Decision fusion of micro-variability and signal averaged ECG parameters from the QRS complex with RBF networks

H. Kestler, A. Muller, V. Hombach, J. Wohrle, O. Grebe, G. Palm, M. Moher, F. Schwenker
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引用次数: 1

Abstract

Two types of measurements are usually performed from high resolution ECG recordings: (a) static parameters derived from the signal-averaged QRS complex and (b) variant markers derived from beat-to-beat recordings. It is known that an increased QRS micro-variability and ventricular late potentials are associated with an increased risk for malignant arrhythmias. However, the diagnostic power of the singular parameters is limited In this study we investigated the diagnostic ability of a decision fusion of both variant and static high-resolution ECG parameters with radial-basis-function (RBF) networks. Continuous and signal-averaged ECGs were recorded from 51 healthy volunteers without any structural heart disease and no cardiac risk factors and from 44 patients with coronary heart disease and ventricular arrhythmias. Beat-to-beat micro-variability measurement of the QRS complex and the ST-T segment was based on 250 consecutive sinus beats per individual. Signal-averaged ECGs were analyzed with the Simson method (QRSD, RMS, LAS). Two RBF networks were trained One on the three signal averaged parameters and one with the 141D variability vector The two soft decisions from each RBF network were then combined by average fusion and maximum detection into a final crisp decision which resulted in an unusually high discriminative accuracy.
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基于RBF网络的微变异性与信号平均心电参数的决策融合
通常从高分辨率ECG记录中进行两种类型的测量:(a)从信号平均QRS复合物中获得的静态参数和(b)从心跳记录中获得的可变标记。众所周知,增加的QRS微变异性和心室晚期电位与恶性心律失常的风险增加有关。然而,单一参数的诊断能力是有限的。在本研究中,我们研究了基于径向基函数(RBF)网络的可变和静态高分辨率ECG参数决策融合的诊断能力。记录了51名没有任何结构性心脏病和心脏危险因素的健康志愿者和44名冠心病和室性心律失常患者的连续和信号平均心电图。QRS复合体和ST-T段的搏动微变异性测量是基于每个人连续250次窦性搏动。采用Simson方法(QRSD, RMS, LAS)分析信号平均心电图。两个RBF网络分别在三个信号平均参数和141D变异向量上进行训练,然后通过平均融合和最大检测将每个RBF网络的两个软决策组合成最终的清晰决策,从而获得异常高的判别精度。
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