医学图像识别的局部对比学习

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Syed A Rizvi, Ruixiang Tang, Xiaoqian Jiang, Xiaotian Ma, Xia Hu
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引用次数: 0

摘要

基于深度学习(Deep Learning,DL)的放射图像分析方法层出不穷,对专家标注的放射学数据产生了巨大需求。最近的自监督框架通过从相关放射学报告中获取监督信息,减轻了对专家标签的需求。然而,这些框架难以区分医学图像中不同病理之间的细微差别。此外,许多框架不提供图像区域和文本之间的解释,这使得放射科医生很难评估模型预测。在这项工作中,我们提出了局部区域对比学习(LRCLR),这是一种灵活的微调框架,它为重要的图像区域选择和跨模态交互增加了层次。我们在胸部 X 光片外部验证集上取得的结果表明,LRCLR 可以识别重要的局部图像区域,并根据放射学文本提供有意义的解释,同时提高了几种胸部 X 光片医学发现的零拍摄性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Contrastive Learning for Medical Image Recognition.

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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