亚型
组织病理学
人工智能
模式治疗法
计算机科学
磁共振成像
模态(人机交互)
医学物理学
医学影像学
放射科
基础(证据)
模式识别(心理学)
病理
胶质瘤
机器学习
医学
图像融合
多模态
深度学习
自然语言处理
软件
人工神经网络
作者
Camillo Saueressig,Daniel Scholz,Philipp Raffler,Claire Delbridge,Benedikt Wiestler,Peter J. Schüffler
标识
DOI:10.1038/s41698-026-01366-5
摘要
Molecular subtyping of gliomas is a common clinical task, yet challenging to perform on histology or radiology images alone. To address this challenge, we developed a multimodal classification framework that integrates histopathology and magnetic resonance imaging (MRI) using foundation models as unimodal experts, and evaluated three modality fusion strategies. Models are trained on two unpaired datasets of 772 histopathology cases and 959 multiparametric MRI scans, and tested on 171 unseen patient-matched cases. Multimodal models consistently outperform their unimodal counterparts, with a mixture-of-experts architecture achieving the strongest performance (AUC = 0.98 validation; AUC = 0.94 independent test set). Notably, we show that high-performing multimodal classifiers can be trained even without paired multimodal data, and in purely unimodal settings, these models match unimodal baselines. Finally, a detailed analysis of the learned multimodal representations reveals that the model identifies distinct visual biomarkers associated with glioma molecular subtypes, providing interpretable insight into its decision-making process.
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