Early Abnormal Heartbeat Multistage Classification by using Decision Tree and K-Nearest Neighbor

Mohamad Sabri bin Sinal, E. Kamioka
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引用次数: 1

Abstract

Heart diseases contribute to the highest cause of death around the world particularly for middle aged and elderly people. There are various types of heart disease symptoms. One of the most common types is Arrhythmia which is considered as a dangerous heart condition since the symptom itself may initiate more chronic heart diseases and result in death if it is not treated earlier. However, the detection of Arrhythmia by humans is regarded as a challenging task because the natures of the symptom appear at random times. Therefore, an automatic detection method of abnormal heartbeat in ECG (electrocardiogram) data is needed to overcome the issue. In this paper, a novel multistage classification approach using K-Nearest Neighbor and decision tree of the 3 segments in the ECG cycle is proposed to detect Arrhythmia heartbeat from the early minute of ECG data. Specific attributes based on feature extraction in each heartbeat are used to classify the Normal Sinus Rhythm and Arrhythmia. The experimental result shows that the proposed multistage classification approach is able to detect the Arrhythmia heartbeat with 90.6% accuracy for the P and the Q peak segments, 91.1% accuracy for the Q, R and S peak segments and lastly, 97.7% accuracy for the S and the T peak segments, outperforming the other data mining techniques.
基于决策树和k近邻的早期异常心跳多阶段分类
心脏病是世界上导致死亡的最高原因,特别是对中老年人而言。心脏病的症状有很多种。最常见的类型之一是心律失常,它被认为是一种危险的心脏病,因为症状本身可能引发更多的慢性心脏病,如果不及早治疗,可能导致死亡。然而,人类对心律失常的检测被认为是一项具有挑战性的任务,因为症状的性质是随机出现的。因此,需要一种自动检测ECG (electrocardiogram)数据中异常心跳的方法来解决这个问题。本文提出了一种基于k近邻和心电周期3段决策树的多阶段分类方法,从心电数据的前分钟开始检测心律失常。基于每次心跳特征提取的特定属性,对正常窦性心律和心律失常进行分类。实验结果表明,所提出的多阶段分类方法对心律失常的检测准确率为90.6%,对Q、R、S峰段的准确率为91.1%,对S、T峰段的准确率为97.7%,优于其他数据挖掘技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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