Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:653-656. doi: 10.1109/EMBC48229.2022.9870926.
Heart rate variability (HRV) is a physiological phenomenon of the variation of a cardiac interval (interbeat) over time that reflects the activity of the autonomic nervous system. HRV analysis is usually based on electrocardiograms (ECG signals) and has found many applications in the diagnosis of cardiac diseases, including valvular diseases. This analysis could also be performed on seismocardiograms (SCG signals) and gyrocardiograms (GCG signals) that provide information on cardiac cycles and the state of heart valves. In our study, we sought to evaluate the influence of valvular heart disease on the correlations between HRV indices obtained from electrocardiograms, seismocardiograms, and gyrocardiograms and to compare the HRV indices obtained from the three aforementioned cardiac signals. The results of HRV analysis in the time domain and frequency domain of the ECG, SCG, and GCG signals are within the standard deviation and have a strong linear correlation. This means that despite the influence of VHDs on the SCG and GCG waveforms, the HRV indices are valid. Clinical Relevance-Cardiac mechanical signals (seismocar-diograms and gyrocardiograms) can be applied to evaluate heart rate variability despite the influence of valvular diseases on the morphology of cardiac mechanical signals.
心率变异性(HRV)是心脏间隔(心搏之间)随时间变化的生理现象,反映自主神经系统的活动。HRV 分析通常基于心电图(ECG 信号),并在心脏病的诊断中找到了许多应用,包括瓣膜病。这种分析也可以在地震心动图(SCG 信号)和陀螺仪心动图(GCG 信号)上进行,这些信号提供了有关心脏周期和心脏瓣膜状态的信息。在我们的研究中,我们试图评估瓣膜性心脏病对从心电图、地震心动图和陀螺仪心动图获得的 HRV 指标之间相关性的影响,并比较从上述三种心脏信号获得的 HRV 指标。ECG、SCG 和 GCG 信号的时域和频域 HRV 分析结果在标准偏差范围内,具有很强的线性相关性。这意味着,尽管 VHD 会影响 SCG 和 GCG 波形,但 HRV 指标仍然有效。临床相关性-尽管瓣膜疾病会影响心脏机械信号的形态,但心脏机械信号(地震心动图和陀螺仪心动图)可用于评估心率变异性。