X-TRA: Improving Chest X-ray Tasks with Cross-Modal Retrieval Augmentation

Tom van Sonsbeek, M. Worring
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引用次数: 1

Abstract

An important component of human analysis of medical images and their context is the ability to relate newly seen things to related instances in our memory. In this paper we mimic this ability by using multi-modal retrieval augmentation and apply it to several tasks in chest X-ray analysis. By retrieving similar images and/or radiology reports we expand and regularize the case at hand with additional knowledge, while maintaining factual knowledge consistency. The method consists of two components. First, vision and language modalities are aligned using a pre-trained CLIP model. To enforce that the retrieval focus will be on detailed disease-related content instead of global visual appearance it is fine-tuned using disease class information. Subsequently, we construct a non-parametric retrieval index, which reaches state-of-the-art retrieval levels. We use this index in our downstream tasks to augment image representations through multi-head attention for disease classification and report retrieval. We show that retrieval augmentation gives considerable improvements on these tasks. Our downstream report retrieval even shows to be competitive with dedicated report generation methods, paving the path for this method in medical imaging.
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X-TRA:改进胸部x线任务与跨模态检索增强
人类分析医学图像及其背景的一个重要组成部分是将新看到的事物与我们记忆中的相关实例联系起来的能力。在本文中,我们通过使用多模态检索增强来模拟这种能力,并将其应用于胸部x射线分析中的几个任务。通过检索相似的图像和/或放射学报告,我们用额外的知识扩展和规范手边的病例,同时保持事实知识的一致性。该方法由两个部分组成。首先,使用预训练的CLIP模型对齐视觉和语言模式。为了确保检索重点将放在与疾病相关的详细内容上,而不是全局视觉外观上,它使用疾病类别信息进行了微调。随后,我们构建了一个非参数检索索引,该索引达到了最先进的检索水平。我们在下游任务中使用该索引,通过多头关注来增强图像表示,用于疾病分类和报告检索。我们表明,检索增强在这些任务上提供了相当大的改进。我们的下游报告检索甚至显示出与专用报告生成方法的竞争力,为该方法在医学成像中铺平了道路。
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