首页> 外文会议>2012 Proceedings of SICE Annual Conference. >Fuzzy learning vector quantization particle swarm optimization (FLVQ-PSO) and fuzzy neuro generalized learning vector quantization (FN-GLVQ) for automatic early detection system of heart diseases based on real-time electrocardiogram
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Fuzzy learning vector quantization particle swarm optimization (FLVQ-PSO) and fuzzy neuro generalized learning vector quantization (FN-GLVQ) for automatic early detection system of heart diseases based on real-time electrocardiogram

机译:基于实时心电图的心脏病自动早期检测系统的模糊学习矢量量化粒子群优化(FLVQ-PSO)和模糊神经广义学习矢量量化(FN-GLVQ)

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摘要

Automatic heart beats classification has attracted much interest for research recently and we are interested to determine the type of arrhythmia from electrocardiogram (ECG) signal automatically. This paper will discuss thoroughly about study and implementation of FLVQ-PSO, an extension from FLVQ algorithm which use MSA and PSO method, and FN-GLVQ, an extension from GLVQ algorithm which use fuzzy logic concept, to classify ECG signals. By using 10-Fold Cross Validation, the algorithm produced an average accuracy 84.02%, 98.25%, 99.00%, and 97.70%, respectively for FLVQ, FLVQ-PSO, GLVQ, and FN-GLVQ.
机译:自动心律分类最近引起了广泛的研究兴趣,我们感兴趣的是根据心电图(ECG)自动确定心律失常的类型。本文将深入讨论FLVQ-PSO的研究和实现,FLVQ-PSO是使用MSA和PSO方法的FLVQ算法的扩展,而FN-GLVQ是使用模糊逻辑概念的GLVQ算法的扩展,用于对ECG信号进行分类。通过使用十折交叉验证,该算法分别为FLVQ,FLVQ-PSO,GLVQ和FN-GLVQ分别产生了84.02%,98.25%,99.00%和97.70%的平均准确度。

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