CVApr 3

Visual Instruction-Finetuned Language Model for Versatile Brain MR Image Tasks

arXiv:2604.0274817.5h-index: 2
AI Analysis

This work addresses the need for versatile AI models in medical imaging to improve clinical workflows, though it is incremental as it builds on existing visual-language methods.

The authors tackled the challenge of integrating diverse clinically relevant tasks in brain MRI, such as segmentation and translation, into a single versatile language model, achieving superior performance across five datasets and four tasks, outperforming specialized models.

LLMs have demonstrated remarkable capabilities in linguistic reasoning and are increasingly adept at vision-language tasks. The integration of image tokens into transformers has enabled direct visual input and output, advancing research from image-to-text descriptions to text-to-image generation. However, simple text-to-image generation holds limited clinical utility. In medical imaging, tasks such as image segmentation for localizing pathologies or image translation for reconstructing missing sequences have much greater clinical importance. Despite this, integrating these diverse, clinically relevant tasks within a single, versatile language model remains unexplored. Our method, LLaBIT (Large Language Model for Brain Image Translation), extends the visual reasoning of LLMs to these clinically meaningful tasks in the brain MRI domain. To mitigate the spatial information loss inherent in image tokenization, we incorporate a mechanism to reuse feature maps from the image encoder, minimizing data degradation. We also generate text data using LLMs with strict predefined instructions to augment limited image-text paired data in brain MRI. We comprehensively evaluated our method on five brain MRI datasets across four distinct tasks: report generation, visual question answering, image segmentation, and image translation. Our model not only demonstrated superior performance across all tasks but also outperformed specialized, task-specific models in direct comparisons, highlighting its efficacy and versatility

Foundations

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