Department of Biomedical Informatics, Emory University, Atlanta, Georgia, USA.
School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, Georgia, USA.
Psychophysiology. 2022 Jul;59(7):e14013. doi: 10.1111/psyp.14013. Epub 2022 Feb 12.
Pre-ejection period (PEP) is an index of sympathetic nervous system activity that can be computed from electrocardiogram (ECG) and impedance cardiogram (ICG) signals, but sensitive to speech/motion artifact. We sought to validate an ICG noise removal method, three-stage ensemble-average algorithm (TEA), in data acquired from a clinical trial comparing active versus sham non-invasive vagal nerve stimulation (tcVNS) after standardized speech stress. We first compared TEA's performance versus the standard conventional ensemble-average algorithm (CEA) approach to classify noisy ICG segments. We then analyzed ECG and ICG data to measure PEP and compared group-level differences in stress states with each approach. We evaluated 45 individuals, of whom 23 had post-traumatic stress disorder (PTSD). We found that the TEA approach identified artifact-corrupted beats with intraclass correlation coefficient > 0.99 compared to expert adjudication. TEA also resulted in higher group-level differences in PEP between stress states than CEA. PEP values were lower in the speech stress (vs. baseline rest) group using both techniques, but the differences were greater using TEA (12.1 ms) than CEA (8.0 ms). PEP differences in groups divided by PTSD status and tcVNS (active vs. sham) were also greater when using the TEA versus CEA method, although the magnitude of the differences was lower. In conclusion, TEA helps to accurately identify noisy ICG beats during speaking stress, and this increased accuracy improves sensitivity to group-level differences in stress states compared to CEA, suggesting greater clinical utility.
射血前期(PEP)是交感神经系统活动的指标,可以从心电图(ECG)和阻抗心动图(ICG)信号中计算得出,但对言语/运动伪影敏感。我们旨在验证 ICG 噪声消除方法,即三阶段集合平均算法(TEA),该方法在比较主动与假非侵入性迷走神经刺激(tcVNS)后,从临床试验中获取的数据中进行验证,其中标准化言语应激会导致数据受噪声干扰。我们首先比较了 TEA 与标准常规集合平均算法(CEA)在分类噪声 ICG 段方面的性能。然后,我们分析了 ECG 和 ICG 数据,以测量 PEP,并比较了使用每种方法的应激状态的组间差异。我们评估了 45 个人,其中 23 人患有创伤后应激障碍(PTSD)。我们发现,与专家裁决相比,TEA 方法可以识别出具有>0.99 内类相关系数的受伪影干扰的心跳。与 CEA 相比,TEA 还导致应激状态下的 PEP 在组间水平上的差异更大。两种技术都表明,在言语应激(与基线休息相比)组中,PEP 值更低,但 TEA(12.1ms)的差异大于 CEA(8.0ms)。当使用 TEA 而不是 CEA 时,根据 PTSD 状态和 tcVNS(主动与假)划分的组之间的 PEP 差异也更大,尽管差异幅度较小。总之,TEA 有助于在说话应激期间准确识别噪声 ICG 心跳,与 CEA 相比,这种更高的准确性提高了对应激状态的组间差异的敏感性,这表明其具有更大的临床应用价值。