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Identification of QRS Segments of Electrocardiogram signals using Feature Extraction

机译:使用特征提取识别心电图信号的QRS片段

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For the intensive need of arrhythmia identification of patients it is necessary to explore the feature segments of electrical representation of heart signals i.e. ECG signals. A feature extraction algorithm is presented in this paper for QRS segment detection, which is based upon the amplitude and derivative characteristics of QRS complex segment. The performance of proposed algorithm is evaluated on the parameters of sensitivity (Se %) and positive predictivity (+P %) and compared with Pan Tompkins and GR algorithm for clinical database. Sensitivity (Se %) of proposed algorithm is calculated as 99.71% which is 0.46 % higher than Pan Tompkins and 0.02% higher than GR algorithm. The overall positive predictivity (+P %) of proposed algorithm is 99.69% which is 0.58% higher than Pan Tompkins and 0.2% higher than GR algorithm. The proposed algorithm performs superior as a result from parametric improvements for the MIT-BIH arrhythmia database.
机译:对于心律失常的心律失常鉴定,有必要探索心脏信号的电气表示的特征段。ECG信号。 本文提出了一种特征提取算法,用于QRS段检测,其基于QRS复杂段的幅度和衍生特性。 在敏感性(SE%)和阳性预测性(+ P%)的参数上评估了所提出的算法的性能,并与PAN Tompkins和GR临床数据库的GR算法进行比较。 所提出的算法的敏感性(SE%)计算为99.71%,比PAN TOMPKIN高0.46%,比GR算法高0.02%。 所提出的算法的总体阳性预测性(+ P%)为99.69%,比PAN Tompkins高0.58%,比GR算法高0.2%。 所提出的算法作为MIT-BIH心律失常数据库的参数改进来执行优越的结果。

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