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一种用于识别减速区和室性心动过速消融部位的新型自动峰值频率标注算法。

A novel automated peak frequency annotation algorithm for identifying deceleration zones and ventricular tachycardia ablation sites.

作者信息

Payne Joshua E, Woods Christopher, Elshazly Mohamed B, Matthews Aaron, Kroman Anne, Feng Zekun, Rabinkova Anna, Ghadban Rugheed, Dhakal Bishnu, Winterfield Jeffery

机构信息

Division of Cardiology, Medical University of South Carolina, Charleston, South Carolina.

Sutter Health, Cal Pacific Medical Center, San Francisco, California.

出版信息

Heart Rhythm. 2024 Jan;21(1):27-33. doi: 10.1016/j.hrthm.2023.10.014. Epub 2023 Oct 16.

Abstract

BACKGROUND

Current annotation of local fractionated signals during ventricular electroanatomic mapping (EAM) requires manual input subject to variability and error.

OBJECTIVES

The purpose of this study was to evaluate a novel peak frequency (PF) annotation software for its ability to automatically detect late potentials (LPs) and local abnormal ventricular activity (LAVA), determine an optimal range for display, and assess its impact on isochronal late activation mapping (ILAM).

METHODS

EAM data from 25 patients who underwent ventricular tachycardia (VT) ablation were retrospectively analyzed. Samplings of electrogram PFs from areas of normal bipolar voltage, areas of low voltage, and areas of low voltage with fractioned signals were performed. An optimal range of frequency display was identified from these patients and applied to a validation cohort of 10 prospective patients to assess high PF within scar as a predictor of VT ablation target sites, in particular deceleration zones (DZs) identified by ILAM, LP, and LAVA.

RESULTS

Voltage and PF ranges of normal endocardial tissue varied widely. Using 220 Hz as a frequency cutoff value in areas of low bipolar voltage, areas of high fractionation were identified with sensitivity of 91% and specificity of 85% There was no significant reduction in targeted DZ surface areas, and colocalization with DZs was observed in all cases. Applied to the prospective cohort, PF predicted fractionated areas and DZ in 9 of 10 patients.

CONCLUSION

A PF annotation algorithm with a cutoff of 220 Hz accurately identifies areas of fractioned signals and accurately predicts DZs during ILAM.

摘要

背景

目前在心室电解剖标测(EAM)过程中对局部碎裂信号的标注需要人工输入,存在变异性和误差。

目的

本研究旨在评估一种新型的峰值频率(PF)标注软件,其能够自动检测晚电位(LPs)和局部心室异常活动(LAVA),确定最佳显示范围,并评估其对等时性晚激动标测(ILAM)的影响。

方法

回顾性分析25例接受室性心动过速(VT)消融患者的EAM数据。对正常双极电压区域、低电压区域以及有碎裂信号的低电压区域的心电图PF进行采样。从这些患者中确定频率显示的最佳范围,并应用于10例前瞻性患者的验证队列,以评估瘢痕内高PF作为VT消融靶点的预测指标,特别是通过ILAM、LP和LAVA确定的减速区(DZs)。

结果

正常心内膜组织的电压和PF范围差异很大。在双极电压低的区域使用220 Hz作为频率截止值,识别出高碎裂区域,灵敏度为91%,特异性为85%。靶向DZ表面积无显著减少,所有病例均观察到与DZs共定位。应用于前瞻性队列时,PF在10例患者中的9例中预测了碎裂区域和DZ。

结论

截止频率为220 Hz的PF标注算法能够准确识别碎裂信号区域,并在ILAM期间准确预测DZs。

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