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Arrhythmias discrimination based on fractional order system and KNN classifier

机译:基于分数阶系统和KNN分类器的心律失常判别

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The electrocardiogram (ECG) signal may contain useful information about the nature of the diseases afflicting the heart. However, the cardiac abnormalities information cannot be easily and directly monitored by the human eye for large amount of ECG data. Hence, computer assisted methods are very important to monitor cardiac health easily and accurately. In this paper, ECG Normal beats (N), Premature Ventricular Contraction beats (PVC) and Bundle Branch Block beats (BBB) (right and left) discrimination through a new modeling technique of the QRS complex frequency content is investigated. Because of the fractional slope behavior of the power spectrum of the QRS complexes, the proposed model of the QRS complex frequency content is a linear fractional system of commensurate order. These fractional models of normal and abnormal QRS complexes are used to extract useful information about the functional activity of the heart. In this context, the features used for the ECG beats discrimination are the parameters of the linear fractional system of commensurate order. These pertinent features are then classified using the K-Nearest Neighbors (KNN) classifier, because is simple and more suitable for this type of features. The performance and the effectiveness of the proposed method is evaluated and validated on the ECG signals of the MIT/BIH arrhythmia database. The proposed method has achieved 95.161% of accuracy for 23 records form the database.
机译:心电图(ECG)信号可能包含有关患心脏疾病的性质的有用信息。但是,对于大量的ECG数据,人眼无法轻松,直接地监视心脏异常信息。因此,计算机辅助方法对于轻松,准确地监测心脏健康非常重要。本文研究了一种通过QRS复数频率内容的新建模技术对ECG正常搏动(N),室性早搏搏动(PVC)和束支传导阻滞搏动(BBB)(左右)进行识别的方法。由于QRS复数功率谱的分数斜率行为,QRS复数频率含量的拟议模型是一个具有适当阶数的线性分数系统。这些正常和异常QRS络合物的分数模型用于提取有关心脏功能活动的有用信息。在这种情况下,用于ECG搏动判别的特征是相应阶数的线性分数系统的参数。然后,使用K最近邻(KNN)分类器对这些相关特征进行分类,因为它很简单并且更适合此类特征。在MIT / BIH心律失常数据库的ECG信号上评估和验证了该方法的性能和有效性。该方法对数据库的23条记录的准确率达到95.161%。

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