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从院外心搏骤停患者 1 秒室颤波形预测除颤成功。

Prompt prediction of successful defibrillation from 1-s ventricular fibrillation waveform in patients with out-of-hospital sudden cardiac arrest.

机构信息

Division of Emergency and Critical Care Medicine, Niigata University Graduate School of Medical and Dental Science, 1-757 Asahi-machi, Cyuoku, Niigata 951-8510, Japan.

出版信息

J Anesth. 2011 Feb;25(1):34-41. doi: 10.1007/s00540-010-1043-x. Epub 2010 Nov 27.

Abstract

PURPOSE

Ventricular fibrillation (VF) is a common cardiac arrest rhythm that can be terminated by electrical defibrillation. During cardiopulmonary resuscitation, there is a strong need for a prompt and reliable predictor of successful defibrillation because myocardial damage can result from repeated futile defibrillation attempts. Continuous wavelet transform (CWT) provides excellent time and frequency resolution of signals. The purpose of this study was to evaluate whether features based on CWT could predict successful defibrillation.

METHODS

VF electrocardiogram (ECG) waveforms stored in ambulance-located defibrillators were collected. Predefibrillation waveforms were divided into 1.0- or 5.12-s VF waveforms. Indices in frequency domain or nonlinear analysis were calculated on the 5.12-s waveform. Simultaneously, CWT was performed on the 1.0-s waveform, and total low-band (1-3 Hz), mid-band (3-10 Hz), and high-band (10-32 Hz) energy were calculated.

RESULTS

In 152 patients with out-of-hospital cardiac arrest, a total of 233 ECG predefibrillation recordings, consisting of 164 unsuccessful and 69 successful episodes, were analyzed. Indices of frequency domain analysis (peak frequency, centroid frequency, and amplitude spectral area), nonlinear analysis (approximate entropy and Hurst exponent, detrended fluctuation analysis), and CWT analysis (mid-band and high-band energy) were significantly different between unsuccessful and successful episodes (P < 0.01 for all). However, logistic regression analysis showed that centroid frequency and total mid-band energy were effective predictors (P < 0.01 for both).

CONCLUSIONS

Energy spectrum analysis based on CWT as short as a 1.0-s VF ECG waveform enables prompt and reliable prediction of successful defibrillation.

摘要

目的

心室颤动(VF)是一种常见的心脏骤停节律,可以通过电除颤来终止。在心肺复苏期间,需要一种快速可靠的预测除颤成功的方法,因为多次无效的除颤尝试会导致心肌损伤。连续小波变换(CWT)为信号提供了极好的时间和频率分辨率。本研究旨在评估基于 CWT 的特征是否可预测除颤成功。

方法

收集储存在救护车上的除颤器中的 VF 心电图(ECG)波形。将预除颤波形分为 1.0 或 5.12 秒的 VF 波形。在 5.12 秒的波形上计算频域或非线性分析的指标。同时,对 1.0 秒的波形进行 CWT,计算总低带(1-3 Hz)、中带(3-10 Hz)和高带(10-32 Hz)的能量。

结果

在 152 例院外心脏骤停患者中,共分析了 233 例心电图预除颤记录,包括 164 例不成功和 69 例成功的病例。频域分析指标(峰值频率、质心频率和幅度谱面积)、非线性分析指标(近似熵和赫斯特指数、去趋势波动分析)和 CWT 分析指标(中带和高带能量)在不成功和成功病例之间有显著差异(P<0.01 均)。然而,逻辑回归分析显示,质心频率和总中带能量是有效的预测指标(P<0.01 均)。

结论

基于 CWT 的能量谱分析,即使是 1.0 秒的 VF ECG 波形也能快速可靠地预测除颤成功。

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