Department of Medical Engineering, Graduate School of Science and Engineering, Chiba University, 1-33 Yayoi-Cho, Inage-Ku, Chiba, 263-8522, Japan.
Department of Radiology, The University of Tokyo Hospital, 7-3-1 Hongo, Bunkyo-Ku, Tokyo, 113-8655, Japan.
Radiol Phys Technol. 2024 Sep;17(3):725-738. doi: 10.1007/s12194-024-00827-5. Epub 2024 Jul 24.
In this study, we investigated the application of distributed learning, including federated learning and cyclical weight transfer, in the development of computer-aided detection (CADe) software for (1) cerebral aneurysm detection in magnetic resonance (MR) angiography images and (2) brain metastasis detection in brain contrast-enhanced MR images. We used datasets collected from various institutions, scanner vendors, and magnetic field strengths for each target CADe software. We compared the performance of multiple strategies, including a centralized strategy, in which software development is conducted at a development institution after collecting de-identified data from multiple institutions. Our results showed that the performance of CADe software trained through distributed learning was equal to or better than that trained through the centralized strategy. However, the distributed learning strategies that achieved the highest performance depend on the target CADe software. Hence, distributed learning can become one of the strategies for CADe software development using data collected from multiple institutions.
在这项研究中,我们研究了分布式学习(包括联邦学习和循环权重转移)在开发计算机辅助检测(CADe)软件中的应用,该软件用于(1)磁共振(MR)血管造影图像中的脑动脉瘤检测和(2)脑对比增强磁共振图像中的脑转移瘤检测。我们使用从各个机构、扫描仪供应商和磁场强度收集的数据来开发针对每个目标 CADe 软件的软件。我们比较了多种策略的性能,包括集中式策略,该策略在从多个机构收集去标识数据后在开发机构进行软件开发。我们的结果表明,通过分布式学习训练的 CADe 软件的性能与通过集中式策略训练的软件性能相当或更好。然而,实现最高性能的分布式学习策略取决于目标 CADe 软件。因此,分布式学习可以成为使用来自多个机构的数据开发 CADe 软件的策略之一。