Cardiac disease classification using heart rate signals.

V Mahesh, A Kandaswamy, C Vimal, B Sathish
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引用次数: 10

Abstract

Heart rate and Heart Rate Variability (HRV) are important measures that reflect the state of the cardiovascular system. HRV analysis has gained prominence in the field of cardiology for detecting cardiac abnormalities. This paper presents the study made on the use of linear (time domain and frequency domain) and nonlinear measures of heart rate variability for accurate classification of certain cardiac diseases. Three different classifiers, viz. Random Forests, Logistic Model Tree and Multilayer Perceptron Neural Network have been used for the classification. Data for use in this work has been obtained from the standard ECG databases in the Physionet website. Classification has been attempted using linear parameters, nonlinear parameters and combined. The classification results indicate that the combination of linear and nonlinear measures is a better indicator of heart diseases than linear or nonlinear measures alone. The results obtained by this study are comparable with those obtained with other techniques cited in the literature.

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利用心率信号对心脏病进行分类。
心率和心率变异性(HRV)是反映心血管系统状态的重要指标。HRV分析在心脏病学领域已获得突出地位,用于检测心脏异常。本文介绍了利用心率变异性的线性(时域和频域)和非线性测量方法对某些心脏疾病进行准确分类的研究。三种不同的分类器,即随机森林,逻辑模型树和多层感知器神经网络被用于分类。本研究中使用的数据来自Physionet网站上的标准心电图数据库。尝试用线性参数、非线性参数和组合参数进行分类。分类结果表明,线性和非线性相结合的指标比单独的线性或非线性指标更能反映心脏疾病。本研究所得的结果与文献中引用的其他技术所得的结果具有可比性。
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
25
期刊介绍: The IJEH is an authoritative, fully-refereed international journal which presents current practice and research in the area of e-healthcare. It is dedicated to design, development, management, implementation, technology, and application issues in e-healthcare.
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