Improving Radiology Summarization with Radiograph and Anatomy Prompts
Jinpeng Hu, Zhihong Chen, Yang Liu, Xiang Wan, Tsung-Hui Chang

TL;DR
This paper introduces an anatomy-enhanced multimodal model that leverages radiograph and anatomy prompts to improve automatic impression generation in radiology reports, achieving state-of-the-art results.
Contribution
The paper proposes a novel anatomy-aware multimodal approach that incorporates anatomical prompts and contrastive learning for better impression generation from radiographs.
Findings
Achieves state-of-the-art performance on benchmark datasets.
Effectively aligns visual and textual features using anatomy prompts.
Enhances impression accuracy by focusing on anatomy-specific information.
Abstract
The impression is crucial for the referring physicians to grasp key information since it is concluded from the findings and reasoning of radiologists. To alleviate the workload of radiologists and reduce repetitive human labor in impression writing, many researchers have focused on automatic impression generation. However, recent works on this task mainly summarize the corresponding findings and pay less attention to the radiology images. In clinical, radiographs can provide more detailed valuable observations to enhance radiologists' impression writing, especially for complicated cases. Besides, each sentence in findings usually focuses on single anatomy, so they only need to be matched to corresponding anatomical regions instead of the whole image, which is beneficial for textual and visual features alignment. Therefore, we propose a novel anatomy-enhanced multimodal model to promote…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Multimodal Machine Learning Applications
MethodsContrastive Learning · ALIGN
