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Classification of body surface potential map sequences during ventricular activation using Kohonen networks

机译:使用Kohonen Networks的心室激活期间体表潜在地图序列的分类

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The authors present a new method based on Kohonen networks for the analysis and classification of body surface potential map (BSPM) sequences. First, BSPM sequences obtained from a time interval of the cardiac cycle (e.g. QRS, ST) are presented to an untrained Self-Organizing Map (SOM). During the learning process the SOM units organize in such a way that similar BSPMs are represented in particular areas of the SOM. Time traces from the cardiac activation are then created on the trained SOM and forwarded to a Learning Vector Quantization network for final classification. In this paper the method was applied to BSPM sequences obtained during catheter pace mappings with the aim to noninvasively localize sources of ventricular tachycardia.
机译:作者提出了一种基于Kohonen网络的新方法,用于体面潜在地图(BSPM)序列的分析和分类。首先,从心脏周期(例如QRS,ST)的时间间隔获得的BSPM序列被呈现给未经训练的自组织地图(SOM)。在学习过程中,SOM单元以这样的方式组织,即类似BSPM在SOM的特定区域中表示。然后在训练的SOM上创建来自心脏激活的时间迹线,并转发到学习矢量量化网络以进行最终分类。在本文中,将该方法应用于在导管速度映射期间获得的BSPM序列,其目的是非侵入性本地化心室性心动过速的来源。

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