School of Electronic Science and Engineering (National Model Microelectronics College), Xiamen University, Xiamen 361005, China.
Innovation Laboratory for Sciences and Technologies of Energy Materials of Fujian Province (IKKEM), Xiamen 361005, China.
Sensors (Basel). 2023 Jan 4;23(2):597. doi: 10.3390/s23020597.
As one of the most remarkable indicators of physiological health, heart rate (HR) has become an unfailing investigation for researchers. Unlike many existing methods, this article proposes an approach to implement short-time HR estimation from electrocardiography in time series missing patterns. Benefiting from the rapid development of deep learning, we adopted a bidirectional long short-term memory model (Bi-LSTM) and temporal convolution network (TCN) to recover complete heartbeat signals from those with durations are less than one cardiac cycle, and the estimated HR from recovered segment combining the input and the predicted output. We also compared the performance of Bi-LSTM and TCN in PhysioNet dataset. Validating the method over a resting heart rate range of 60−120 bpm in the database without significant arrhythmias and a corresponding range of 30−150 bpm in the database with arrhythmias, we found that networks provide an estimated approach for incomplete signals in a fixed format. These results are consistent with real heartbeats in the normal heartbeat dataset (γ > 0.7, RMSE < 10) and in the arrhythmia database (γ > 0.6, RMSE < 30), verifying that HR could be estimated by models in advance. We also discussed the short-time limits for the predictive model. It could be used for physiological purposes such as mobile sensing in time-constrained scenarios, and providing useful insights for better time series analyses in missing data patterns.
心率(HR)作为生理健康最显著的指标之一,一直是研究人员的可靠研究对象。与许多现有的方法不同,本文提出了一种从心电图时间序列缺失模式中实现短时间 HR 估计的方法。受益于深度学习的快速发展,我们采用了双向长短时记忆模型(Bi-LSTM)和时间卷积网络(TCN),从持续时间小于一个心动周期的缺失部分中恢复完整的心跳信号,并将从恢复的部分和输入及预测输出中估计的 HR 相结合。我们还在 PhysioNet 数据集上比较了 Bi-LSTM 和 TCN 的性能。在数据库中没有明显心律失常的 60-120 bpm 的静息心率范围内和数据库中存在心律失常的 30-150 bpm 的对应范围内验证该方法,我们发现网络为固定格式的不完整信号提供了一种估计方法。这些结果与正常心跳数据集(γ>0.7,RMSE<10)和心律失常数据库(γ>0.6,RMSE<30)中的真实心跳一致,验证了模型可以提前估计 HR。我们还讨论了预测模型的短期限制。它可用于移动感应等时间受限场景中的生理目的,并为缺失数据模式中的更好时间序列分析提供有用的见解。