Body-Surface Atrial Signals Analysis Based on Spatial Frequency Distribution: Comparison Between Different Signal Transformations

Olivier Meste, S. Zeemering, Joël M. H. Karel, T. Lankveld, U. Schotten, H. Crijns, R. Peeters, P. Bonizzi
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引用次数: 1

Abstract

In contrast to electrograms, Body-Surface Potential Mapping (BSPM) records the global atrial activity, at the expenses of a lower spatial accuracy. The aim of this study is to investigate whether BSPM recordings can discriminate persistent patients undergoing electrical cardiover-sion, based on the body-surface normalized AF spatial frequency distribution. High-density BSPMs (120 anterior, 64 posterior electrodes) were recorded in 63 patients with persistent AF. For each patient and electrode recording, the frequency content of AF was analyzed on the raw signal, and also by means of the normalized correlation function, and by Singular Spectrum Analysis (SSA). In order to compare the body-surface spatial distributions of AF frequency in all patients, these distributions were first normalized, before performing statistical analysis. We found that the distribution of AF frequency on the body-surface, and its interpretation, are strongly dependent on the specific method employed. Moreover, the estimated body-surface AF frequency was greater over the central posterior and the right anterior BSPM locations. Finally, SSA-based decomposition followed by frequency analysis could discriminate AF patients recurring 4 to 6 weeks after electrical cardioversion from those who did not, based on the frequency content in the proximity of V1.
基于空间频率分布的体表心房信号分析:不同信号变换的比较
与电图相比,体表电位映射(BSPM)记录了整体心房活动,以较低的空间精度为代价。本研究的目的是基于体表归一化心房颤动的空间频率分布,探讨BSPM记录是否可以区分持续性心电性心律失常患者。记录63例持续性房颤患者的高密度BSPMs(120个前电极,64个后电极)。对每个患者和电极记录的房颤频率内容进行原始信号分析,并通过归一化相关函数和奇异谱分析(SSA)进行分析。为了比较所有患者AF频率的体表空间分布,首先将这些分布归一化,然后进行统计分析。我们发现AF频率在体表上的分布及其解释强烈依赖于所采用的具体方法。此外,估计的体表AF频率在BSPM中央后位和右前位更高。最后,基于ssa的分解和频率分析可以根据V1附近的频率内容区分电转复后4至6周复发的AF患者和未复发的AF患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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