Controlled Activation for Interrogation of the Electrophysiological Substrate.

Computing in cardiology Pub Date : 2014-09-09
Joshua Je Blauer, Fred Han, Ravi Ranjan, Nassir F Marrouche, Rob S MacLeod
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Abstract

Ectopic activation and conduction may give rise to arrhythmias when a diseased myocardial substrate exists. Electrophysiological mapping studies that record electrical properties of the heart in sinus rhythm may fail to uncover pro-arrhythmic substrates that are triggered by ectopy. In this study we use simulation and experimental models of clinical, trackable, loop catheters to interrogate regions of myocardium by stimulating and recording with multiple activation patterns. Longitudinal and traverse conduction velocities of the tissue were acquired from the pacing protocol. Artifacts resulting from variable distance between the recording electrodes and pacing site were also detected and removed. This study demonstrates that the mapping of local tissue properties with variable activation patterns is feasible and can expose features of the electrophysiological substrate that can not be recovered during sinus conduction.

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电生理底物的受控活化研究。
当存在病变心肌底物时,异位激活和传导可引起心律失常。记录窦性心律心脏电特性的电生理测绘研究可能无法揭示由异位引发的促心律失常底物。在这项研究中,我们使用模拟和实验模型的临床,可跟踪,环形导管询问心肌区域通过刺激和记录多种激活模式。从起搏方案中获得组织的纵向和横向传导速度。由记录电极和起搏点之间的不同距离引起的伪影也被检测和去除。本研究表明,局部组织特性与可变激活模式的映射是可行的,可以揭示在窦传导过程中无法恢复的电生理基底的特征。
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