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Automatic Detection of Target Engagement in Transcutaneous Cervical Vagal Nerve Stimulation for Traumatic Stress Triggers

机译:自动检测经皮颈椎神经刺激对创伤应力触发的靶啮合

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摘要

Transcutaneous cervical vagal nerve stimulation (tcVNS) devices are attractive alternatives to surgical implants, and can be applied for a number of conditions in ambulatory settings, including stress-related neuropsychiatric disorders. Transferring tcVNS technologies to at-home settings brings challenges associated with the assessment of therapy response. The ability to accurately detect whether tcVNS has been effectively delivered in a remote setting such as the home has never been investigated. We designed and conducted a study in which 12 human subjects received active tcVNS and 14 received sham stimulation in tandem with traumatic stress, and measured continuous cardiopulmonary signals including the electrocardiogram (ECG), photoplethysmogram (PPG), seismocardiogram (SCG), and respiratory effort (RSP). We extracted physiological parameters related to autonomic nervous system activity, and created a feature set from these parameters to: 1) detect active (vs. sham) tcVNS stimulation presence with machine learning methods, and 2) determine which sensing modalities and features provide the most salient markers of tcVNS-based changes in physiological signals. Heart rate (ECG), vasomotor activity (PPG), and pulse arrival time (ECG+PPG) provided sufficient information to determine target engagement (compared to sham) in addition to other combinations of sensors. resulting in 96% accuracy, precision, and recall with a receiver operator characteristics area of 0.96. Two commonly utilized sensing modalities (ECG and PPG) that are suitable for home use can provide useful information on therapy response for tcVNS. The methods presented herein could be deployed in wearable devices to quantify adherence for at-home use of tcVNS technologies.
机译:经皮宫颈迷走神经刺激(TCVN)装置是手术植入物的有吸引力的替代品,并且可以应用于各种动态环境中的许多条件,包括与应激相关的神经精神疾病。将TCVNS技术转移到家庭环境中带来了与评估治疗反应相关的挑战。能够准确检测TCVN是否已在遥控设置中有效地传送,例如家庭从未被调查过。我们设计和进行了一项研究,其中12人受试者接受活性TCVN和14串联的假刺激以创伤性应力,并测量包括心电图(ECG),光增性肌谱(PPG),地震动脉造影(SCG)和呼吸努力的连续心肺信号(RSP)。我们提取与自主神经系统活动相关的生理参数,并创建了从这些参数集的功能设置为:1)用机器学习方法检测有效(与假)TCVN刺激存在,2)确定哪种感测模式和特征提供最多基于TCVNS的生理信号变化的突出标记。心率(ECG),血管传递活动(PPG)和脉冲到达时间(ECG + PPG)还提供了足够的信息,以确定除了传感器的其他组合之外还可以确定目标接合(与假)。导致96%的精度,精度和调用,接收器操作员特性面积为0.96。适用于家庭使用的两个常用的感应模态(ECG和PPG)可以提供有关TCVN的治疗响应的有用信息。这里呈现的方法可以部署在可穿戴设备中,以量化遵守TCVNS技术的归属使用。

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