Ozbay Yüksel, Ceylan Murat
Engineering and Architecture Faculty, Department of Electrical and Electronics Engineering, Selcuk University, Konya, Turkey.
Comput Biol Med. 2007 Mar;37(3):287-95. doi: 10.1016/j.compbiomed.2006.01.008. Epub 2006 Apr 17.
In this study, carotid artery Doppler ultrasound signals were acquired from left carotid arteries of 38 patients and 40 healthy volunteers. The patient group had an established diagnosis of the early phase of atherosclerosis through coronary or aortofemoropopliteal angiographies. Doppler signals were processed using fast Fourier transform (FFT) with different window types, Hilbert transform and Welch methods. After these processes, Doppler signals were classified using complex-valued artificial neural network (CVANN). Effects of window types in classification were interpreted. Results for three methods and five window types (Bartlett, Blackman, Boxcar, Hamming, Hanning) were presented as comparatively. CVANN is a new technique for solving classification problems in Doppler signals. Furthermore, examining the effects of window types in addition to CVANN in this classification problem is also the first study in literature related with this subject. Results showed that CVANN, whose input data were processed by Welch method for each window types stated above, had classified all training and test patterns, which consist of 36 healthy, 34 unhealthy and four healthy, four unhealthy subjects, respectively, with 100% classification accuracy for both training and test phases.
在本研究中,从38例患者和40名健康志愿者的左侧颈动脉采集了颈动脉多普勒超声信号。患者组通过冠状动脉造影或主动脉股腘动脉造影已确诊为动脉粥样硬化早期。使用具有不同窗类型的快速傅里叶变换(FFT)、希尔伯特变换和韦尔奇方法对多普勒信号进行处理。经过这些处理后,使用复值人工神经网络(CVANN)对多普勒信号进行分类。解释了窗类型在分类中的作用。比较了三种方法和五种窗类型(巴特利特窗、布莱克曼窗、矩形窗、汉明窗、汉宁窗)的结果。CVANN是解决多普勒信号分类问题的一项新技术。此外,在这个分类问题中除了CVANN之外还研究窗类型的影响,这在与该主题相关的文献中也是首次研究。结果表明,对于上述每种窗类型,其输入数据采用韦尔奇方法处理的CVANN,对分别由36名健康、34名不健康以及4名健康、4名不健康受试者组成的所有训练和测试模式,在训练和测试阶段的分类准确率均为100%。