Multimodal Integrated Knowledge Transfer to Large Language Models through Preference Optimization with Biomedical Applications
Journal:
arXiv
Published Date:
May 9, 2025
Abstract
The scarcity of high-quality multimodal biomedical data limits the ability to
effectively fine-tune pretrained Large Language Models (LLMs) for specialized
biomedical tasks. To address this challenge, we introduce MINT (Multimodal
Integrated kNowledge Transfer), a framework that aligns unimodal large decoder
models with domain-specific decision patterns from multimodal biomedical data
through preference optimization. While MINT supports different optimization
techniques, we primarily implement it with the Odds Ratio Preference
Optimization (ORPO) framework as its backbone. This strategy enables the
aligned LLMs to perform predictive tasks using text-only or image-only inputs
while retaining knowledge learnt from multimodal data. MINT leverages an
upstream multimodal machine learning (MML) model trained on high-quality
multimodal data to transfer domain-specific insights to downstream text-only or
image-only LLMs. We demonstrate its effectiveness through two key applications:
(1) Rare genetic disease prediction from texts, where MINT uses a multimodal
encoder model, trained on facial photos and clinical notes, to generate a
preference dataset for aligning a lightweight Llama 3.2-3B-Instruct. Despite
relying on text input only, the MINT-derived model outperforms models trained
with SFT, RAG, or DPO, and even outperforms Llama 3.1-405B-Instruct. (2) Tissue
type classification using cell nucleus images, where MINT uses a
vision-language foundation model as the preference generator, containing
knowledge learnt from both text and histopathological images to align
downstream image-only models. The resulting MINT-derived model significantly
improves the performance of Llama 3.2-Vision-11B-Instruct on tissue type
classification. In summary, MINT provides an effective strategy to align
unimodal LLMs with high-quality multimodal expertise through preference
optimization.