Ng Jason, Borodyanskiy Aleksey I, Chang Eric T, Villuendas Roger, Dibs Samer, Kadish Alan H, Goldberger Jeffrey J
Bluhm Cardiovascular Center, Division of Cardiology, Feinberg School of Medicine, Northwestern University, Chicago, Illinois 60611, USA.
J Cardiovasc Electrophysiol. 2010 Jun 1;21(6):649-55. doi: 10.1111/j.1540-8167.2009.01695.x. Epub 2010 Feb 1.
Complex fractionated atrial electrograms (CFAE) have been identified as targets for atrial fibrillation (AF) ablation. Robust automatic algorithms to objectively classify these signals would be useful. The aim of this study was to evaluate Shannon's entropy (ShEn) and the Kolmogorov-Smirnov (K-S) test as a measure of signal complexity and to compare these measures with fractional intervals (FI) in distinguishing CFAE from non-CFAE signals.
Electrogram recordings of 5 seconds obtained from multiple atrial sites in 13 patients (11 M, 58 +/- 10 years old) undergoing AF ablation were visually examined by 4 independent reviewers. Electrograms were classified as CFAE if they met Nademanee criteria. Agreement of 3 or more reviewers was considered consensus and the resulting classification was used as the gold standard. A total of 297 recordings were examined. Of these, 107 were consensus CFAE, 111 were non-CFAE, and 79 were equivocal or noninterpretable. FIs less than 120 ms identified CFAEs with sensitivity of 87% and specificity of 79%. ShEn, with optimal parameters using receiver-operator characteristic curves, resulted in a sensitivity of 87% and specificity of 81% in identifying CFAE. The K-S test resulted in an optimal sensitivity of 100% and specificity of 95% in classifying uninterpretable electrogram from all other electrograms.
ShEn showed comparable results to FI in distinguishing CFAE from non-CFAE without requiring user input for threshold levels. Thus, measuring electrogram complexity using ShEn may have utility in objectively and automatically identifying CFAE sites for AF ablation.
复杂碎裂心房电图(CFAE)已被确定为心房颤动(AF)消融的靶点。开发强大的自动算法以客观地对这些信号进行分类将很有帮助。本研究的目的是评估香农熵(ShEn)和柯尔莫哥洛夫-斯米尔诺夫(K-S)检验作为信号复杂性的一种度量,并将这些度量与分数间期(FI)在区分CFAE与非CFAE信号方面进行比较。
对13例接受AF消融的患者(11例男性,年龄58±10岁)多个心房部位记录的5秒心电图进行4名独立审阅者的目视检查。如果心电图符合纳达梅尼标准,则将其分类为CFAE。3名或更多审阅者的一致意见被视为共识,所得分类用作金标准。共检查了297份记录。其中,107份为共识性CFAE,111份为非CFAE,79份为模棱两可或无法解读的。小于120毫秒的FI识别CFAE的敏感性为87%,特异性为79%。使用受试者工作特征曲线的最佳参数时,ShEn识别CFAE的敏感性为87%,特异性为81%。K-S检验在将无法解读的心电图与所有其他心电图分类时的最佳敏感性为100%,特异性为95%。
在区分CFAE与非CFAE方面,ShEn显示出与FI相当的结果,且无需用户输入阈值水平。因此,使用ShEn测量心电图复杂性可能有助于客观、自动地识别AF消融的CFAE部位。