Kremen V, Lhotská L, Macas M, Cihák R, Vancura V, Kautzner J, Wichterle D
Department of Cybernetics, Faculty of Electrical Engineering, Czech Technical University, Prague, Czech Republic.
Physiol Meas. 2008 Dec;29(12):1371-81. doi: 10.1088/0967-3334/29/12/002. Epub 2008 Oct 22.
Complex fractionated atrial electrograms (CFAEs) may represent the electrophysiological substrate for atrial fibrillation (AF). Progress in signal processing algorithms to identify sites of CFAEs is crucial for the development of AF ablation strategies. A novel algorithm for automated description of fractionation of atrial electrograms (A-EGMs) based on the wavelet transform has been proposed. The algorithm was developed and validated using a representative set of 1.5 s A-EGM (n = 113) ranked by three experts into four categories: 1-organized atrial activity; 2-mild; 3-intermediate; 4-high degree of fractionation. A tight relationship between a fractionation index and expert classification of A-EGMs (Spearman correlation rho = 0.87) was documented with a sensitivity of 82% and specificity of 90% for the identification of highly fractionated A-EGMs. This operator-independent description of A-EGM complexity may be easily incorporated into mapping systems to facilitate CFAE identification and to guide AF substrate ablation.
复杂碎裂心房电图(CFAEs)可能代表心房颤动(AF)的电生理基质。识别CFAEs部位的信号处理算法进展对于AF消融策略的发展至关重要。一种基于小波变换的自动描述心房电图(A-EGMs)碎裂的新算法已被提出。该算法是使用一组具有代表性的1.5秒A-EGM(n = 113)开发并验证的,由三位专家将其分为四类:1-规整心房活动;2-轻度;3-中度;4-高度碎裂。记录了碎裂指数与A-EGMs专家分类之间的紧密关系(Spearman相关系数rho = 0.87),识别高度碎裂A-EGMs的敏感性为82%,特异性为90%。这种与操作者无关的A-EGM复杂性描述可轻松纳入标测系统,以促进CFAE识别并指导AF基质消融。