Medical Federated Model With Mixture of Personalized and Shared Components

Yawei Zhao;Qinghe Liu;Pan Liu;Xinwang Liu;Kunlun He
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Abstract

Although data-driven methods usually have noticeable performance on disease diagnosis and treatment, they are suspected of leakage of privacy due to collecting data for model training. Recently, federated learning provides a secure and trustable alternative to collaboratively train model without any exchange of medical data among multiple institutes. Therefore, it has draw much attention due to its natural merit on privacy protection. However, when heterogenous medical data exists between different hospitals, federated learning usually has to face with degradation of performance. In the paper, we propose a new personalized framework of federated learning to handle the problem. It successfully yields personalized models based on awareness of similarity between local data, and achieves better tradeoff between generalization and personalization than existing methods. After that, we further design a differentially sparse regularizer to improve communication efficiency during procedure of model training. Additionally, we propose an effective method to reduce the computational cost, which improves computation efficiency significantly. Furthermore, we collect five real medical datasets, including two public medical image datasets and three private multi-center clinical diagnosis datasets, and evaluate its performance by conducting nodule classification, tumor segmentation, and clinical risk prediction tasks. Comparing with 14 existing related methods, the proposed method successfully achieves the best model performance, and meanwhile up to 60% improvement of communication efficiency.
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混合个性化和共享组件的医疗联盟模式
虽然数据驱动的方法通常在疾病诊断和治疗方面有明显的表现,但由于收集数据用于模型训练,因此有泄露隐私的嫌疑。最近,联邦学习为协作训练模型提供了一种安全可靠的替代方案,而无需在多个机构之间交换任何医疗数据。因此,它因其在隐私保护方面的天然优势而备受关注。然而,当不同医院之间存在异质医疗数据时,联邦学习往往面临性能下降的问题。在本文中,我们提出了一个新的个性化的联邦学习框架来解决这个问题。它成功地生成了基于局部数据之间相似度感知的个性化模型,并在泛化和个性化之间实现了比现有方法更好的权衡。在此基础上,进一步设计了差分稀疏正则化器,提高了模型训练过程中的通信效率。此外,我们还提出了一种有效的降低计算成本的方法,大大提高了计算效率。此外,我们收集了5个真实的医疗数据集,包括2个公共医学图像数据集和3个私人多中心临床诊断数据集,并通过进行结节分类、肿瘤分割和临床风险预测任务来评估其性能。与现有的14种相关方法相比,该方法成功地获得了最佳的模型性能,同时通信效率提高了60%。
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