Wen Jun, Li Xiusheng, Ye Xin, Li Xiaoli, Mao Hang
School of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu, China.
Sichuan Xinwang Bank, China, No. 8, Jitai Road, Chengdu High-Tech Zone, Chengdu, China.
Sci Rep. 2025 Jul 1;15(1):21053. doi: 10.1038/s41598-025-05297-2.
Brain image segmentation plays a pivotal role in modern healthcare by enabling precise diagnosis and treatment planning. Federated Learning (FL) enables collaborative model training across institutions while safeguarding sensitive patient data. The integration of these technologies holds significant potential for advancing artificial intelligence (AI) in healthcare. However, medical institutions frequently encounter data imbalances, where some have limited annotated brain imaging data, whereas others possess larger datasets and more diverse cases. Such data exhibit non-independent, non-identically distributed characteristics, which adversely affect segmentation accuracy and generalizability. To address these issues, this paper proposes a client-side brain tumor image segmentation model utilizing Virtual Adversarial Training (VAT) integrated into a 3D U-Net to improve model performance under conditions of limited datasets, effectively addressing data scarcity and imbalance within the federated learning environment by optimizing the use of brain tumor image data held by each client. FedHG introduces an effective federated model aggregation strategy that leverages key parameters, specifically the 'weights' derived from a public validation dataset. Additionally, instance normalization parameters are incorporated into client models during training. These strategies collectively enhance the generalizability of the federated model. Empirical experiments validate the proposed algorithm, showing a 2.2% improvement in the Dice Similarity Coefficient (DSC) for brain tumor segmentation over the baseline federated learning algorithm, with a marginal 3% reduction in performance compared to centralized training, highlighting its practical applicability.
脑图像分割通过实现精确诊断和治疗规划在现代医疗保健中发挥着关键作用。联邦学习(FL)能够跨机构进行协作式模型训练,同时保护患者的敏感数据。这些技术的整合在推进医疗保健领域的人工智能(AI)方面具有巨大潜力。然而,医疗机构经常遇到数据不平衡的问题,一些机构的脑成像标注数据有限,而另一些机构拥有更大的数据集和更多样化的病例。此类数据呈现出非独立、非均匀分布的特征,这对分割精度和泛化能力产生不利影响。为了解决这些问题,本文提出了一种客户端脑肿瘤图像分割模型,该模型利用集成到3D U-Net中的虚拟对抗训练(VAT),以在数据集有限的情况下提高模型性能,通过优化每个客户端持有的脑肿瘤图像数据的使用,有效解决联邦学习环境中的数据稀缺和不平衡问题。FedHG引入了一种有效的联邦模型聚合策略,该策略利用关键参数,特别是从公共验证数据集中导出的“权重”。此外,在训练期间将实例归一化参数纳入客户端模型。这些策略共同提高了联邦模型的泛化能力。实证实验验证了所提出的算法,结果表明,与基线联邦学习算法相比,脑肿瘤分割的骰子相似系数(DSC)提高了2.2%,与集中式训练相比性能略有下降3%,突出了其实际适用性。