心脏电生理的无创容积成像

Linwei Wang, Heye Zhang, Ken C. L. Wong, Huafeng Liu, P. Shi
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引用次数: 8

摘要

心脏电生理的体积细节,如跨膜电位动力学和心肌的组织兴奋性,对于理解正常和病理心脏机制以及帮助心律失常的诊断和治疗具有重要意义。然而,非侵入性观察是在体表上进行的,作为患者心脏内体积现象的集成投影。我们提出了一个生理模型约束的统计框架,其中使用一般心肌电活动的先验知识来指导从体表电位数据重建患者特异性体积心脏电生理细节。序贯数据同化与适当的计算简化被开发来估计跨膜电位和心脏内的心肌兴奋性,然后用来描绘心律失常的底物。通过使用真实患者数据评估心肌梗死的位置和程度,证明了该框架的有效性和有效性。
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Noninvasive volumetric imaging of cardiac electrophysiology
Volumetric details of cardiac electrophysiology, such as transmembrane potential dynamics and tissue excitability of the myocardium, are of fundamental importance for understanding normal and pathological cardiac mechanisms, and for aiding the diagnosis and treatment of cardiac arrhythmia. Noninvasive observations, however, are made on body surface as an integration-projection of the volumetric phenomena inside patient's heart. We present a physiological-model-constrained statistical framework where prior knowledge of general myocardial electrical activity is used to guide the reconstruction of patient-specific volumetric cardiac electrophysiological details from body surface potential data. Sequential data assimilation with proper computational reduction is developed to estimate transmembrane potential and myocardial excitability inside the heart, which are then utilized to depict arrhythmogenic substrates. Effectiveness and validity of the framework is demonstrated through its application to evaluate the location and extent of myocardial infract using real patient data.
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