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A radial basis function neural network for the detection of abnormal intra-QRS potentials

机译:径向基函数神经网络用于检测QRS内异常电位

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Abnormal intra-QRS potentials (AIQP) in signal-averaged electrocardiograms have been proposed to be a potential noninvasive index for the diagnosis of the risk of ventricular arrhythmias. This study tries to develop a nonlinear neural network using radial basis functions (RBF) to approximate the normal QRS complex and then to estimate the AIQP using the approximation error, and further to quantify the estimation error of the AIQP. Different spread parameters of the Gaussian kernel function in the hidden layer have been adopted to evaluate the approximation accuracy of the RBF neural network. The study group of AIQP was constructed by adding a white noise with a root-mean-square value of 5 μV into the QRS complexes of the normal subjects to simulate the presence of AIQP. The study results illustrate that the mean root-mean-square values of the estimated AIQP in the AIQP group were 2.5 μV, 3.5 μV, 2.9 μV and 2.3 μV larger than those in the normal group using the spread parameters of 5, 10, 15 and 20, respectively. Hence the maximum accuracy of the proposed RBF neural network for the estimation of AIQP can reach 70% (3.5 μV compared to the ideal value of 5 μV).
机译:信号平均心电图中异常的QRS内电位(AIQP)已被提议为诊断室性心律失常风险的潜在非侵入性指标。本研究试图开发一种使用径向基函数(RBF)来逼近正常QRS复数的非线性神经网络,然后使用逼近误差来估算AIQP,并进一步量化AIQP的估算误差。采用高斯核函数在隐藏层中的不同扩展参数来评估RBF神经网络的近似精度。 AIQP的研究小组是通过将均方根值为5μV的白噪声添加到正常受试者的QRS复合物中以模拟AIQP的存在而构建的。研究结果表明,使用5、10、15的扩展参数,AIQP组中估计的AIQP的均方根值比正常组分别大2.5μV,3.5μV,2.9μV和2.3μV和20。因此,建议的RBF神经网络用于AIQP估计的最大精度可以达到70%(3.5 µV,理想值5 µV)。

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