Objective and Impact Statement: Accurate organ segmentation is critical for many clinical applications at different clinical sites, which may have their specific application requirements that concern different organs. Introduction: However, learning high-quality, site-specific organ segmentation models is challenging as it often needs on-site curation of a large number of annotated images. Security concerns further complicate the matter. Methods: The paper aims to tackle these challenges via a two-phase aggregation-then-adaptation approach. The first phase of federated aggregation learns a single multi-organ segmentation model by leveraging the strength of 'bigger data', which are formed by (i) aggregating together datasets from multiple sites that with different organ labels to provide partial supervision, and (ii) conducting partially supervised learning without data breach. The second phase of site adaptation is to transfer the federated multi-organ segmentation model to site-specific organ segmentation models, one model per site, in order to further improve the performance of each site's organ segmentation task. Furthermore, improved marginal loss and exclusion loss functions are used to avoid 'knowledge conflict' problem in a partially supervision mechanism. Results and Conclusion: Extensive experiments on five organ segmentation datasets demonstrate the effectiveness of our multi-site approach, significantly outperforming the site-per-se learned models and achieving the performance comparable to the centrally learned models.
翻译:目标和影响说明:准确的器官分解对不同临床地点的许多临床应用至关重要,这些临床应用可能具有与不同器官有关的具体应用要求。 导言:然而,学习高质量的、特定地点的器官分解模型具有挑战性,因为往往需要现场整理大量附加说明的图像。 安全问题使问题更加复杂。 方法:本文件的目的是通过一个两阶段的集成-当时的适应办法应对这些挑战。 联邦集成的第一阶段通过利用“双胞胎数据”的强度来学习单一的多器官分解模型,而“双胞胎数据”的强度是通过以下方式形成的:(一) 将不同器官标签的多个地点的数据集集中起来,提供部分监督,以及(二) 进行部分监督性学习,而不破坏数据。第二阶段的调整是将联邦多器官分解模型转移到特定地点的器官分解模型,每个地点有一个模型,以进一步改进每个地点的器官分解任务的绩效。此外,改进的边际损失和排斥性损失功能被用来避免“知识冲突”问题,其形成一个部分的多器官标签,其结果和结论:大规模实验:在现场学习的模型上取得显著的业绩。