Department of Signal Theory and Communications, University Rey Juan Carlos, Fuenlabrada, Madrid 28943, Spain.
IEEE Trans Biomed Eng. 2010 Sep;57(9):2168-77. doi: 10.1109/TBME.2010.2049574.
Dominant frequency analysis (DFA) and organization analysis (OA) of cardiac electrograms (EGMs) aims to establish clinical targets for cardiac arrhythmia ablation. However, these previous spectral descriptions of the EGM have often discarded relevant information in the spectrum, such as the harmonic structure or the spectral envelope. We propose a fully automated algorithm for estimating the spectral features in EGM recordings. This approach, called Fourier OA (FOA), accounts jointly for the organization and periodicity in the EGM, in terms of the fundamental frequency instead of dominant frequency. In order to compare the performance of FOA and DFA-OA approaches, we analyzed simulated EGM, obtained in a computer model, as well as two databases of implantable defibrillator-stored EGM. FOA parameters improved the organization measurements with respect to OA, and averaged cycle length and regularity indexes were more accurate when related to the fundamental (instead of dominant) frequency, as estimated by the algorithm (p < 0.05 comparing f(0) estimated by DFA and by FOA). FOA yields a more detailed and robust spectral description of EGM compared to DFA and OA parameters.
主导频率分析(DFA)和心脏电描记图(EGM)的组织分析(OA)旨在为心脏心律失常消融建立临床目标。然而,这些以前对 EGM 的频谱描述往往丢弃了频谱中的相关信息,例如谐波结构或频谱包络。我们提出了一种用于估计 EGM 记录中频谱特征的全自动算法。这种方法称为傅里叶 OA(FOA),它根据基本频率而不是主导频率来共同描述 EGM 中的组织和周期性。为了比较 FOA 和 DFA-OA 方法的性能,我们分析了计算机模型中获得的模拟 EGM 以及植入式除颤器存储的 EGM 的两个数据库。与 OA 相比,FOA 参数提高了组织测量的准确性,并且与算法估计的基本(而非主导)频率相关的平均周期长度和规则指数更准确(与通过 DFA 估计的 f(0)相比,通过 FOA 估计的 p < 0.05)。与 DFA 和 OA 参数相比,FOA 产生了更详细和更稳健的 EGM 频谱描述。