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一种用于活塞驱动机械胸外按压过程中心电图节律分析的多阶段算法。

A Multistage Algorithm for ECG Rhythm Analysis During Piston-Driven Mechanical Chest Compressions.

出版信息

IEEE Trans Biomed Eng. 2019 Jan;66(1):263-272. doi: 10.1109/TBME.2018.2827304. Epub 2018 Apr 16.

Abstract

GOAL

An accurate rhythm analysis during cardiopulmonary resuscitation (CPR) would contribute to increase the survival from out-of-hospital cardiac arrest. Piston-driven mechanical compression devices are frequently used to deliver CPR. The objective of this paper was to design a method to accurately diagnose the rhythm during compressions delivered by a piston-driven device.

METHODS

Data was gathered from 230 out-of-hospital cardiac arrest patients treated with the LUCAS 2 mechanical CPR device. The dataset comprised 201 shockable and 844 nonshockable ECG segments, whereof 270 were asystole (AS) and 574 organized rhythm (OR). A multistage algorithm (MSA) was designed, which included two artifact filters based on a recursive least squares algorithm, a rhythm analysis algorithm from a commercial defibrillator, and an ECG-slope-based rhythm classifier. Data was partitioned randomly and patient-wise into training (60%) and test (40%) for optimization and validation, and statistically meaningful results were obtained repeating the process 500 times.

RESULTS

The mean (standard deviation) sensitivity (SE) for shockable rhythms, specificity (SP) for nonshockable rhythms, and the total accuracy of the MSA solution were: 91.7 (6.0), 98.1 (1.1), and 96.9 (0.9), respectively. The SP for AS and OR were 98.0 (1.7) and 98.1 (1.4), respectively.

CONCLUSIONS

The SE/SP were above the 90%/95% values recommended by the American Heart Association for shockable and nonshockable rhythms other than sinus rhythm, respectively.

SIGNIFICANCE

It is possible to accurately diagnose the rhythm during mechanical chest compressions and the results considerably improve those obtained by previous algorithms.

摘要

目的

心肺复苏(CPR)过程中准确的节律分析有助于提高院外心脏骤停患者的存活率。活塞驱动的机械按压设备常用于实施 CPR。本文旨在设计一种方法,以准确诊断活塞驱动设备按压过程中的节律。

方法

本研究纳入了 230 例使用 LUCAS 2 型机械 CPR 设备治疗的院外心脏骤停患者的数据。该数据集包含 201 个可电击节律和 844 个不可电击节律段,其中 270 个为停搏(AS),574 个为有组织节律(OR)。设计了一个多阶段算法(MSA),该算法包括基于递归最小二乘法的两个伪影滤波器、一种来自商业除颤器的节律分析算法以及一种基于 ECG 斜率的节律分类器。数据以随机且患者为单位进行划分,分为训练集(60%)和测试集(40%),以进行优化和验证,并通过重复该过程 500 次获得具有统计学意义的结果。

结果

MSA 解决方案的可电击节律的平均(标准差)敏感度(SE)、不可电击节律的特异性(SP)和总准确率分别为:91.7(6.0)、98.1(1.1)和 96.9(0.9)。AS 和 OR 的 SP 分别为 98.0(1.7)和 98.1(1.4)。

结论

SE/SP 分别高于美国心脏协会推荐的可电击和不可电击节律(除窦性节律外)的 90%/95%值。

意义

可以准确诊断机械性胸部按压过程中的节律,并且结果明显优于以前的算法。

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