IMITATE: Clinical Prior Guided Hierarchical Vision-Language Pre-training.

Che Liu, Sibo Cheng, Miaojing Shi, Anand Shah, Wenjia Bai, Rossella Arcucci
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Abstract

In the field of medical Vision-Language Pretraining (VLP), significant efforts have been devoted to deriving text and image features from both clinical reports and associated medical images. However, most existing methods may have overlooked the opportunity in leveraging the inherent hierarchical structure of clinical reports, which are generally split into 'findings' for descriptive content and 'impressions' for conclusive observation. Instead of utilizing this rich, structured format, current medical VLP approaches often simplify the report into either a unified entity or fragmented tokens. In this work, we propose a novel clinical prior guided VLP framework named IMITATE to learn the structure information from medical reports with hierarchical vision-language alignment. The framework derives multi-level visual features from the chest X-ray (CXR) images and separately aligns these features with the descriptive and the conclusive text encoded in the hierarchical medical report. Furthermore, a new clinical-informed contrastive loss is introduced for cross-modal learning, which accounts for clinical prior knowledge in formulating sample correlations in contrastive learning. The proposed model, IMITATE, outperforms baseline VLP methods across six different datasets, spanning five medical imaging downstream tasks. Comprehensive experimental results highlight the advantages of integrating the hierarchical structure of medical reports for vision-language alignment.

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IMITATE:临床先导分层视觉语言预培训。
在医学视觉语言预训练(VLP)领域,人们一直致力于从临床报告和相关医学图像中获取文本和图像特征。然而,大多数现有方法可能忽略了利用临床报告固有的层次结构的机会,临床报告一般分为描述性内容的 "发现 "和结论性观察的 "印象"。当前的医学 VLP 方法往往没有利用这种丰富的结构化格式,而是将报告简化为统一的实体或零散的标记。在这项工作中,我们提出了一种名为 "IMITATE "的新型临床先验指导 VLP 框架,通过分层视觉语言对齐从医疗报告中学习结构信息。该框架从胸部 X 光(CXR)图像中提取多层次视觉特征,并分别将这些特征与分层医疗报告中编码的描述性和结论性文本进行对齐。此外,还为跨模态学习引入了一种新的临床信息对比损失(contrast-informed loss),它在对比学习中考虑到了制定样本相关性时的临床先验知识。在横跨五个医学影像下游任务的六个不同数据集上,所提出的模型 IMITATE 优于基准 VLP 方法。全面的实验结果凸显了将医学报告的层次结构整合到视觉语言配准中的优势。
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