二维电图阵列中激活波前的自动识别与分析

K. Bollacker, E. V. Simpson, R. Hillsley, S. M. Blanchard, W.M. Smith, R. Ideker
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引用次数: 4

摘要

心脏的激活序列通常是由心脏电图的局部激活的检测和定时来确定的,但是分配一个独特的激活时间,特别是在心室颤动(VF)期间,通常是困难的。即使可以推导出不同的激活,也很难将激活分组成波前。开发了一种自动识别和分析不同电活动波前的方法,消除了人工分析的不一致性和等时映射的模糊性。在确定了单个波前之后,对其特征的分析就变成了一项简单的任务,而且是自动化的。这种自动化方法有望成为一种准确而强大的VF定量分析工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic identification and analysis of activation wavefronts in a 2-D electrogram array
Cardiac activation sequences are normally determined by the detection and timing of local activations in cardiac electrograms, but assigning of a unique activation time, especially during ventricular fibrillation (VF), is often difficult. Even if distinct activations can be derived, it is difficult to group activations into wavefronts. A method was developed for automating the identification and analysis of distinct wavefronts of electrical activity that eliminates the inconsistencies of manual analysis and the ambiguities of isochronal mapping. After individual wavefronts have been identified, analysis of their characteristics became a simple task that was also automated. This automated method shows promise as an accurate and powerful tool for quantitative analysis of VF.<>
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