AUTHOR=Ren Ran , Zhu Anjun , Li Yaxi , Liu Huli , Huang Guo , Gu Jing , Ni Jianming , Miao Zengli TITLE=Federated radiomics analysis of preoperative MRI across institutions: toward integrated glioma segmentation and molecular subtyping JOURNAL=Frontiers in Radiology VOLUME=Volume 5 - 2025 YEAR=2025 URL=https://www.frontiersin.org/journals/radiology/articles/10.3389/fradi.2025.1648145 DOI=10.3389/fradi.2025.1648145 ISSN=2673-8740 ABSTRACT=BackgroundNon-invasive and comprehensive molecular characterization of glioma is crucial for personalized treatment but remains limited by invasive biopsy procedures and stringent privacy restrictions on clinical data sharing. Federated learning (FL) provides a promising solution by enabling multi-institutional collaboration without compromising patient confidentiality.MethodsWe propose a multi-task 3D deep neural network framework based on federated learning. Using multi-modal MRI images, without sharing the original data, the automatic segmentation of T2w high signal region and the prediction of four molecular markers (IDH mutation, 1p/19q co-deletion, MGMT promoter methylation, WHO grade) were completed in collaboration with multiple medical institutions. We trained the model on local patient data at independent clients and aggregated the model parameters on a central server to achieve distributed collaborative learning. The model was trained on five public datasets (n = 1,552) and evaluated on an external validation dataset (n = 466).ResultsThe model showed good performance in the external test set (IDH AUC = 0.88, 1p/19q AUC = 0.84, MGMT AUC = 0.85, grading AUC = 0.94), and the median Dice of the segmentation task was 0.85.ConclusionsOur federated multi-task deep learning model demonstrates the feasibility and effectiveness of predicting glioma molecular characteristics and grade from multi-parametric MRI, without compromising patient privacy. These findings suggest significant potential for clinical deployment, especially in scenarios where invasive tissue sampling is impractical or risky.