FedLPPA:为联合弱监督医学图像分割学习个性化提示和聚合

Li Lin;Yixiang Liu;Jiewei Wu;Pujin Cheng;Zhiyuan Cai;Kenneth K. Y. Wong;Xiaoying Tang
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引用次数: 0

摘要

联邦学习(FL)有效地缓解了由策略和隐私问题带来的数据孤岛挑战,隐含地利用更多数据进行深度模型训练。然而,传统的集中式FL模型难以处理不同的多中心数据,特别是在面对显著的数据异质性时,特别是在医学环境中。在医学图像分割领域,越来越迫切需要减少注释成本,这就放大了利用稀疏注释(如点、涂鸦等)的弱监督技术的重要性。一个实用的FL范例应该适应不同站点的不同注释格式,这一研究主题仍有待研究。在这种背景下,我们提出了一种具有可学习提示和聚合的个性化FL框架(FedLPPA),以统一利用异构弱监督进行医学图像分割。在FedLPPA中,维护一个可学习的通用知识提示,辅以多个可学习的个性化数据分布提示和代表监督稀疏性的提示。这些提示通过双注意机制与示例功能集成,使每个本地任务解码器能够熟练地适应本地分布和监督形式。同时,引入了基于提示相似性的双解码器策略,以增强弱监督学习中伪标签的生成,减轻局部数据固有的过拟合和噪声积累,同时采用自适应聚合方法在参数基础上定制任务解码器。在涉及不同模式的四种不同医学图像分割任务上的大量实验强调了FedLPPA的优越性,其效果与完全监督的集中训练非常相似。我们的代码和数据可以在https://github.com/llmir/FedLPPA上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedLPPA: Learning Personalized Prompt and Aggregation for Federated Weakly-Supervised Medical Image Segmentation
Federated learning (FL) effectively mitigates the data silo challenge brought about by policies and privacy concerns, implicitly harnessing more data for deep model training. However, traditional centralized FL models grapple with diverse multi-center data, especially in the face of significant data heterogeneity, notably in medical contexts. In the realm of medical image segmentation, the growing imperative to curtail annotation costs has amplified the importance of weakly-supervised techniques which utilize sparse annotations such as points, scribbles, etc. A pragmatic FL paradigm shall accommodate diverse annotation formats across different sites, which research topic remains under-investigated. In such context, we propose a novel personalized FL framework with learnable prompt and aggregation (FedLPPA) to uniformly leverage heterogeneous weak supervision for medical image segmentation. In FedLPPA, a learnable universal knowledge prompt is maintained, complemented by multiple learnable personalized data distribution prompts and prompts representing the supervision sparsity. Integrated with sample features through a dual-attention mechanism, those prompts empower each local task decoder to adeptly adjust to both the local distribution and the supervision form. Concurrently, a dual-decoder strategy, predicated on prompt similarity, is introduced for enhancing the generation of pseudo-labels in weakly-supervised learning, alleviating overfitting and noise accumulation inherent to local data, while an adaptable aggregation method is employed to customize the task decoder on a parameter-wise basis. Extensive experiments on four distinct medical image segmentation tasks involving different modalities underscore the superiority of FedLPPA, with its efficacy closely parallels that of fully supervised centralized training. Our code and data will be available at https://github.com/llmir/FedLPPA.
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