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一种用于区分局部肺静脉和心房远场信号的专家系统介绍。

Introduction of an expert system for the discrimination of local pulmonary vein and atrial far field signals.

作者信息

Klemm Hanno Ulrich, Heitzer Thomas, Ruprecht Ute, Johnsen Christin, Meinertz Thomas, Ventura Rodolfo

机构信息

Heart Center Dortmund, Department of Cardiology, Dortmund, Germany,

出版信息

J Interv Card Electrophysiol. 2010 Nov;29(2):83-91. doi: 10.1007/s10840-010-9508-2. Epub 2010 Aug 28.

Abstract

BACKGROUND

Discrimination of local and far field potentials during sinus rhythm and atrial fibrillation (AF) is essential for successful pulmonary vein (PV) isolation. We sought to introduce an expert system for the classification of electrophysiologic PV signals.

METHODS

For the expert system database, we analyzed ablation procedures of 50 patients with paroxysmal and persistent AF. Standard circumferential catheters and bipolar recordings were required. In a prospective trial, the expert system was compared with the performing electrophysiologists' classifications of potentials during 15 procedures. A total of 1,343 recordings of local PV and far field signals were validated by the sudden disappearance of local potentials during ablation, the presence of dissociated PV activity, and pacing maneuvers. A fast Fourier transform was applied to the individual potentials. Analysis continued in the amplitude and phase representation.

RESULTS

Four parameters significant (p < 0.001) for classification were identified and entered a logistic regression model. Overall sensitivity and specificity of the model was 87% with minor, nonsignificant variations for individual PVs and different underlying rhythms. Concordance with ad hoc electrophysiologists' classification of local potentials was 70%, which increased during post hoc analysis to 86% since classification of 14% of the potentials had to be revised. For these potentials, the expert system correctly predicted their local origin in 86%.

CONCLUSION

An expert system for the evaluation of electrophysiologic signals based on morphology analysis using the Fourier transform is feasible. The ease of use and online availability facilitate a widespread use for AF ablation procedures.

摘要

背景

在窦性心律和心房颤动(AF)期间区分局部和远场电位对于成功进行肺静脉(PV)隔离至关重要。我们试图引入一种用于电生理PV信号分类的专家系统。

方法

对于专家系统数据库,我们分析了50例阵发性和持续性AF患者的消融手术。需要使用标准的环形导管和双极记录。在一项前瞻性试验中,将专家系统与15例手术中执行电生理操作的医生对电位的分类进行了比较。通过消融期间局部电位的突然消失、分离的PV活动的存在以及起搏操作,对总共1343条局部PV和远场信号记录进行了验证。对各个电位应用快速傅里叶变换。分析在幅度和相位表示中继续进行。

结果

确定了四个对分类有显著意义(p < 0.001)的参数,并将其纳入逻辑回归模型。该模型的总体敏感性和特异性为87%,各个PV和不同基础节律的变化较小且无显著差异。与临时电生理医生对局部电位的分类一致性为70%,在事后分析中增加到86%,因为14%的电位分类必须修订。对于这些电位,专家系统正确预测其局部起源的比例为86%。

结论

基于使用傅里叶变换的形态学分析的电生理信号评估专家系统是可行的。其易用性和在线可用性便于在AF消融手术中广泛应用。

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