应用非线性ARX模型诊断心脏病

N. Shamsuddin, M. Taib
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引用次数: 4

摘要

本文提出了一种基于非线性ARX (NARX)模型的心脏病诊断系统。该系统基于心音,利用神经网络对正常和几种心脏病进行模型估计和分类。在分类中,利用谱图对模型心音进行特征提取和选择。将特征输入FFNN并使用弹性反向传播(RPROP)算法进行训练。当优化学习参数为0.07时,网络在32-220-6时的性能最佳。经过诊断测试验证后,该网络的准确性超过97%,这表明该网络表现良好,达到了金标准。当进行整体测试时,心脏病的分类进一步提高到100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of heart diseases using nonlinear ARX model
This paper proposed the heart disease diagnosis system using nonlinear ARX (NARX) model. The system uses neural network for model estimation and classification of Normal and several heart diseases based on heart sounds. In classification, a spectrogram was applied to the modeled heart sounds for features extraction and selection. The features were fed to the FFNN and trained using Resilient Backpropagation (RPROP) algorithm. With optimized learning parameter of 0.07, the network gave best performance at 32-220-6. The accuracy of the network when validated with the diagnostic test was above 97% which suggests that the network performed well and was doing as gold standard. The classification of heart diseases was further improved to 100% when overall testing was performed.
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