Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:1735-1739. doi: 10.1109/EMBC46164.2021.9630875.
Fifth-generation (5G) cellular networks promise higher data rates, lower latency, and large numbers of inter-connected devices. Thereby, 5G will provide important steps towards unlocking the full potential of the Internet of Things (IoT). In this work, we propose a lightweight IoT platform for continuous vital sign analysis. Electrocardiography (ECG) is acquired via textile sensors and continuously sent from a smartphone to an edge device using cellular networks. The edge device applies a state-of-the art deep learning model for providing a binary end-to-end classification if a myocardial infarction is at hand. Using this infrastructure, experiments with four volunteers were conducted. We compare 3rd, 4th-, and 5th-generation cellular networks (release 15) with respect to transmission latency, data corruption, and duration of machine learning inference. The best performance is achieved using 5G showing an average transmission latency of 110ms and data corruption in 0.07% of ECG samples. Deep learning inference took approximately 170ms. In conclusion, 5G cellular networks in combination with edge devices are a suitable infrastructure for continuous vital sign analysis using deep learning models. Future 5G releases will introduce multi-access edge computing (MEC) as a paradigm for bringing edge devices nearer to mobile clients. This will decrease transmission latency and eventually enable automatic emergency alerting in near real-time.
第五代(5G)蜂窝网络承诺提供更高的数据速率、更低的延迟和更多相互连接的设备。因此,5G 将为物联网(IoT)的全面发展提供重要的推动。在这项工作中,我们提出了一个用于连续生命体征分析的轻量级物联网平台。心电图(ECG)通过纺织传感器采集,并使用蜂窝网络从智能手机连续发送到边缘设备。边缘设备应用最先进的深度学习模型,提供端到端的二进制分类,如果出现心肌梗死。使用这种基础设施,对四名志愿者进行了实验。我们比较了第三代、第四代和第五代蜂窝网络(第 15 版)在传输延迟、数据损坏和机器学习推断持续时间方面的性能。使用 5G 可实现最佳性能,平均传输延迟为 110ms,ECG 样本中数据损坏的比例为 0.07%。深度学习推断大约需要 170ms。总之,5G 蜂窝网络与边缘设备相结合,是使用深度学习模型进行连续生命体征分析的合适基础架构。未来的 5G 版本将引入多接入边缘计算(MEC)作为一种将边缘设备更接近移动客户端的范例。这将降低传输延迟,并最终实现近乎实时的自动紧急警报。