Cloud Computing Management Architecture for Digital Health Remote Patient Monitoring

Hsuan Su, L. Yao, Dennis Hou, M. Sun, Janpu Hou, Jeffrey Ying, Hsin-Yu Feng, Po-Ying Chen, Raymond Hou
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Abstract

With machine learning, the remote patient monitoring (RPM) devices are no longer just remote data collection devices. In addition to data analytics, data security and systems integration are also core challenges for developers of the next generation of innovative RPM devices. This includes overcoming technological barriers on applying machine learning algorithms to patient data directly on devices and regulatory barriers on patient data privacy. To address these challenges, this study proposed a unified edge-cloud computing architecture to effectively integrate all the RPM devices in use by the individual patient. All the remote patient monitoring data are managed by edge computing, only the latent representations are uploaded to the cloud for AI-assisted decision making. The proposed model has three modules. The edge medical image module used a subspace learning model for anomalies detection and unhealthy signs and symptoms classification. The edge medical time series module used spectral residual for anomalies detection and scattering wavelet network for severity classification. The cloud telehealth management module used convolutional neural network, recurrent neural network and attention model to provide individual patient treatment plan and medicine delivery schedule. The proposed platform has been tested on various RPM devices to provide AI-based anomaly detection and symptoms classifications. The application of the proposed platform has demonstrated that the on-device training model can enable faster and more accurate diagnosis and treatment. For meso-level organizational interoperability on health information exchange, we will only transmit the latent representation instead of the patient’s raw data to reduce cyberattacks and ensure confidentiality of health data.
数字健康远程患者监测的云计算管理架构
有了机器学习,远程病人监护(RPM)设备不再仅仅是远程数据收集设备。除了数据分析,数据安全和系统集成也是下一代创新RPM设备开发人员面临的核心挑战。这包括克服将机器学习算法直接应用于设备上的患者数据的技术障碍,以及患者数据隐私方面的监管障碍。为了解决这些挑战,本研究提出了一个统一的边缘云计算架构,以有效地集成个体患者使用的所有RPM设备。所有远程患者监护数据均通过边缘计算进行管理,仅将潜在表征上传到云端进行人工智能辅助决策。提出的模型有三个模块。边缘医学图像模块使用子空间学习模型进行异常检测和不健康体征和症状分类。边缘医学时间序列模块采用光谱残差进行异常检测,散射小波网络进行严重程度分类。云远程医疗管理模块采用卷积神经网络、递归神经网络和关注模型提供患者个性化治疗方案和给药时间表。该平台已在各种RPM设备上进行了测试,以提供基于人工智能的异常检测和症状分类。该平台的应用表明,设备上训练模型可以实现更快、更准确的诊断和治疗。对于健康信息交换的中观组织互操作性,我们将只传输潜在表示而不是患者的原始数据,以减少网络攻击并确保健康数据的机密性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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