Roldan Eva María Cirugeda, Calero Sofía, Hidalgo Víctor Manuel, Enero José, Rieta José Joaquín, Alcaraz Raúl
Research Group in Electronic, Biomedical and Telecommunication Engineering, University of Castilla-La Mancha, 16071 Cuenca, Spain.
Cardiac Arrhythmia Department, University Hospital of Albacete, 02006 Albacete, Spain.
Entropy (Basel). 2020 Jul 7;22(7):748. doi: 10.3390/e22070748.
Atrial fibrillation (AF) is nowadays the most common cardiac arrhythmia, being associated with an increase in cardiovascular mortality and morbidity. When AF lasts for more than seven days, it is classified as persistent AF and external interventions are required for its termination. A well-established alternative for that purpose is electrical cardioversion (ECV). While ECV is able to initially restore sinus rhythm (SR) in more than 90% of patients, rates of AF recurrence as high as 20-30% have been found after only a few weeks of follow-up. Hence, new methods for evaluating the proarrhythmic condition of a patient before the intervention can serve as efficient predictors about the high risk of early failure of ECV, thus facilitating optimal management of AF patients. Among the wide variety of predictors that have been proposed to date, those based on estimating organization of the fibrillatory (-) waves from the surface electrocardiogram (ECG) have reported very promising results. However, the existing methods are based on traditional entropy measures, which only assess a single time scale and often are unable to fully characterize the dynamics generated by highly complex systems, such as the heart during AF. The present work then explores whether a multi-scale entropy (MSE) analysis of the -waves may provide early prediction of AF recurrence after ECV. In addition to the common MSE, two improved versions have also been analyzed, composite MSE (CMSE) and refined MSE (RMSE). When analyzing 70 patients under ECV, of which 31 maintained SR and 39 relapsed to AF after a four week follow-up, the three methods provided similar performance. However, RMSE reported a slightly better discriminant ability of 86%, thus improving the other multi-scale-based outcomes by 3-9% and other previously proposed predictors of ECV by 15-30%. This outcome suggests that investigation of dynamics at large time scales yields novel insights about the underlying complex processes generating -waves, which could provide individual proarrhythmic condition estimation, thus improving preoperative predictions of ECV early failure.
心房颤动(AF)是目前最常见的心律失常,与心血管疾病死亡率和发病率的增加相关。当房颤持续超过7天时,它被归类为持续性房颤,需要外部干预来终止。为此,一种成熟的替代方法是电复律(ECV)。虽然电复律能够在超过90%的患者中最初恢复窦性心律(SR),但在仅几周的随访后,房颤复发率高达20%-30%。因此,在干预前评估患者心律失常状态的新方法可以作为预测电复律早期失败高风险的有效指标,从而促进房颤患者的最佳管理。在迄今为止提出的各种预测指标中,基于估计体表心电图(ECG)上颤动(-)波的组织情况的指标已报告了非常有前景的结果。然而,现有方法基于传统熵度量,仅评估单个时间尺度,并且通常无法充分表征由高度复杂系统(如房颤期间的心脏)产生的动力学。因此,本研究探讨了对 - 波进行多尺度熵(MSE)分析是否可以提供电复律后房颤复发的早期预测。除了常见的MSE外,还分析了两个改进版本,即复合MSE(CMSE)和精细MSE(RMSE)。在分析70例接受电复律的患者时,其中31例在四周随访后维持窦性心律,39例复发为房颤,这三种方法表现相似。然而,RMSE报告的判别能力略好,为86%,从而使其他基于多尺度的结果提高了3%-9%,并使其他先前提出的电复律预测指标提高了15%-30%。这一结果表明,对大时间尺度动力学的研究为产生 -波的潜在复杂过程提供了新的见解,这可以提供个体心律失常状态估计,从而改善电复律早期失败的术前预测。