使用深度强化学习的物联网智能医疗保健系统

D. J. Jagannath, Raveena Judie Dolly, G. S. Let, James Dinesh Peter
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引用次数: 1

摘要

智能医疗保健系统确实存在各种各样的架构。然而,寻找更好的智能医疗保健系统更为重要。物联网(IoT)的前沿领域和技术发展为使用传感器身体区域网络的智能医疗系统提供了更好的解决方案。因此,患者的传感器数据可以被收集、存储、分析,并可以通过网络随时随地提供合适的治疗。在这些系统中,最复杂的部分是医生对大量患者数据的分析,以处理和准备适合人类的诊断和治疗。本文揭示了一种在物联网接口的智能医疗智能监控系统中用于智能医疗决策的深度强化学习方法。该系统包含患者数据采集、边缘计算、患者数据传输和云计算四层。物联网用于自动收集患者数据并将数据传输到数据中心。人工智能技术用于分析这些数据,为患者和人类提供合适的决策、诊断和治疗。深度强化学习为智能决策、诊断和治疗提供了平台。用各种BAN传感器的综合模拟数据进行了实验。我们开发了一个大小为286的数据集,其中包含21种不同的健康参数。预处理后,这些数据使用(消息队列遥测和传输)MQTT-IoT协议存储在亚马逊网络服务(AWS)云服务器中。最初,将深度Q网络(Deep Q‐Network, DQN)应用于训练算法。该方法在PyTorch中使用单个GTX 1080 Ti X GPU进行检查,训练数据大小从27到1536。训练500次,训练时间约为10000 ~ 90000 s。在高维动作空间环境中,该算法在分析、探索和确定有效的医疗策略时反应缓慢。对21个不同的健康参数(取值范围为0 ~ 1)估计的隐健康状态(g′)和实际健康状态(g)的系统收敛响应进行了估计。该系统做出了智能的果断干预,效果很好,接近于医生的决定。所提出的方法绝对是一个有前途的解决方案,智能和经济的远程医疗。
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An IoT enabled smart healthcare system using deep reinforcement learning
Smart healthcare systems do exist with a variety of architectures. However, the hunt for better smart healthcare systems is more predominant. The cutting‐edge field of IoT (internet of things) and technological developments provide better solutions for smart healthcare systems using Sensor–Body Area Networks. Thus, the patient's sensor data can be collected, stored, analyzed, and suitable treatments can be offered, over the inter‐network, anytime, anywhere. The most complex part in such systems is the physician analysis of the huge volume of patient's data, to handle and prepare suitable diagnose and treatment for humanity. This article reveals a methodology of Deep Reinforcement Learning for smart healthcare decisions in an IoT interfaced Smart Healthcare–intelligent monitoring system. The system incorporates four layers, patient data collection, Edge computing, patient data transmission and Cloud computing. IoT is employed for automatic collection of Patient's data and for transmission of data, to data centers. Artificial intelligence techniques are used to analyze these data to provide suitable decisions, diagnosis, and treatment for those patients and humanity. Deep Reinforcement Learning provides the platform for smart decisions, diagnosis, and treatment. The investigation was experimented with synthetic simulated data of various BAN sensors. We developed a data set of size 286, which contains 21 different health parameters. After pre‐processing, these data were stored in the Amazon web services (AWS) cloud server using (message queue telemetry and transport) MQTT–IoT protocol. Initially, the Deep Q‐Network (DQN) was imposed to the training algorithm. The methodology was examined in PyTorch using a single GTX 1080 Ti X GPU with the training data sizes from 27 to 1536. The training time was about 10,000 to 90,000 s for training 500 epochs. In the high dimensional action space environment, the algorithm responded slowly to analyze, explore, and determine effective healthcare strategies. The systems convergence response of estimated hidden health state (g') and the actual health state (g) for the 21 different health parameters were estimated, whose values range from 0 to 1. The system responded with smart decisive interventions, which were good and close to that of a Physician's decision. The proposed methodology is definitely a promising solution for a smart and economic telemedicine.
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