Act Like a Radiologist: Radiology Report Generation across Anatomical Regions
Qi Chen, Yutong Xie, Biao Wu, Xiaomin Chen, James Ang, Minh-Son To,, Xiaojun Chang, and Qi Wu

TL;DR
This paper introduces X-RGen, a novel framework for automated radiology report generation across six anatomical regions, mimicking radiologists' multi-phase analysis to improve accuracy and clinical relevance.
Contribution
X-RGen is the first model to incorporate multi-region analysis and radiologist-like reasoning phases for comprehensive report generation.
Findings
X-RGen outperforms existing methods on six X-ray datasets.
It effectively captures complex patterns across diverse anatomical regions.
The framework enhances report quality with improved clinical relevance.
Abstract
Automating radiology report generation can ease the reporting workload for radiologists. However, existing works focus mainly on the chest area due to the limited availability of public datasets for other regions. Besides, they often rely on naive data-driven approaches, e.g., a basic encoder-decoder framework with captioning loss, which limits their ability to recognise complex patterns across diverse anatomical regions. To address these issues, we propose X-RGen, a radiologist-minded report generation framework across six anatomical regions. In X-RGen, we seek to mimic the behaviour of human radiologists, breaking them down into four principal phases: 1) initial observation, 2) cross-region analysis, 3) medical interpretation, and 4) report formation. Firstly, we adopt an image encoder for feature extraction, akin to a radiologist's preliminary review. Secondly, we enhance the…
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Taxonomy
TopicsTopic Modeling · Machine Learning in Healthcare · Multimodal Machine Learning Applications
