Heartbeat pattern classification algorithm based on Gaussian mixture model

Mehmet Iscan, F. Yigit, C. Yilmaz
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引用次数: 5

Abstract

Nowadays, probabilistic neural networks have been frequently used to pattern discrimination in biological signals despite of non-stationary and individual characteristics of human subjects. In this study, a new approach was proposed to pattern classification for electrocardiography (ECG) signals based on Gaussian mixture model and logarithmic linearization. The objective of this study was to identify and classify QRS complexes on ECG patterns. For this purpose, a high performance method to classify and discriminate various ECG patterns was developed. Besides, a comparison algorithm which evaluates time series signals was established, and the limitation of its parameters was determined in order to attain high performance in ECG classification. The proposed algorithm has been tested on the data from 20 normal subjects and 22 additional normal data sets from MIT-DB database. After the improvement by the proposed algorithm, we observed 99.21% and 99.24% of recognition rates in ECG data from 20 normal subjects and MIT-DB database, respectively. The results showed that the proposed algorithm achieved a high performance to classify and discriminate various ECG signals.
基于高斯混合模型的心跳模式分类算法
目前,概率神经网络已被广泛应用于生物信号的模式识别,尽管人类具有非平稳性和个体特征。本文提出了一种基于高斯混合模型和对数线性化的心电信号模式分类方法。本研究的目的是识别和分类心电图模式上的QRS复合物。为此,开发了一种高性能的心电模式分类和判别方法。此外,建立了一种对时间序列信号进行评估的比较算法,并确定了其参数的局限性,以获得较高的心电分类性能。该算法已在20个正常受试者数据和另外22个来自MIT-DB数据库的正常数据集上进行了测试。改进后的算法在20例正常人和MIT-DB数据库的心电数据中分别达到99.21%和99.24%的识别率。实验结果表明,该算法对各种心电信号的分类和鉴别具有较高的性能。
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