首页> 外文会议>2012 IEEE 27th Convention of Electrical and Electronics Engineers in Israel. >Cardiac arrhythmia classification in 12-lead ECG using synthetic atrial activity signal
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Cardiac arrhythmia classification in 12-lead ECG using synthetic atrial activity signal

机译:使用合成心房活动信号对12导联心电图进行心律失常分类

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Analysis of the ECG signal is the prevalent method for diagnosing cardiac arrhythmia. In order to achieve a precise diagnosis, the physician must carefully examine the quantity, location, and relations between the ECG signal elements, with emphasis given to the atrial electrical activity (AEA) wave characteristics. Nevertheless, in some cases the AEA-waves are hidden in other waves, and in order to classify the correct arrhythmia an invasive procedure is performed. We propose a fully automated computer-based method for arrhythmia classification, based on our recently developed AEA detection algorithm, combined with two extracted rhythm-based features and a clinically oriented set of rules. Twenty-nine patients presenting atrioventricular nodal reentry tachycardia, atrioventricular reentry tachycardia, sinus tachycardia, atrial flutter, and sinus rhythm were studied. The arrhythmia classifier achieved 92.2% accuracy, 83.9% sensitivity, and 94.9% specificity.
机译:心电图信号分析是诊断心律不齐的普遍方法。为了实现精确的诊断,医生必须仔细检查ECG信号元素之间的数量,位置和关系,重点是心房电活动(AEA)波的特征。然而,在某些情况下,AEA波隐藏在其他波中,并且为了对正确的心律失常进行分类,需要执行侵入性手术。我们基于我们最近开发的AEA检测算法,结合两个基于节奏的提取特征和一套面向临床的规则,提出了一种基于计算机的自动心律失常分类方法。研究了29例表现为房室结折返性心动过速,房室折返性心动过速,窦性心动过速,房扑和窦性心律的患者。心律失常分类器达到92.2%的准确性,83.9%的敏感性和94.9%的特异性。

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