Alphonse Sherly, Mathew Fidal, Dhanush K, Dinesh V
School of Computer Science and Engineering, Vellore Institute of Technology, Chennai, India.
Sci Rep. 2025 Apr 7;15(1):11889. doi: 10.1038/s41598-025-96416-6.
Brain tumors are an extremely deadly condition and the growth of abnormal cells that have formed inside the brain causes the illness. According to studies, Magnetic Resonance Imaging (MRI) is a fundamental imaging method that is frequently used in medical diagnostics to identify, treat, and routinely check for brain cancers. These images include extremely private and delicate details regarding the brain health of the individuals and it must be treated with much care to ensure anonymity of patients. However, traditional brain tumor segmentation techniques usually rely on centralized data storage and analysis, which might result in privacy issues and violations. Federated learning offers a solution by enabling the cooperative development of brain tumor segmentation models without necessitating the transfer of raw patient data to a centralized location. All the data are held securely within their institution. A Reinforcement Learning-based Federated Averaging (RL-FedAvg) model is proposed that fuses the Federated Averaging (FedAvg) model with Reinforcement Learning (RL). To optimize the global model for image segmentation jobs as well as to govern the consumption of client resources, the model dynamically updates client hyperparameters upon real-time performance feedback. A Double Attention-based Multiscale Dense-U-Net model, known as mixed-fed-UNet, is proposed in the work that uses the RL-FedAvg algorithm. The proposed technique achieves 98.24% accuracy and 93.28% dice coefficient on BraTs 2020 dataset. While comparing the developed model with the other existing methods, the proposed methodology shows better performance.
脑肿瘤是一种极其致命的疾病,由大脑内部形成的异常细胞生长引发。研究表明,磁共振成像(MRI)是医学诊断中常用的一种基本成像方法,用于识别、治疗和定期检查脑癌。这些图像包含有关个人脑部健康的极其私密和精细的细节,必须谨慎处理以确保患者的匿名性。然而,传统的脑肿瘤分割技术通常依赖集中式数据存储和分析,这可能导致隐私问题和侵犯行为。联邦学习提供了一种解决方案,通过使脑肿瘤分割模型能够协同开发,而无需将原始患者数据传输到集中位置。所有数据都安全地保存在各自的机构内。提出了一种基于强化学习的联邦平均(RL-FedAvg)模型,该模型将联邦平均(FedAvg)模型与强化学习(RL)相融合。为了优化用于图像分割任务的全局模型并管理客户端资源的消耗,该模型根据实时性能反馈动态更新客户端超参数。在这项工作中还提出了一种基于双重注意力的多尺度密集U-Net模型,称为混合联邦U-Net,它使用RL-FedAvg算法。所提出的技术在BraTs 2020数据集上实现了98.24%的准确率和93.28%的骰子系数。在将开发的模型与其他现有方法进行比较时,所提出的方法表现出更好的性能。