论文标题

美联储:使用堆叠的联邦学习监控的个性化活动监控

FedStack: Personalized activity monitoring using stacked federated learning

论文作者

Shaik, Thanveer, Tao, Xiaohui, Higgins, Niall, Gururajan, Raj, Li, Yuefeng, Zhou, Xujuan, Acharya, U Rajendra

论文摘要

远程患者监测(RPM)系统的最新进展可以识别各种人类活动,以测量生命体征,包括浅表血管的微妙运动。通过解决已知的局限性和挑战(例如预测和分类生命体征和身体运动),将人工智能(AI)应用于该领域的医疗保健领域越来越兴趣,这些局限性和挑战被认为是至关重要的任务。联合学习是一种相对较新的AI技术,旨在通过分散传统的机器学习建模来增强数据隐私。但是,传统的联合学习需要在本地客户和全球服务器上培训相同的建筑模型。由于缺乏本地模型异质性,这限制了全球模型体系结构。为了克服这一点,在本研究中提出了一种新型联邦学习体系结构FedStack,该体系结构支持结合异构建筑客户端模型。这项工作提供了一个受保护的隐私系统,用于以分散的方式住院的住院患者,并确定最佳传感器位置。提出的架构被应用于从10个不同主题的移动健康传感器基准数据集中,以对12个常规活动进行分类。对单个主题数据培训了三个AI模型,ANN,CNN和BI-LSTM。联合学习体系结构用于这些模型,以构建能够以最先进的表演的本地和全球模型。在每个主题数据上,本地CNN模型优于ANN和BI-LSTM模型。与同质堆叠相比,我们提出的工作表明,当地模型的异质堆叠表现出更好的性能。这项工作为建立增强的RPM系统奠定了基础,该系统纳入了客户隐私,以帮助急性心理健康设施中患者进行临床观察,并最终有助于防止意外死亡。

Recent advances in remote patient monitoring (RPM) systems can recognize various human activities to measure vital signs, including subtle motions from superficial vessels. There is a growing interest in applying artificial intelligence (AI) to this area of healthcare by addressing known limitations and challenges such as predicting and classifying vital signs and physical movements, which are considered crucial tasks. Federated learning is a relatively new AI technique designed to enhance data privacy by decentralizing traditional machine learning modeling. However, traditional federated learning requires identical architectural models to be trained across the local clients and global servers. This limits global model architecture due to the lack of local models heterogeneity. To overcome this, a novel federated learning architecture, FedStack, which supports ensembling heterogeneous architectural client models was proposed in this study. This work offers a protected privacy system for hospitalized in-patients in a decentralized approach and identifies optimum sensor placement. The proposed architecture was applied to a mobile health sensor benchmark dataset from 10 different subjects to classify 12 routine activities. Three AI models, ANN, CNN, and Bi-LSTM were trained on individual subject data. The federated learning architecture was applied to these models to build local and global models capable of state of the art performances. The local CNN model outperformed ANN and Bi-LSTM models on each subject data. Our proposed work has demonstrated better performance for heterogeneous stacking of the local models compared to homogeneous stacking. This work sets the stage to build an enhanced RPM system that incorporates client privacy to assist with clinical observations for patients in an acute mental health facility and ultimately help to prevent unexpected death.

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