Steinhaus B M, Wells R T, Greenhut S E, Maas S M, Nappholz T A, Jenkins J M, DiCarlo L A
Telectronics Pacing Systems, Englewood, Colorado 80112.
Pacing Clin Electrophysiol. 1990 Dec;13(12 Pt 2):1930-6. doi: 10.1111/j.1540-8159.1990.tb06919.x.
Cross correlation is an accurate method for distinguishing normal sinus rhythm (NSR) from ventricular arrhythmias. The computational demands of the method, however, have prohibited development of an implantable device using correlation. In this study, temporal data compression prior to correlation analysis was used to reduce the total number of computations. Unipolar and bipolar intracardiac electrograms of NSR and 23 episodes of ventricular tachycardia (VT) from 23 patients were obtained from a right ventricular apex electrode catheter during routine electrophysiology studies. The data were filtered (1-11 Hz), digitized (250 samples/sec) and temporally compressed to 50 samples/sec. Data compression removed four out of every five samples by only saving the sample with the maximum excursion from the last saved sample. The average squared correlation coefficient (r2) was computed for the NSR and VT episodes using each patient's NSR waveform as a template. In all 23 patients, the r2 values showed large separation between NSR versus VT in both unipolar (0.93 +/- 0.05 vs 0.20 +/- 0.16, P less than 0.005) and bipolar (0.91 +/- 0.07 vs 0.17 +/- 0.11, P less than 0.005) electrode configurations using template lengths of 80% the intrinsic interval (avg +/- SD). Narrow templates (40% intrinsic interval or less) often resulted in multiple r2 peaks during each heart cycle and degraded the r2 separation (n = 10, P less than 0.005). High pass filtering at 3 Hz also degraded the r2 separation (n = 10, P less than 0.05). Standard noncompressed correlations indicated that data compression had negligible effects on the results. Thus, a computationally efficient cross correlation method was found to be a reliable detector of VT.(ABSTRACT TRUNCATED AT 250 WORDS)
互相关是一种区分正常窦性心律(NSR)和室性心律失常的准确方法。然而,该方法的计算需求阻碍了使用相关性的植入式设备的开发。在本研究中,在相关性分析之前使用时间数据压缩来减少计算总数。在常规电生理研究期间,从右心室尖电极导管获取了23例患者的NSR单极和双极心内电图以及23次室性心动过速(VT)发作。数据经过滤波(1 - 11 Hz)、数字化(250样本/秒)并在时间上压缩至50样本/秒。数据压缩通过仅保存与最后保存样本偏差最大的样本,每五个样本中去除四个。使用每位患者的NSR波形作为模板,计算NSR和VT发作的平均平方相关系数(r2)。在所有23例患者中,在单极(0.93 +/- 0.05对0.20 +/- 0.16,P小于0.005)和双极(0.91 +/- 0.07对0.17 +/- 0.11,P小于0.005)电极配置中,使用固有间期80%的模板长度(平均 +/- 标准差)时,r2值显示NSR与VT之间有很大差异。窄模板(40%固有间期或更短)在每个心动周期中常常导致多个r2峰值,并降低了r2差异(n = 10,P小于0.005)。3 Hz的高通滤波也降低了r2差异(n = 10,P小于0.05)。标准的非压缩相关性表明数据压缩对结果的影响可忽略不计。因此,一种计算高效的互相关方法被发现是VT的可靠检测器。(摘要截断于250字)