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CAD DETECTION USING NEURAL NETWORK FUSION OF THE 12 LEAD STRESS ECG SYSTEM

机译:CAD检测使用12铅应力ECG系统的神经网络融合

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In this paper, we develop and test a system for integrating transformed information of the 12 lead stress ECG signals, at the classifier real-valued output level. A coronary artery disease data set was collected and utilized in this study. Four types of features were extracted using the discrete cosine transform, two levels of the discrete wavelet transform, and dimensionality-reduced data using principle component analysis. For each feature type, 12 neural networks were trained and tested using the backpropagation algorithm. Several experiments have been conducted to test this system. Results have demonstrated superior performance when using a fusion of 12 classifier output values, compared to single lead classifier systems. We observed that a 3-level discrete wavelet transform has computed 95-100% performance success rates, using sensitivity, specificity, or accuracy.
机译:在本文中,我们开发和测试一个系统,用于将12个引线应力ECG信号的转换信息集成在分类器实际值输出电平。在本研究中收集并利用冠状动脉疾病数据集。使用离散余弦变换,三个离散小波变换的三个水平提取四种特征,以及使用原理分量分析的维度降低的数据。对于每个特征类型,使用BackProjagation算法训练和测试12个神经网络。已经进行了几个实验以测试该系统。与单引线分类器系统相比,使用12分类器输出值的融合时,结果表明了卓越的性能。我们观察到,3级离散小波变换已经使用灵敏度,特异性或准确性计算了95-100%的性能成功率。

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