Ubeyli Elif Derya, Güler Inan
Department of Electrical and Electronics Engineering, Faculty of Engineering, TOBB Ekonomi ve Teknoloji Universitesi, Söğütözü, Ankara, Turkey.
J Med Syst. 2006 Jun;30(3):221-9. doi: 10.1007/s10916-005-7992-1.
In this study, internal carotid arterial Doppler signals recorded from 130 subjects, where 45 of them suffered from internal carotid artery stenosis, 44 of them suffered from internal carotid artery occlusion and the rest of them were healthy subjects, were classified using wavelet-based neural network. Wavelet-based neural network model, employing the multilayer perceptron, was used for analysis of the internal carotid arterial Doppler signals. Multi-layer perceptron neural network (MLPNN) trained with the Levenberg-Marquardt algorithm was used to detect stenosis and occlusion in internal carotid arteries. In order to determine the MLPNN inputs, spectral analysis of the internal carotid arterial Doppler signals was performed using wavelet transform (WT). The MLPNN was trained, cross validated, and tested with training, cross validation, and testing sets, respectively. All these data sets were obtained from internal carotid arteries of healthy subjects, subjects suffering from internal carotid artery stenosis and occlusion. The correct classification rate was 96% for healthy subjects, 96.15% for subjects having internal carotid artery stenosis and 96.30% for subjects having internal carotid artery occlusion. The classification results showed that the MLPNN trained with the Levenberg-Marquardt algorithm was effective to detect internal carotid artery stenosis and occlusion.
在本研究中,使用基于小波的神经网络对从130名受试者记录的颈内动脉多普勒信号进行分类,其中45名患有颈内动脉狭窄,44名患有颈内动脉闭塞,其余为健康受试者。基于小波的神经网络模型采用多层感知器,用于分析颈内动脉多普勒信号。用Levenberg-Marquardt算法训练的多层感知器神经网络(MLPNN)用于检测颈内动脉的狭窄和闭塞。为了确定MLPNN的输入,使用小波变换(WT)对颈内动脉多普勒信号进行频谱分析。MLPNN分别使用训练集、交叉验证集和测试集进行训练、交叉验证和测试。所有这些数据集均取自健康受试者、患有颈内动脉狭窄和闭塞的受试者的颈内动脉。健康受试者的正确分类率为96%,患有颈内动脉狭窄的受试者为96.15%,患有颈内动脉闭塞 的受试者为96.30%。分类结果表明,用Levenberg-Marquardt算法训练的MLPNN对检测颈内动脉狭窄和闭塞是有效的。