首页> 外文期刊>Journal of Medical Systems >Classification of the Frequency of Carotid Artery Stenosis with MLP and RBF Neural Networks in Patients with Coroner Artery Disease
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Classification of the Frequency of Carotid Artery Stenosis with MLP and RBF Neural Networks in Patients with Coroner Artery Disease

机译:MLP和RBF神经网络对冠状动脉疾病患者颈动脉狭窄频率的分类

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摘要

For the classification of left and right Internal Carotid Arteries (ICA) stenosis, Doppler signals have been received from the patients with coroner arteries stenosis by using 6.2–8.4 MHz linear transducer. To be able to classify the data obtained from LICA and RICA in artificial intelligence, MLP and RBF neural networks were used. The number of obstructed veins from the coroner angiography, intimal thickness, and plaque formation from the power Doppler US and resistive index values were used as the input data for the neural networks. Our findings demonstrated that 87.5% correct classification rate was obtained from MLP neural network and 80% correct classification rate was obtained from RBF neural network. MLP neural network has classified more successfully when compared with RBF neural network.
机译:对于左颈和右颈内动脉狭窄(ICA)的分类,已通过使用6.2–8.4 MHz线性换能器从患有冠状动脉狭窄的患者中接收了多普勒信号。为了能够对从LICA和RICA获得的人工智能数据进行分类,使用了MLP和RBF神经网络。验尸冠状动脉造影的静脉阻塞数,内膜厚度和动力多普勒超声检查的斑块形成以及电阻指数值均用作神经网络的输入数据。我们的发现表明,从MLP神经网络获得87.5%的正确分类率,从RBF神经网络获得80%的正确分类率。与RBF神经网络相比,MLP神经网络已成功分类。

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