Yadan Zhang, Xin Lian, Jian Wu
Research Center of Biomedical Engineering, Institute of Biopharmaceutical and Health Engineering, Tsinghua Shenzhen International Graduate School, Shenzhen, China.
Front Physiol. 2022 Nov 2;13:999900. doi: 10.3389/fphys.2022.999900. eCollection 2022.
Electrocardiographic imaging (ECGI) can aid in identifying the driving sources that cause and sustain atrial fibrillation (AF). Traditional regularization strategies for addressing the ECGI inverse problem are not currently concerned about the multi-scale analysis of the inverse problem, and these techniques are not clinically reliable. We have previously investigated the solution based on uniform phase mode decomposition (UPEMD-based) to the ECGI inverse problem. Numerous other methods for the time-frequency analysis derived from empirical mode decomposition (EMD-based) have not been applied to the inverse problem in ECGI. By applying many EMD-based solutions to the ECGI inverse problem and evaluating the performance of these solutions, we hope to find a more efficient EMD-based solution to the ECGI inverse problem. In this study, five AF simulation datasets and two real datasets from AF patients derived from a clinical ablation procedure are employed to evaluate the operating efficiency of several EMD-based solutions. The Pearson's correlation coefficient (CC), the relative difference measurement star (RDMS) of the computed epicardial dominant frequency (DF) map and driver probability (DP) map, and the distance (Dis) between the estimated and referenced most probable driving sources are used to evaluate the application of various EMD-based solutions in ECGI. The results show that for DF maps on all simulation datasets, the CC of UPEMD-based and improved UPEMD (IUPEMD)-based techniques are both greater than 0.95 and the CC of the empirical wavelet transform (EWT)-based solution is greater than 0.889, and the RDMS of UPEMD-based and IUPEMD-based approaches is less than 0.3 overall and the RDMS of EWT-based method is less than 0.48, performing better than other EMD-based solutions; for DP maps, the CC of UPEMD-based and IUPEMD-based techniques are close to 0.5, the CC of EWT-based is 0.449, and the CC of the remaining EMD-based techniques on the SAF and CAF is all below 0.1; the RDMS of UPEMD-based and IUPEMD-based are 0.06∼0.9 less than that of other EMD-based methods for all the simulation datasets overall. On two authentic AF datasets, the Dis between the first 10 real and estimated maximum DF positions of UPEMD-based and EWT-based methods are 212∼1440 less than that of others, demonstrating these two EMD-based solutions are superior and are suggested for clinical application in solving the ECGI inverse problem. On all datasets, EWT-based algorithms deconstruct the signal in the shortest time (no more than 0.12s), followed by UPEMD-based solutions (less than 0.81s), showing that these two schemes are more efficient than others.
心电图成像(ECGI)有助于识别引发和维持心房颤动(AF)的驱动源。目前,用于解决ECGI反问题的传统正则化策略并未关注反问题的多尺度分析,且这些技术在临床上并不可靠。我们之前研究了基于均匀相位模式分解(UPEMD)的ECGI反问题解决方案。许多其他基于经验模态分解(EMD)的时频分析方法尚未应用于ECGI反问题。通过将多种基于EMD的解决方案应用于ECGI反问题并评估这些解决方案的性能,我们希望找到一种更有效的基于EMD的ECGI反问题解决方案。在本研究中,使用了五个AF模拟数据集和两个来自临床消融手术的AF患者的真实数据集,以评估几种基于EMD的解决方案的运行效率。使用皮尔逊相关系数(CC)、计算得到的心外膜主导频率(DF)图和驱动概率(DP)图的相对差异测量星(RDMS),以及估计的和参考的最可能驱动源之间的距离(Dis)来评估各种基于EMD的解决方案在ECGI中的应用。结果表明,对于所有模拟数据集的DF图而言,基于UPEMD和改进的基于UPEMD(IUPEMD)的技术的CC均大于0.95,基于经验小波变换(EWT)的解决方案的CC大于0.889,基于UPEMD和IUPEMD的方法的RDMS总体上小于0.3,基于EWT的方法的RDMS小于0.48,其性能优于其他基于EMD的解决方案;对于DP图,基于UPEMD和IUPEMD的技术的CC接近0.5,基于EWT的为0.449,基于SAF和CAF的其余基于EMD的技术的CC均低于0.1;对于所有模拟数据集总体而言,基于UPEMD和IUPEMD的RDMS比其他基于EMD的方法小0.06∼0.9。在两个真实的AF数据集上,基于UPEMD和EWT的方法的前10个真实和估计的最大DF位置之间的Dis比其他方法小212∼1440,表明这两种基于EMD的解决方案更具优势,建议在解决ECGI反问题中用于临床应用。在所有数据集上,基于EWT的算法在最短时间内(不超过0.12秒)解构信号,其次是基于UPEMD的解决方案(小于0.81秒),表明这两种方案比其他方案更高效。