联邦学习在非iid心电图心律失常检测中的应用

Mufeng Zhang, Yining Wang, T. Luo
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引用次数: 14

摘要

本文提出了一种基于心电图的分布式心律失常检测算法,用于辅助诊断和治疗。心电图包含了大量的心律信息,在临床治疗中起着重要的作用。机器学习算法可以有效地建立心电图与潜在心律失常之间的关系。由于心电的隐私敏感性,我们引入了一种基于联邦学习(FL)的分布式算法,使每个医疗机构能够在本地合作训练心律失常检测算法。与传统的集中式ML算法相比,使用基于fl的算法不需要将每个医疗机构的所有本地心电图收集到外部平台进行集中学习,从而防止隐私泄露。然而,实际从不同医疗机构采集的心电是非独立同分布(non- iid)的,这将导致基于fl的算法不收敛。为了解决这一挑战,我们使用每个医疗机构的部分心电数据共享策略结合弹性权重巩固(EWC)算法来优化基于fl的算法。其中,各医疗机构将心电数据共享到中央服务器,而不与其他客户端共享的共享策略可以帮助建立初始的FL模型,EWC算法可以使各医疗机构训练的模型精度不下降,因此所提出的FL算法可以在隐私和模型性能之间实现折衷。实验结果表明,与基线FedAvg算法和FedCurv算法相比,优化后的基于fl的算法对IID心电的收敛速度更快,对非IID心电的查全率和查准率都有显著提高。
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Federated Learning for Arrhythmia Detection of Non-IID ECG
In this paper, a distributed arrhythmia detection algorithm based on electrocardiogram (ECG) is proposed for auxiliary diagnosis and treatment. ECG that contains tremendous cardiac rhythm information plays an important role in clinical treatment. Machine learning (ML) algorithms can effectively build the relationship between ECG and the underlying arrhythmia in it. Due to the privacy sensitivity of the ECG, we introduced a federated learning (FL)-based distributed algorithm that enables each medical institution to cooperatively train a arrhythmia detection algorithm locally. Compared with the traditional centralized ML algorithms, the use of FL-based algorithm does not need to collect all the local ECG of each medical institution to an external platform to perform centralized learning, and hence preventing the privacy from leakage. However, ECG collected from different medical institution is non-independent and identically distributed (non-IID) in reality, which will lead to non convergence of the FL-based algorithm. To address this challenge, we optimize the FL-based algorithm using a sharing strategy for partial ECG data of each medical institution combined with elastic weight consolidation (EWC) algorithm. Here, the sharing strategy, which makes each medical institution share ECG data to the central server while not share to other clients, could help build an initial FL model and EWC algorithm make the accuracy of the model trained by each medical institution not decline, therefore the proposed FL algorithm can achieve a trade-off between the privacy and model performance. The experiment results show that, compared with baseline FedAvg algorithm and FedCurv algorithm, the optimized FL-based algorithm is faster in convergence for IID ECG and achieves signicant improvement in terms of both recall and precision for non-IID ECG.
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