Fusion of Domain-Adapted Vision and Language Models for Medical Visual Question Answering (2404.16192v1)
Abstract: Vision-LLMs, while effective in general domains and showing strong performance in diverse multi-modal applications like visual question-answering (VQA), struggle to maintain the same level of effectiveness in more specialized domains, e.g., medical. We propose a medical vision-LLM that integrates large vision and LLMs adapted for the medical domain. This model goes through three stages of parameter-efficient training using three separate biomedical and radiology multi-modal visual and text datasets. The proposed model achieves state-of-the-art performance on the SLAKE 1.0 medical VQA (MedVQA) dataset with an overall accuracy of 87.5% and demonstrates strong performance on another MedVQA dataset, VQA-RAD, achieving an overall accuracy of 73.2%.
- Cuong Nhat Ha (1 paper)
- Shima Asaadi (3 papers)
- Sanjeev Kumar Karn (10 papers)
- Oladimeji Farri (12 papers)
- Tobias Heimann (4 papers)
- Thomas Runkler (34 papers)