Chen Shuyang, Luo Huaijian, Lyu Weimin, Yu Jianxun, Qin Jing, Yu Changyuan
Opt Express. 2023 Aug 28;31(18):29606-29618. doi: 10.1364/OE.499746.
A compressed sensing (CS) framework is built for ballistocardiography (BCG) signals, which contains two parts of an optical fiber sensor-based heart monitoring system with a CS module and an end-to-end deep learning-based reconstruction algorithm. The heart monitoring system collects BCG data, and then compresses and transmits the data through the CS module at the sensing end. The deep learning-based algorithm reconstructs compressed data at the received end. To evaluate results, three traditional CS reconstruction algorithms and a deep learning method are adopted as references to reconstruct the compressed BCG data with different compression ratios (CRs). Results show that our framework can reconstruct signals successfully when the CR grows from 50% to 95% and outperforms other methods at high CRs. The mean absolute error (MAE) of the estimated heartbeat rate (HR) is lower than 1 bpm when the CR is below 95%. The proposed CS framework for BCG signals can be integrated into the IoMT system, which has great potential in health care for both medical and home use.
为心冲击图(BCG)信号构建了一个压缩感知(CS)框架,该框架包含基于光纤传感器的心脏监测系统的两个部分,即带有CS模块的系统和基于端到端深度学习的重建算法。心脏监测系统收集BCG数据,然后在传感端通过CS模块对数据进行压缩和传输。基于深度学习的算法在接收端重建压缩数据。为了评估结果,采用三种传统的CS重建算法和一种深度学习方法作为参考,以重建具有不同压缩率(CR)的压缩BCG数据。结果表明,当CR从50%增长到95%时,我们的框架能够成功重建信号,并且在高CR时优于其他方法。当CR低于95%时,估计心率(HR)的平均绝对误差(MAE)低于1次/分钟。所提出的用于BCG信号的CS框架可以集成到物联网医疗(IoMT)系统中,在医疗和家庭健康护理方面具有巨大潜力。