MAIRA-2: Grounded Radiology Report Generation
About
Radiology reporting is a complex task requiring detailed medical image understanding and precise language generation, for which generative multimodal models offer a promising solution. However, to impact clinical practice, models must achieve a high level of both verifiable performance and utility. We augment the utility of automated report generation by incorporating localisation of individual findings on the image - a task we call grounded report generation - and enhance performance by incorporating realistic reporting context as inputs. We design a novel evaluation framework (RadFact) leveraging the logical inference capabilities of large language models (LLMs) to quantify report correctness and completeness at the level of individual sentences, while supporting the new task of grounded reporting. We develop MAIRA-2, a large radiology-specific multimodal model designed to generate chest X-ray reports with and without grounding. MAIRA-2 achieves state of the art on existing report generation benchmarks and establishes the novel task of grounded report generation.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Radiology Report Generation | MIMIC-CXR (test) | BLEU-40.234 | 121 | |
| Chest X-ray Report Generation | MIMIC-CXR (test) | F1 Macro (14)41.6 | 21 | |
| Medical Image Report Labeling | MIMIC-CXR (test) | Macro F1 (14 Labels)41.6 | 21 | |
| Report Generation | L-MIMIC | Precision61.5 | 14 | |
| Anatomy-Grounded Report Generation | Chest ImaGenome subset | Hallucination Rate (Abnormal Findings)2 | 14 | |
| Radiology Report Generation | RadVLM MIMIC-CXR (test) | ROUGE-L17.7 | 13 | |
| Report Generation | IU-Xray | ROUGE-L30.6 | 10 | |
| Findings Generation | SRRG-Findings unaligned (test) | BLEU3.39 | 8 | |
| Abnormality Detection | CXR | IoU16 | 8 | |
| Visual Grounding | MS-CXR (test) | mAP@0.580.1 | 8 |