Lekadir Karim, Pashaei Ali, Hoogendoorn Corné, Pereanez Marco, Albà Xènia, Frangi Alejandro F
IEEE Trans Biomed Eng. 2014 Nov;61(11):2740-8. doi: 10.1109/TBME.2014.2327025. Epub 2014 May 29.
Myocardial fiber orientation plays a critical role in the electrical activation and subsequent contraction of the heart. To increase the clinical potential of electrophysiological (EP) simulation for the study of cardiac phenomena and the planning of interventions, accurate personalization of the fibers is a necessary yet challenging task. Due to the difficulties associated with the in vivo imaging of cardiac fiber structure, researchers have developed alternative techniques to personalize fibers. Thus far, cardiac simulation was performed mainly based on rule-based fiber models. More recently, there has been a significant interest in data-driven and statistically derived fiber models. In particular, our predictive method in [1] allows us to estimate the unknown subject-specific fiber orientation based on the more easily available shape information. The aim of this work is to estimate the effect of using such statistical predictive models for the estimation of cardiac electrical activation times and patterns. To this end, we perform EP simulations based on a database of ten canine ex vivo diffusion tensor imaging (DTI) datasets that include normal and failing cases. To assess the strength of the fiber models under varying conditions, we consider both sinus rhythm and biventricular pacing simulations. The results show that 1) the statistically derived fibers improve the estimation of the local activation times by an average of 53.7% over traditional rule-based models, and that 2) the obtained electrical activations are consistently similar to those of the DTI-based fibers.
心肌纤维方向在心脏的电激活及随后的收缩过程中起着关键作用。为了提高电生理(EP)模拟在心脏现象研究和干预计划制定方面的临床应用潜力,对纤维进行准确的个性化处理是一项必要但具有挑战性的任务。由于心脏纤维结构的体内成像存在困难,研究人员已开发出替代技术来实现纤维的个性化。到目前为止,心脏模拟主要基于基于规则的纤维模型进行。最近,数据驱动和基于统计得出的纤维模型受到了极大关注。特别是,我们在[1]中的预测方法使我们能够根据更容易获得的形状信息来估计未知的个体特异性纤维方向。这项工作的目的是评估使用此类统计预测模型对心脏电激活时间和模式进行估计的效果。为此,我们基于包含正常和衰竭病例的十个犬类离体扩散张量成像(DTI)数据集的数据库进行EP模拟。为了评估不同条件下纤维模型的优势,我们同时考虑了窦性心律和双心室起搏模拟。结果表明:1)与传统的基于规则的模型相比,基于统计得出的纤维将局部激活时间的估计平均提高了53.7%;2)所获得的电激活与基于DTI的纤维的电激活始终相似。