Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Interactive and Explainable Region-guided Radiology Report Generation

About

The automatic generation of radiology reports has the potential to assist radiologists in the time-consuming task of report writing. Existing methods generate the full report from image-level features, failing to explicitly focus on anatomical regions in the image. We propose a simple yet effective region-guided report generation model that detects anatomical regions and then describes individual, salient regions to form the final report. While previous methods generate reports without the possibility of human intervention and with limited explainability, our method opens up novel clinical use cases through additional interactive capabilities and introduces a high degree of transparency and explainability. Comprehensive experiments demonstrate our method's effectiveness in report generation, outperforming previous state-of-the-art models, and highlight its interactive capabilities. The code and checkpoints are available at https://github.com/ttanida/rgrg .

Tim Tanida, Philip M\"uller, Georgios Kaissis, Daniel Rueckert• 2023

Related benchmarks

TaskDatasetResultRank
Radiology Report GenerationMIMIC-CXR (test)
BLEU-40.126
172
Radiology Report GenerationIU-Xray (test)
ROUGE-L0.18
77
Radiology Report GenerationMIMIC-CXR
ROUGE-L26.4
57
Medical Report GenerationMIMIC-CXR
BLEU-40.126
43
Radiology Report GenerationMIMIC-CXR findings
BLEU-412.6
26
Medical Report GenerationMIMIC-CXR
F1 Score44.7
22
Medical Report GenerationMIMIC-CXR 2.0.0 (test)
BL-40.126
21
Radiology Report GenerationIU-Xray (full dataset)
BLEU-10.266
9
Chest X-ray Report GenerationMIMIC-CXR--
8
Radiology Report GenerationMIMIC-CXR-EN (test)
Micro Accuracy87.4
7
Showing 10 of 11 rows

Other info

Code

Follow for update