Güler Inan, Ubeyli Elif Derya
Department of Electronics and Computer Education, Faculty of Technical Education, Gazi University, Teknikokullar, 06500 Ankara, Turkey.
Med Eng Phys. 2004 Nov;26(9):763-71. doi: 10.1016/j.medengphy.2004.06.007.
The new method presented in this study was directly based on the consideration that internal carotid arterial Doppler signals are chaotic signals. This consideration was tested successfully using the nonlinear dynamics tools, like the computation of Lyapunov exponents. Multilayer perceptron neural network (MLPNN) architecture was formulated and used as a basis for detecting variabilities such as stenosis and occlusion in the physical state of internal carotid arterial Doppler signals. The computed Lyapunov exponents of the internal carotid arterial Doppler signals were used as inputs of the MLPNN. Receiver operating characteristic (ROC) curve was used to assess the performance of the detection process. The internal carotid arterial Doppler signals were classified with the accuracy varying from 94.87% to 97.44%. The results confirmed that the proposed MLPNN trained with Levenberg-Marquardt algorithm has potential in detecting stenosis and occlusion in internal carotid arteries.
本研究中提出的新方法直接基于这样一种考虑,即颈内动脉多普勒信号是混沌信号。利用非线性动力学工具,如李雅普诺夫指数的计算,这一考虑得到了成功验证。构建了多层感知器神经网络(MLPNN)架构,并将其作为检测颈内动脉多普勒信号物理状态变化(如狭窄和闭塞)的基础。计算得到的颈内动脉多普勒信号的李雅普诺夫指数被用作MLPNN的输入。采用受试者工作特征(ROC)曲线来评估检测过程的性能。颈内动脉多普勒信号的分类准确率在94.87%至97.44%之间。结果证实,用列文伯格-马夸尔特算法训练的所提出的MLPNN在检测颈内动脉狭窄和闭塞方面具有潜力。