FUSION: Uncertainty-Guided Federated Semi-Supervised Learning for Medical Image Segmentation

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Abdul Raheem, Zhen Yang, Haiyang Yu, Malik Abdul Manan, Fahad Sabah, Shahzad Ahmed
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引用次数: 0

Abstract

Federated learning (FL) for medical image segmentation poses critical challenges, including non-IID data distributions, limited access to labelled annotations, and stringent privacy constraints across institutions. To address these, we propose FUSION (Federated Unified Semi-Supervised Optimisation Network), a novel dual-path training framework that integrates both Federated Labelled Data Learning (FLDL) and Federated Unlabelled Data Training (FUDT). Central to FUSION is a two-stage pseudo-label refinement strategy designed to ensure robustness under real-world federated constraints. First, synthetic label denoising is performed using Monte Carlo dropout-based uncertainty estimation, enabling clients to identify and exclude low-confidence predictions. Second, prototype-based correction is applied to further refine pseudo-labels by aligning them with class-specific feature centroids, mitigating errors caused by domain shifts and inter-client variability. These refined labels are used for localised training on unlabelled clients, while a dynamic aggregation scheme modulated by a reliability-based hyperparameter μ adjusts the influence of labelled versus unlabelled clients during global model updates. This tightly coupled interaction between pseudo-label quality and federated optimisation ensures stability, accelerates convergence, and enhances generalisation across heterogeneous clients. FUSION is evaluated on three diverse datasets: TCGA-LGG (brain MRI), Kvasir-SEG (colonoscopy), and UDIAT (ultrasound) and consistently outperforms state-of-the-art FL models in Dice, IoU, HD95, and ASD metrics. Results confirm the critical role of synthetic label refinement in enhancing segmentation accuracy, boundary precision, and model scalability. FUSION provides a technically grounded, privacy-preserving, and label-efficient solution for real-world multi-institutional medical image segmentation tasks.

Abstract Image

融合:不确定性引导联邦半监督学习医学图像分割
用于医学图像分割的联邦学习(FL)提出了严峻的挑战,包括非iid数据分布、对标记注释的有限访问以及跨机构的严格隐私约束。为了解决这些问题,我们提出了FUSION(联邦统一半监督优化网络),这是一种新的双路径训练框架,集成了联邦标记数据学习(FLDL)和联邦无标记数据训练(FUDT)。FUSION的核心是一个两阶段的伪标签优化策略,旨在确保在现实世界的联邦约束下的鲁棒性。首先,使用基于蒙特卡罗dropout的不确定性估计进行合成标签去噪,使客户能够识别和排除低置信度的预测。其次,基于原型的校正应用于通过将伪标签与特定类别的特征质心对齐来进一步改进伪标签,从而减轻由领域转移和客户端间可变性引起的错误。这些改进的标签用于未标记客户端的局部训练,而由基于可靠性的超参数μ调制的动态聚合方案在全局模型更新期间调整标记与未标记客户端的影响。伪标签质量和联邦优化之间的这种紧密耦合交互确保了稳定性,加速了收敛,并增强了跨异构客户机的泛化。FUSION在三个不同的数据集上进行评估:TCGA-LGG(脑MRI)、Kvasir-SEG(结肠镜检查)和UDIAT(超声),并且在Dice、IoU、HD95和ASD指标上始终优于最先进的FL模型。结果证实了合成标签细化在提高分割精度、边界精度和模型可扩展性方面的关键作用。FUSION为现实世界的多机构医学图像分割任务提供了技术基础,隐私保护和标签高效的解决方案。
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来源期刊
IET Image Processing
IET Image Processing 工程技术-工程:电子与电气
CiteScore
5.40
自引率
8.70%
发文量
282
审稿时长
6 months
期刊介绍: The IET Image Processing journal encompasses research areas related to the generation, processing and communication of visual information. The focus of the journal is the coverage of the latest research results in image and video processing, including image generation and display, enhancement and restoration, segmentation, colour and texture analysis, coding and communication, implementations and architectures as well as innovative applications. Principal topics include: Generation and Display - Imaging sensors and acquisition systems, illumination, sampling and scanning, quantization, colour reproduction, image rendering, display and printing systems, evaluation of image quality. Processing and Analysis - Image enhancement, restoration, segmentation, registration, multispectral, colour and texture processing, multiresolution processing and wavelets, morphological operations, stereoscopic and 3-D processing, motion detection and estimation, video and image sequence processing. Implementations and Architectures - Image and video processing hardware and software, design and construction, architectures and software, neural, adaptive, and fuzzy processing. Coding and Transmission - Image and video compression and coding, compression standards, noise modelling, visual information networks, streamed video. Retrieval and Multimedia - Storage of images and video, database design, image retrieval, video annotation and editing, mixed media incorporating visual information, multimedia systems and applications, image and video watermarking, steganography. Applications - Innovative application of image and video processing technologies to any field, including life sciences, earth sciences, astronomy, document processing and security. Current Special Issue Call for Papers: Evolutionary Computation for Image Processing - https://digital-library.theiet.org/files/IET_IPR_CFP_EC.pdf AI-Powered 3D Vision - https://digital-library.theiet.org/files/IET_IPR_CFP_AIPV.pdf Multidisciplinary advancement of Imaging Technologies: From Medical Diagnostics and Genomics to Cognitive Machine Vision, and Artificial Intelligence - https://digital-library.theiet.org/files/IET_IPR_CFP_IST.pdf Deep Learning for 3D Reconstruction - https://digital-library.theiet.org/files/IET_IPR_CFP_DLR.pdf
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