Multi-Institutional Deep Learning Modeling Without Sharing Patient Data: A Feasibility Study on Brain Tumor Segmentation.

Micah J Sheller, G Anthony Reina, Brandon Edwards, Jason Martin, Spyridon Bakas
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引用次数: 334

Abstract

Deep learning models for semantic segmentation of images require large amounts of data. In the medical imaging domain, acquiring sufficient data is a significant challenge. Labeling medical image data requires expert knowledge. Collaboration between institutions could address this challenge, but sharing medical data to a centralized location faces various legal, privacy, technical, and data-ownership challenges, especially among international institutions. In this study, we introduce the first use of federated learning for multi-institutional collaboration, enabling deep learning modeling without sharing patient data. Our quantitative results demonstrate that the performance of federated semantic segmentation models (Dice=0.852) on multimodal brain scans is similar to that of models trained by sharing data (Dice=0.862). We compare federated learning with two alternative collaborative learning methods and find that they fail to match the performance of federated learning.

Abstract Image

Abstract Image

Abstract Image

不共享患者数据的多机构深度学习建模:脑肿瘤分割的可行性研究。
图像语义分割的深度学习模型需要大量的数据。在医学成像领域,获取足够的数据是一个重大挑战。标记医学图像数据需要专业知识。机构之间的协作可以解决这一挑战,但将医疗数据共享到集中位置面临各种法律、隐私、技术和数据所有权方面的挑战,特别是在国际机构之间。在本研究中,我们首次将联邦学习用于多机构协作,实现深度学习建模,而无需共享患者数据。我们的定量结果表明,联邦语义分割模型(Dice=0.852)在多模态大脑扫描上的性能与通过共享数据训练的模型(Dice=0.862)相似。我们将联邦学习与两种替代的协作学习方法进行了比较,发现它们都无法达到联邦学习的性能。
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