健康信息学中深度学习模型分布式协作训练的拆分学习。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Zhuohang Li, Chao Yan, Xinmeng Zhang, Gharib Gharibi, Zhijun Yin, Xiaoqian Jiang, Bradley A Malin
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引用次数: 0

摘要

深度学习的发展日新月异,目前已在众多医疗预测任务中展现出非凡的潜力。然而,要在医疗机构中实现通用的深度学习模型是一项挑战。部分原因在于这些机构固有的孤立性和患者隐私要求。为了解决这个问题,我们阐述了分层学习如何在保持原始记录和模型参数隐私的同时,实现跨不同的、私人维护的医疗数据集的深度学习模型的协作训练。我们介绍了一种新的隐私保护分布式学习框架,与传统的联合学习相比,它能提供更高水平的隐私保护。我们使用几个生物医学成像和电子健康记录(EHR)数据集来证明,通过分离式学习训练的深度学习模型可以获得与集中式和联合式模型高度相似的性能,同时大大提高计算效率并降低隐私风险。
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Split Learning for Distributed Collaborative Training of Deep Learning Models in Health Informatics.

Deep learning continues to rapidly evolve and is now demonstrating remarkable potential for numerous medical prediction tasks. However, realizing deep learning models that generalize across healthcare organizations is challenging. This is due, in part, to the inherent siloed nature of these organizations and patient privacy requirements. To address this problem, we illustrate how split learning can enable collaborative training of deep learning models across disparate and privately maintained health datasets, while keeping the original records and model parameters private. We introduce a new privacy-preserving distributed learning framework that offers a higher level of privacy compared to conventional federated learning. We use several biomedical imaging and electronic health record (EHR) datasets to show that deep learning models trained via split learning can achieve highly similar performance to their centralized and federated counterparts while greatly improving computational efficiency and reducing privacy risks.

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