Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Learning from Medical Entity Trees: An Entity-Centric Medical Data Engineering Framework for MLLMs

About

Multimodal Large Language Models (MLLMs) have shown transformative potential in medical applications, yet their performance is hindered by conventional data curation strategies that rely on coarse-grained partitioning by modality or department. Such fragmented approaches fail to capture the hierarchical and interconnected nature of clinical medical knowledge, limiting the models' ability to perform fine-grained recognition and complex reasoning. In this paper, we propose a novel Entity-Centric Medical Data Engineering framework. We automatically extract entities from authoritative medical literature to construct a Medical Entity Tree (MET), a hierarchical structure that systematically encodes diseases, anatomical structures, modalities, and symptoms into a unified knowledge repository. Building upon the MET, we propose an advanced data engine that includes: (1) node-guided retrieval to anchor raw data to specific medical concepts, (2) a two-stage hybrid filtering and alignment pipeline to ensure precise visual-semantic correspondence, and (3) knowledge-aware data synthesis to generate enriched captions and targeted reasoning VQA pairs, leveraging structural constraints. Extensive evaluations across six medical benchmarks demonstrate that our approach significantly enhances the medical capabilities of general-purpose MLLMs, improving their ability to handle complex clinical queries and achieve state-of-the-art performance in diverse medical contexts.

Jianghang Lin, Haihua Yang, Deli Yu, Kai Wu, Kai Ye, Jinghao Lin, Zihan Wang, Yuhang Wu, Liujuan Cao• 2026

Related benchmarks

TaskDatasetResultRank
Medical Visual Question AnsweringSlake
Accuracy70.39
247
Medical Visual Question AnsweringVQA-RAD
Accuracy77.16
228
Medical Visual Question AnsweringPMC-VQA
Accuracy63.75
103
Medical Visual Question AnsweringPathVQA
Accuracy46.5
80
Medical Visual Question AnsweringOmniMedVQA
Accuracy83.36
48
Multimodal Medical UnderstandingMMMU
Accuracy73.77
15
Showing 6 of 6 rows

Other info

Follow for update