Multimodal Learning 相关度: 10/10

MM-NeuroOnco: A Multimodal Benchmark and Instruction Dataset for MRI-Based Brain Tumor Diagnosis

Feng Guo, Jiaxiang Liu, Yang Li, Qianqian Shi, Mingkun Xu
arXiv: 2602.22955v1 发布: 2026-02-26 更新: 2026-02-26

AI 摘要

MM-NeuroOnco构建了大规模脑肿瘤MRI多模态诊断基准,并提出了NeuroOnco-GPT模型。

主要贡献

  • 构建了大规模多模态脑肿瘤MRI诊断数据集MM-NeuroOnco
  • 提出了多模型协作的自动医学信息补全和质量控制流程
  • 构建了人工标注的评估基准MM-NeuroOnco-Bench
  • 提出了基于MM-NeuroOnco微调的NeuroOnco-GPT模型

方法论

使用多模型协作流程自动补全医学信息,构建高质量多模态数据集,并通过人工标注的基准评估模型,最后使用该数据集微调GPT模型。

原文摘要

Accurate brain tumor diagnosis requires models to not only detect lesions but also generate clinically interpretable reasoning grounded in imaging manifestations, yet existing public datasets remain limited in annotation richness and diagnostic semantics. To bridge this gap, we introduce MM-NeuroOnco, a large-scale multimodal benchmark and instruction-tuning dataset for brain tumor MRI understanding, consisting of 24,726 MRI slices from 20 data sources paired with approximately 200,000 semantically enriched multimodal instructions spanning diverse tumor subtypes and imaging modalities. To mitigate the scarcity and high cost of diagnostic semantic annotations, we develop a multi-model collaborative pipeline for automated medical information completion and quality control, enabling the generation of diagnosis-related semantics beyond mask-only annotations. Building upon this dataset, we further construct MM-NeuroOnco-Bench, a manually annotated evaluation benchmark with a rejection-aware setting to reduce biases inherent in closed-ended question formats. Evaluation across ten representative models shows that even the strongest baseline, Gemini 3 Flash, achieves only 41.88% accuracy on diagnosis-related questions, highlighting the substantial challenges of multimodal brain tumor diagnostic understanding. Leveraging MM-NeuroOnco, we further propose NeuroOnco-GPT, which achieves a 27% absolute accuracy improvement on diagnostic questions following fine-tuning. This result demonstrates the effectiveness of our dataset and benchmark in advancing clinically grounded multimodal diagnostic reasoning. Code and dataset are publicly available at: https://github.com/gfnnnb/MM-NeuroOnco

标签

multimodal medical imaging brain tumor MRI instruction tuning

arXiv 分类

cs.CV cs.AI