๐Ÿ’คQuietscore 0.0Jun 18, 2026ยท2606.20477cs.CVcs.CLcs.LG

Scalable Training of Spatially Grounded 2D Vision-Language Models for Radiology

Yusuf Salcan, Simon Ging, Robin Schirrmeister, Philipp Arnold, Elmar Kotter, Behzad Bozorgtabar, Thomas Brox

Narrative

No narrative written yet. The narrate cron picks top papers by score; run /api/cron/narrate to populate this manually.

Abstract

We study how to train visually grounded vision-language models (VLMs) for radiology without manual spatial annotations. We introduce RefRad2D, a large-scale bilingual (German/English) dataset of 1.2M CT and MR image-text pairs derived from clinical practice, with task-specific VQA and spatial grounding subsets generated automatically via LLM-based curation and automated segmentation. Trained on this data, our model RadGrounder jointly performs report generation, visual question answering, and spatial grounding via bounding-box detection or segmentation. On external VQA benchmarks (Slake, VQA-RAD), RadGrounder achieves competitive results with specialized medical VLMs. Adding our clinical data to the training mixture improves open-ended VQA over fine-tuning on the downstream datasets alone, showing the transferability of our dataset. Crucially, adding grounding supervision does not degrade language quality, enabling spatially verifiable outputs at no cost to VQA performance.

Citation timeline
Not enough citation snapshots yet to plot a timeline. Come back after a few cron runs.