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Morphologic based feature extraction for arrhythmia beat detection

机译:基于形态学的特征提取用于心律失常搏动检测

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Heart disease is one of the diseases which has highest mortality rate recently. Heart's electrical activity examination and interpretation are very important for the understanding of diseases. In this study, electrocardiogram signals are analyzed, then patient's healthy and arrhythmia beats are extracted. RR, QRS, Skewness and Linear Predictive Coding coefficients of the signals are considered for classification of the data. K-NN, Random SubSpaces, Naive Bayes and K-Star classifiers are used. The highest accuracy is obtained with the K-NN algorithm (98.32%). At the second stage of the K-NN algorithm, accuracy levels are examined by changing the `k' parameter.
机译:心脏病是最近死亡率最高的疾病之一。心脏的电活动检查和解释对于理解疾病非常重要。在这项研究中,分析心电图信号,然后提取患者的健康和心律不齐的搏动。考虑信号的RR,QRS,偏度和线性预测编码系数以进行数据分类。使用K-NN,随机子空间,朴素贝叶斯和K-Star分类器。使用K-NN算法可获得最高的准确性(98.32%)。在K-NN算法的第二阶段,通过更改“ k”参数来检查准确性级别。

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