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Automated Prediction of Sudden Cardiac Death Risk Using Kolmogorov Complexity and Recurrence Quantification Analysis Features Extracted from HRV Signals

机译:使用Kolmogorov复杂度和从HRV信号中提取的复发量化分析特征自动预测突然的心脏死亡风险

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Sudden Cardiac Death (SCD) is an unexpected sudden death of a person followed by Ventricular Fibrillation (VF) or Ventricular Tachycardia (VT) which is usually diagnosed using Electrocardiogram (ECG). Prediction of developing SCD is important for expeditious treatment and thus reducing the mortality rate. In our previous paper, we have developed the Sudden Cardiac Death Index (SCDI) to predict the SCD four minutes prior to its onset using nonlinear features extracted from Discrete Wavelet Transform (DWT) coefficients using ECG signals. In this present paper, we are proposing an automated prediction of SCD using Recurrence Quantification Analysis (RQA) and Kolmogorov complexity parameters extracted from Heart Rate Variability (HRV) signals. The extracted features ranked using t-test are subjected to k-Nearest Neighbor (k-NN), Decision Tree (DT), Support Vector Machine (SVM) and Probabilistic Neural Network (PNN) classifiers for automated classification of normal and SCD classes for of 1min, 2min, 3min and 4 min before SCD durations. Our results show that, we are able to predict the SCD four minutes before its onset with an average accuracy of 86.8%, sensitivity of 80%, and specificity of 94.4% using k-NN classifier and average accuracy of 86.8%, sensitivity of 85%, specificity of 88.8% using PNN classifier. The performance of the proposed system can be improved further by adding more features and more robust classifiers.
机译:心脏骤停死亡(SCD)是人的意外猝死,然后发生室颤(VF)或室性心动过速(VT),通常使用心电图(ECG)进行诊断。预测SCD的发展对于迅速治疗并因此降低死亡率很重要。在我们之前的论文中,我们已经开发了心脏骤停死亡指数(SCDI),可以使用心电图信号从离散小波变换(DWT)系数中提取的非线性特征预测SCD发作前四分钟。在本文中,我们建议使用递归量化分析(RQA)和从心率变异性(HRV)信号提取的Kolmogorov复杂性参数对SCD进行自动预测。使用t检验对提取的特征进行排序后,将其应用于k最近邻(k-NN),决策树(DT),支持向量机(SVM)和概率神经网络(PNN)分类器,以自动分类普通和SCD类。 SCD持续时间之前的1分钟,2分钟,3分钟和4分钟。我们的结果表明,我们能够使用k-NN分类器预测SCD发病前4分钟的平均准确度,平均准确度为86.8%,敏感度为80%,特异性为94.4%,平均准确度为86.8%,敏感度为85 %,使用PNN分类器的特异性为88.8%。通过添加更多功能和更强大的分类器,可以进一步提高所提出系统的性能。

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