Loewe Axel, Poremba Emanuel, Oesterlein Tobias, Luik Armin, Schmitt Claus, Seemann Gunnar, Dössel Olaf
Institute of Biomedical Engineering, Karlsruhe Institute of Technology (KIT), Karlsruhe, Germany.
Medizinische Klinik IV, Städtisches Klinikum Karlsruhe, Karlsruhe, Germany.
Front Physiol. 2019 Jan 14;9:1910. doi: 10.3389/fphys.2018.01910. eCollection 2018.
Atypical atrial flutter (AFlut) is a reentrant arrhythmia which patients frequently develop after ablation for atrial fibrillation (AF). Indeed, substrate modifications during AF ablation can increase the likelihood to develop AFlut and it is clinically not feasible to reliably and sensitively test if a patient is vulnerable to AFlut. Here, we present a novel method based on personalized computational models to identify pathways along which AFlut can be sustained in an individual patient. We build a personalized model of atrial excitation propagation considering the anatomy as well as the spatial distribution of anisotropic conduction velocity and repolarization characteristics based on a combination of a priori knowledge on the population level and information derived from measurements performed in the individual patient. The fast marching scheme is employed to compute activation times for stimuli from all parts of the atria. Potential flutter pathways are then identified by tracing loops from wave front collision sites and constricting them using a geometric snake approach under consideration of the heterogeneous wavelength condition. In this way, all pathways along which AFlut can be sustained are identified. Flutter pathways can be instantiated by using an eikonal-diffusion phase extrapolation approach and a dynamic multifront fast marching simulation. In these dynamic simulations, the initial pattern eventually turns into the one driven by the dominant pathway, which is the only pathway that can be observed clinically. We assessed the sensitivity of the flutter pathway maps with respect to conduction velocity and its anisotropy. Moreover, we demonstrate the application of tailored models considering disease-specific repolarization properties (healthy, AF-remodeled, potassium channel mutations) as well as applicabiltiy on a clinical dataset. Finally, we tested how AFlut vulnerability of these substrates is modulated by exemplary antiarrhythmic drugs (amiodarone, dronedarone). Our novel method allows to assess the vulnerability of an individual patient to develop AFlut based on the personal anatomical, electrophysiological, and pharmacological characteristics. In contrast to clinical electrophysiological studies, our computational approach provides the means to identify all possible AFlut pathways and not just the currently dominant one. This allows to consider all relevant AFlut pathways when tailoring clinical ablation therapy in order to reduce the development and recurrence of AFlut.
非典型心房扑动(AFlut)是一种折返性心律失常,患者常在房颤(AF)消融术后频繁发生。事实上,房颤消融过程中的基质改变会增加发生AFlut的可能性,并且在临床上可靠且灵敏地检测患者是否易患AFlut是不可行的。在此,我们提出一种基于个性化计算模型的新方法,以识别非典型心房扑动在个体患者中得以维持的途径。我们构建了一个心房兴奋传播的个性化模型,该模型基于群体水平的先验知识和个体患者测量所得信息的组合,考虑了解剖结构以及各向异性传导速度和复极化特征的空间分布。采用快速行进法计算来自心房各部位刺激的激活时间。然后通过从波前碰撞点追踪环路并在考虑异质波长条件下使用几何蛇形方法对其进行收缩,来识别潜在的扑动途径。通过这种方式,识别出了非典型心房扑动得以维持的所有途径。扑动途径可通过使用程函 - 扩散相位外推法和动态多前沿快速行进模拟来实例化。在这些动态模拟中,初始模式最终会转变为由主导途径驱动的模式,而主导途径是临床上唯一可观察到的途径。我们评估了扑动途径图对传导速度及其各向异性的敏感性。此外,我们展示了考虑疾病特异性复极化特性(健康、房颤重塑、钾通道突变)的定制模型的应用以及在临床数据集上的适用性。最后,我们测试了示例性抗心律失常药物(胺碘酮、决奈达隆)如何调节这些基质的非典型心房扑动易感性。我们的新方法允许根据个体的解剖、电生理和药理学特征评估个体患者发生非典型心房扑动的易感性。与临床电生理研究不同,我们的计算方法提供了识别所有可能的非典型心房扑动途径的手段,而不仅仅是当前的主导途径。这使得在定制临床消融治疗时能够考虑所有相关的非典型心房扑动途径,以减少非典型心房扑动的发生和复发。