Kavesh N G, Cain M E, Ambos H D, Arthur R M
Cardiovascular Division, Washington University School of Medicine, St Louis, MO 63110.
Circulation. 1994 Jul;90(1):254-63. doi: 10.1161/01.cir.90.1.254.
Signals generated by myocardium responsible for ventricular tachycardia (VT) contribute to the entire QRS complex, ST segment, and T wave and are spatially distributed over the entire torso. However, current methods of signal-averaged ECG analysis restrict interrogation to the terminal QRS complex, do not include data on the body surface distributions of the distinguishing features detected, and have a limited clinical value because of a low positive predictive accuracy. Accordingly, we tested the hypothesis that frequency analysis of the entire cardiac cycle of spatially selected ECGs based on isoharmonic maps of the body surface enhance the detection of the unique spectral features in signal-averaged ECGs that differentiate patients with from those without VT.
Isoharmonic maps of the body surface were calculated during sinus rhythm with the use of forward problem solutions for 32 patients with sustained VT, 30 without VT, and 10 healthy subjects and analyzed over a bandwidth of 0.05 to 470 Hz. Spectra of ECGs at the maximum and minimum of each patient's isoharmonic map of 1 to 7 Hz demonstrated a broadened bandwidth of significant separation (P < .05) for patients with from those without VT compared with the separation achieved with the use of Frank ECGs alone. Furthermore, the statistical significance within the bands of separation was greater for spatially selected ECGs compared with the Frank leads. Frank leads separated patients over the band from 11 to 84 Hz with a mean value of P = .0094. ECGs at the maximum of 1-to-7-Hz isoharmonic maps separated patients over the 8-to-111-Hz band with a mean value of P = .0062 (range, P < .05 to P < .0000001). ECGs at the minimum of 1-to-7-Hz isoharmonic maps extended the low-frequency end of the band of separation, which covered 0 to 69 Hz with a mean value of P = .0039 (range, P < .05 to P < .0000001). Subgroup analysis verified that results were independent of QRS duration.
Spectral analysis of ECGs that are spatially selected for each patient is superior to orthogonal ECGs and augments detection of distinguishing features in ECGs that identify risk of VT. The new data acquired from analysis of spatially selected ECGs from individual patients provide the information on the specific frequency bands and an improved ECG-lead system required to refine methods of analysis of the signal-averaged ECG.
导致室性心动过速(VT)的心肌产生的信号会影响整个QRS波群、ST段和T波,并且在整个躯干上呈空间分布。然而,目前的信号平均心电图分析方法将检测局限于QRS波群终末部分,不包括所检测到的特征在体表分布的数据,并且由于阳性预测准确性较低,临床价值有限。因此,我们检验了这样一个假设:基于体表等谐波图对空间选择的心电图整个心动周期进行频率分析,能够增强对信号平均心电图中独特频谱特征的检测,从而区分有VT和无VT的患者。
利用正向问题求解法,对32例持续性VT患者、30例无VT患者和10例健康受试者在窦性心律期间计算体表等谐波图,并在0.05至470Hz的带宽范围内进行分析。在每个患者1至7Hz的等谐波图的最大值和最小值处的心电图频谱显示,与仅使用Frank心电图相比,有VT和无VT的患者之间显著分离的带宽变宽(P<.05)。此外,与Frank导联相比,空间选择的心电图在分离频段内的统计学显著性更高。Frank导联在11至84Hz频段分离患者,平均值P=.0094。1至7Hz等谐波图最大值处的心电图在8至111Hz频段分离患者,平均值P=.0062(范围,P<.05至P<.0000001)。1至7Hz等谐波图最小值处的心电图扩展了分离频段的低频端,该频段覆盖0至69Hz,平均值P=.0039(范围,P<.05至P<.0000001)。亚组分析证实结果与QRS时限无关。
对每个患者进行空间选择的心电图频谱分析优于正交心电图,可增强对识别VT风险的心电图特征的检测。从对个体患者空间选择的心电图分析中获得的新数据提供了关于特定频段的信息以及改进的心电图导联系统,这是完善信号平均心电图分析方法所必需的。