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首页> 外文期刊>Australasian physical & engineering sciences in medicine >A new method without reference channels used for ventricular fibrillation detection during cardiopulmonary resuscitation
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A new method without reference channels used for ventricular fibrillation detection during cardiopulmonary resuscitation

机译:无参考通道的新方法用于心肺复苏过程中的心室颤动检测

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Ventricular fibrillation (VF) is observed as the initial rhythm in the majority of patients suffering from sudden cardiac arrest. It is vitally important to accurately recognize the initial VF rhythm and then implement electrical defibrillation. However, artifacts produced by chest compression during cardiopulmonary resuscitation (CPR) make the VF detection algorithms utilized by current automated external defibrillators (AEDs) unreliable. CPR must be traditionally interrupted for a reliable diagnosis. However, interruptions in chest compression have a deleterious effect on the success of defibrillation. The elimination of the CPR artifacts would enable compressions to continue during AED VF detection and thereby increase the likelihood of resuscitation success. We have estimated a model of this artifact by adaptively incorporating noise-assisted multivariate empirical mode decomposition (NA-MEMD) and least mean squares (LMS) and then removing the artifact from the corrupted ECGs. The simulation experiment indicated that the CPR artifact could be accurately modeled without any reference channels. We constructed a BP neural network to evaluate the results. A total of 372 VF and 645 normal sinus rhythm (SR) ECG samples were included in the analysis, and 24 CPR artifact signals were used to construct corrupted ECGs. The results indicated that at different SNR levels ranging from 0 to -12 dB, the sensitivity and specificity were always above 95 and 80 %, respectively.
机译:在大多数心脏骤停患者中,心室颤动(VF)被视为初始节律。准确识别初始VF节奏,然后实施电除颤至关重要。但是,心肺复苏(CPR)期间胸部受压产生的伪影使当前的自动体外除颤器(AED)使用的VF检测算法不可靠。传统上,必须中断CPR才能进行可靠的诊断。但是,胸外按压的中断会对除颤的成功产生不利影响。消除CPR伪影可以使压缩在AED VF检测期间继续进行,从而增加复苏成功的可能性。我们通过自适应地结合噪声辅助的多元经验模式分解(NA-MEMD)和最小均方(LMS),然后从损坏的ECG中移除伪像,从而估计了该伪像的模型。仿真实验表明,可以在没有任何参考通道的情况下对CPR伪像进行精确建模。我们构建了一个BP神经网络来评估结果。分析中总共包括372 VF和645正常窦性心律(SR)ECG样本,并使用24个CPR伪影信号来构建损坏的ECG。结果表明,在0至-12 dB的不同SNR级别下,灵敏度和特异性始终分别高于95%和80%。

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