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Measuring Saliency of Features Using Signal-to-noise Ratios for Detection of Electrocardiographic Changes in Partial Epileptic Patients

机译:使用信噪比测量特征的显着性以检测部分癫痫患者的心电图变化

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摘要

Medical diagnostic accuracies can be improved when the pattern is simplified through representation by important features. The feature vector, which is comprised of the set of all features used to describe a pattern, is a reduced-dimensional representation of that pattern. By identifying a set of salient features, the noise in a classification model can be reduced, resulting in more accurate classification. In this study, a signal-to-noise ratio (SNR) saliency measure was employed to determine saliency of input features of probabilistic neural networks (PNNs) used in classification of two types of electrocardiogram (ECG) beats (normal and partial epilepsy). In order to extract features representing the ECG signals, discrete wavelet transform was used. The PNNs used in the ECG signals classification were trained for the SNR screening method. The application results of the SNR screening method to the ECG signals demonstrated that classification accuracies of the PNNs with salient input features are higher than that of the PNNs with salient and non-salient input features.
机译:通过以重要特征表示可以简化模式,从而可以提高医疗诊断的准确性。由用于描述图案的所有特征的集合组成的特征向量是该图案的降维表示。通过识别一组显着特征,可以减少分类模型中的噪声,从而实现更准确的分类。在这项研究中,采用信噪比(SNR)显着性度量来确定概率神经网络(PNN)的输入特征的显着性,该概率用于对两种心电图(ECG)搏动(正常和部分癫痫)进行分类。为了提取代表ECG信号的特征,使用了离散小波变换。对ECG信号分类中使用的PNN进行了SNR筛选方法的培训。 SNR筛选方法在ECG信号上的应用结果表明,具有显着输入特征的PNN的分类精度高于具有显着和非显着输入特征的PNN的分类精度。

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