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Parameter-Efficient Fine-Tuning Medical Multimodal Large Language Models for Medical Visual Grounding (2410.23822v1)

Published 31 Oct 2024 in cs.CV and cs.AI

Abstract: Multimodal LLMs (MLLMs) inherit the superior text understanding capabilities of LLMs and extend these capabilities to multimodal scenarios. These models achieve excellent results in the general domain of multimodal tasks. However, in the medical domain, the substantial training costs and the requirement for extensive medical data pose challenges to the development of medical MLLMs. Furthermore, due to the free-text form of answers, tasks such as visual grounding that need to produce output in a prescribed form become difficult for MLLMs. So far, there have been no medical MLLMs works in medical visual grounding area. For the medical vision grounding task, which involves identifying locations in medical images based on short text descriptions, we propose Parameter-efficient Fine-tuning medical multimodal LLMs for Medcial Visual Grounding (PFMVG). To validate the performance of the model, we evaluate it on a public benchmark dataset for medical visual grounding, where it achieves competitive results, and significantly outperforming GPT-4v. Our code will be open sourced after peer review.

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Authors (4)
  1. Jinlong He (7 papers)
  2. Pengfei Li (185 papers)
  3. Gang Liu (177 papers)
  4. Shenjun Zhong (7 papers)
Citations (1)