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首页> 外文期刊>Journal of Medical Engineering >An Irregularity Measurement Based Cardiac Status Recognition Using Support Vector Machine
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An Irregularity Measurement Based Cardiac Status Recognition Using Support Vector Machine

机译:基于不规则测量的支持向量机心脏状态识别

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An automated robust feature extraction technique is proposed in this paper based on inherent structural distribution of heart sound to analyze the phonocardiogram signal in presence of environmental noise and interference of lung sound signal. The structural complexity of the heart sound signal is estimated in terms of sample entropy using a nonlinear signal processing framework. The effectiveness of the feature is evaluated using a support vector machine under two different circumstances which include Gaussian noise and pulmonary perturbation. The analysis framework has been executed on a composite data set of 60 healthy and 60 pathological individuals for different SNR levels (−5 to 10 dB) and the performance accuracy is close to that of the clean signal. In addition, a comparative study has been done with conventional approaches which includes waveform analysis, spectral domain inspection, and spectrogram evaluation. The experimental results show that sample entropy based classification method gives an accuracy of 96.67% for clean data and 91.66% for noisy data of SNR 10 dB. The result suggests that the proposed method performs significantly well over the visual and audio test.
机译:本文提出了一种基于心音固有结构分布的自动鲁棒特征提取技术,以分析存在环境噪声和肺声信号干扰时的心电图信号。使用非线性信号处理框架,根据样本熵估计心音信号的结构复杂性。使用支持向量机在两种不同的情况下(包括高斯噪声和肺微扰)评估功能的有效性。分析框架已针对60个健康个体和60个病理个体的不同SNR水平(-5至10 dB)的复合数据集执行,其性能精度接近纯净信号的精度。此外,已经对包括波形分析,频谱域检查和频谱图评估在内的常规方法进行了比较研究。实验结果表明,基于样本熵的分类方法对SNR为10 dB的干净数据的准确度为96.67%,对于噪声数据的准确度为91.66%。结果表明,所提出的方法在视觉和音频测试中表现良好。

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