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Automatic location of ventricular arrhythmia using implantable defibrillator stored electrograms

机译:使用植入式除颤器存储的电描记图自动定位室性心律失常

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Electrograms (EGM) stored in Implantable Cardioverter Defibrillator (ICD) during ventricular tachycardia episodes have recently been shown to convey valuable information for the identification of the anatomical origin of the arrhythmia and subsequent ablation therapy. We developed an automatic procedure for estimating the focal origin of the arrhythmia by analyzing the EGM waveforms. A clinical protocol was designed for validation, consisting of electrical pacing from different spatial locations in the left ventricle, in which the spatial coordinates of the pacing electrode were known by the use of a sequential navigation system. EGM from can-coil lead configuration were stored in the ICD for 25 patients (18 ± 10.1 EGM per patient). Several machine learning classifiers (k nearest neighbors, radial basis function, and multilayer perceptron), were implemented, whose input space was given by the 201 samples (340 ms) of the template for each pacing location, and by a set of simple parameters selected according to clinical criteria. The target output was set by considering the heart division in three main planes, hence giving jointly 8 possible classification regions (octants). To estimate the generalization performance, classification was evaluated following a leave-one-patient-out strategy. Location accuracy reached 73%, 58.4%, 57.5% (for binary classification in terms of main planes), and for octant identification with multioutput classification reached 36.3% (note that the random 8-output classifier average accuracy rate is 12.5%). We can conclude that the estimation of the arrhythmia location can be addressed by analyzing the EGM waveform and features using learning from samples techniques.
机译:最近显示,在室性心动过速发作期间存储在植入式心脏复律除颤器(ICD)中的电描记图(EGM)可传达有价值的信息,可用于识别心律不齐的解剖学起源以及随后的消融治疗。我们开发了一种自动程序,通过分析EGM波形来估计心律失常的病源。设计了一种用于验证的临床方案,包括从左心室不同空间位置起搏,其中通过使用顺序导航系统获知起搏电极的空间坐标。来自罐头线圈构造的EGM被存储在ICD中,用于25位患者(每位患者18±10.1 EGM)。实现了多个机器学习分类器(k个最近的分类器,径向基函数和多层感知器),其输入空间由每个起搏位置的模板的201个样本(340毫秒)给出,并由一组简单的参数选择根据临床标准。通过考虑在三个主平面中进行心脏划分来设置目标输出,从而共同给出8个可能的分类区域(八分圆)。为了评估泛化性能,按照“一人一事”的策略对分类进行评估。定位精度达到73%,58.4%,57.5%(就主平面而言是二进制分类),并且对于具有多输出分类的八分位符识别,其达到了36.3%(请注意,随机8输出分类器的平均准确率为12.5%)。我们可以得出结论,心律失常位置的估计可以通过使用样本技术学习来分析EGM波形和特征来解决。

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