Effects Of Respiratory-Gated Auricular Vagal Nerve Stimulation (Ravans) On Nonlinear Heartbeat Dynamics In Hypertensive Patients

2017 COMPUTING IN CARDIOLOGY (CINC)(2017)

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摘要
The association between hypertension and cardiac autonomic dysfunction is well recognized and has been linked to the progression of coronary heart disease and heart failure, suggesting that autonomic control pathways may be a therapeutic target. In this study, we investigate the effects of a novel, respiratory-gated, auricular vagal afferent nerve stimulation (RAVANS) technique on heartbeat dynamics of hypertensive patients. Twelve hypertensive subjects underwent two experimental sessions on non-consecutive days. In each session subjects performed an initial paced-breathing (PB) task without intervention, and a second PB task with either RAVANS or sham stimulation. Electrocardiogram and respiration signals were collected and point process nonlinear analysis of heartbeat dynamics was performed to obtain instantaneous time-domain (mu(RR), sigma(RR)), spectral (LF, HF, LF/HF) and bispectral (LL, LH, and HH) features. We found that exhalatory-gated RAVANS resulted in a significant increase in mu(RR), HF and HH compared with PB alone and sham, revealing modulatory effects of this technique on complex dynamics associated with parasympathetic activity. We conclude that exhalatory-gated RAVANS could be a promising intervention for the treatment of cardiac autonomic dysfunction in hypertensive subjects.
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关键词
respiratory-gated auricular vagal nerve stimulation,nonlinear heartbeat dynamics,hypertensive patients,hypertension,cardiac autonomic dysfunction,coronary heart disease,heart failure,autonomic control pathways,therapeutic target,auricular vagal afferent nerve stimulation technique,hypertensive subjects,paced-breathing task,PB task,respiration signals,point process nonlinear analysis,RR,exhalatory-gated RAVANS,modulatory effects,complex dynamics,electrocardiogram,heartbeat dynamics,instantaneous time-domain features,spectral features,bispectral features
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