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Automated cardiac state diagnosis from hybrid features of ECG using neural network classifier

机译:使用神经网络分类器从ECG的混合特征中自动进行心脏状态诊断

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Accurate non-invasive Electrocardiogram (ECG) analysis has a significant emerging role in automated cardiac state diagnosis. Conventional ECG analysis techniques such as linear and second-order spectra fail to retain Fourier phase relationship and suppress random variations in non-linear, non-stationary and non-Gaussian ECG signals. This may provide misguided results. A highly accurate algorithm utilising statistics of fourth-order spectra (trispectrum) is introduced to capture clinically significant variations in ECG that can cater to these limitations. Five temporal interval and three trispectral entropy features are extracted from individual beat of ECG signals loaded from MIT-BIH arrhythmia database and quantified using box plots. A three-layer feedforward neural network classifier with 50 hidden layer neurons is configured using the Levenberg-Marquardt algorithm to yield an average accuracy of 95.10% while classifying six cardiac states. Significant enhancement in the performance with reduced computational complexity has been observed using a low-dimensional hybrid ECG feature set and a simple classifier showing the effectiveness of the proposed man-machine interface for automated cardiac state diagnosis.
机译:准确的非侵入性心电图(ECG)分析在自动心脏状态诊断中具有重要的新兴作用。常规的ECG分析技术(例如线性和二阶光谱)无法保持傅立叶相位关系,也无法抑制非线性,非平稳和非高斯ECG信号中的随机变化。这可能会提供错误的结果。引入了一种利用四阶光谱(三光谱)统计数据的高精度算法,以捕获可满足这些限制的临床上重要的ECG变化。从MIT-BIH心律失常数据库中加载的ECG信号的单个搏动中提取五个时间间隔和三个三谱熵特征,并使用箱形图进行量化。使用Levenberg-Marquardt算法配置具有50个隐藏层神经元的三层前馈神经网络分类器,以在对六个心脏状态进行分类时产生95.10%的平均准确度。使用低维混合ECG功能集和简单的分类器,可以观察到性能显着提高,而计算复杂度却降低了,该分类器显示了所提出的人机界面对自动心脏状态诊断的有效性。

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