论文标题
缩小联合医学图像分割的跨核电差距的概括差距
Closing the Generalization Gap of Cross-silo Federated Medical Image Segmentation
论文作者
论文摘要
近年来,Cross-Silo联合学习(FL)在医学成像分析中引起了很多关注,因为它可以解决数据,数据隐私和培训效率不足的关键问题。但是,从FL训练的模型与集中式培训的模型之间可能存在概括性差距。这个重要的问题来自参与客户中本地数据的非IID数据分布,并众所周知客户漂移。在这项工作中,我们提出了一个新颖的培训框架FEDSM,以避免客户漂移问题,并成功地缩小了与医疗图像分割任务的集中式培训相比,成功缩小了概括差距。我们还提出了一种新型的个性化目标配方,并提出了一种在我们提出的框架FEDSM中解决的新方法。我们进行严格的理论分析,以确保其融合以优化非凸平的光滑目标函数。使用深FL的现实世界医学图像分割实验验证了我们提出的方法的动机和有效性。
Cross-silo federated learning (FL) has attracted much attention in medical imaging analysis with deep learning in recent years as it can resolve the critical issues of insufficient data, data privacy, and training efficiency. However, there can be a generalization gap between the model trained from FL and the one from centralized training. This important issue comes from the non-iid data distribution of the local data in the participating clients and is well-known as client drift. In this work, we propose a novel training framework FedSM to avoid the client drift issue and successfully close the generalization gap compared with the centralized training for medical image segmentation tasks for the first time. We also propose a novel personalized FL objective formulation and a new method SoftPull to solve it in our proposed framework FedSM. We conduct rigorous theoretical analysis to guarantee its convergence for optimizing the non-convex smooth objective function. Real-world medical image segmentation experiments using deep FL validate the motivations and effectiveness of our proposed method.