Determination of the Effects of Transcutaneous Auricular Vagus Nerve Stimulation on the Heart Rate Variability Using a Machine Learning Pipeline.

IF 1.6 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY Bioelectricity Pub Date : 2022-09-01 DOI:10.1089/bioe.2021.0033
Anna Tarasenko, Stefano Guazzotti, Thomas Minot, Mikheil Oganesyan, Nickolai Vysokov
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Abstract

Background: We are all aware of day-to-day healthy stress, but, when sustained for long periods, stress is believed to lead to serious physical and mental health issues.

Materials and methods: In this study, we investigated the potential effects of transcutaneous auricular vagus nerve stimulation (taVNS) on stress processing as reflected in the electrocardiogram (ECG)-derived biomarkers of stress adaptability. Stress reflecting biomarkers included a range of heart rate variability metrics: standard deviation of N-N intervals (SDNN), root mean squared of successive differences in heartbeat intervals (RMSSD), low-frequency component, high-frequency component and their ratio (LF, HF, and LF/HF).In addition, we created a machine learning model capable of distinguishing between the stimulated and nonstimulated conditions from the ECG-derive data from various subjects and states. The model consisted of a deep convolutional neural network, which was trained on R-R interval (RRI) data extracted from ECG and time traces of LF, HF, LF/HF, SDNN, and RMSSD.

Results: Only LF/HF ratio demonstrated a statistically significant change in response to stimulation. Although the LF/HF ratio is expected to increase during exposure to stress, we have observed that stimulation during exposure to stress counteracts this increase or even reduces the LF/HF ratio. This could be an indication that the vagus nerve stimulation decreases the sympathetic activation during stress inducement.Our Machine Learning model achieved an accuracy of 70% with no significant variations across the three states (baseline, stress, and recovery). However, training an analogous neural network to identify the states (baseline, stress, and recovery) proved to be unsuccessful.

Conclusion: Overall, in this study, we showed further evidence of the beneficial effect of taVNS on stress processing. Importantly we have also demonstrated the promising potential of ECG metrics as a biomarker for the development of closed-loop stimulation systems.

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利用机器学习管道测定经皮耳迷走神经刺激对心率变异性的影响。
背景:我们都意识到日常的健康压力,但是,如果长期持续,压力被认为会导致严重的身心健康问题。材料和方法:在这项研究中,我们研究了经皮耳迷走神经刺激(taVNS)对应激处理的潜在影响,这反映在心电图(ECG)衍生的应激适应性生物标志物上。应激反应生物标志物包括一系列心率变异性指标:N-N间隔的标准差(SDNN)、心跳间隔连续差异的均方根(RMSSD)、低频分量、高频分量及其比值(LF、HF和LF/HF)。此外,我们创建了一个机器学习模型,能够从不同受试者和状态的心电图数据中区分受刺激和非受刺激的条件。该模型由一个深度卷积神经网络组成,该网络使用从ECG提取的R-R区间(RRI)数据以及LF、HF、LF/HF、SDNN和RMSSD的时间迹进行训练。结果:只有LF/HF在刺激反应中表现出统计学上的显著变化。虽然预期在应激条件下LF/HF比值会增加,但我们观察到应激条件下的刺激抵消了这种增加,甚至降低了LF/HF比值。这可能表明迷走神经刺激减少了应激诱导时交感神经的激活。我们的机器学习模型达到了70%的准确率,在三种状态(基线、压力和恢复)之间没有明显的变化。然而,训练一个类似的神经网络来识别状态(基线、压力和恢复)被证明是不成功的。结论:总的来说,在本研究中,我们进一步证明了taVNS对应激处理的有益作用。重要的是,我们也证明了心电图指标作为闭环刺激系统发展的生物标志物的潜力。
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来源期刊
Bioelectricity
Bioelectricity Multiple-
CiteScore
3.40
自引率
4.30%
发文量
33
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