it difficult for radiologists to assess model predictions. In this work, we propose Local Region Contrastive Learning (LRCLR), a flexible fine-tuning framework that adds layers for significant image region selection as well as cross-modality interaction. Our results on an external validation set of chest x-rays suggest that LRCLR identifies significant local image regions and provides meaningful interpretation against radiology text while improving zero-shot performance on several chest x-ray medical findings.

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