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首页> 外文期刊>Computers in Biology and Medicine >Classification of carotid artery Doppler signals in the early phase of atherosclerosis using complex-valued artificial neural network.
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Classification of carotid artery Doppler signals in the early phase of atherosclerosis using complex-valued artificial neural network.

机译:使用复杂值人工神经网络对动脉粥样硬化早期的颈动脉多普勒信号进行分类。

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In this study, carotid arterial 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. Results were classified using complex-valued artificial neural network (CVANN). Principal component analysis (PCA) and fuzzy c-means clustering (FCM) algorithm were used to make a CVANN system more effective. For this aim, before classifying with CVANN, PCA method was used for feature extraction in PCA-CVANN architecture and FCM algorithm was used for data set reduction in FCM-CVANN architecture. Training and test data were selected randomly using 10-fold cross validation. PCA-CVANN and FCM-CVANN architectures classified healthy and unhealthy subjects for training and test data with about 100% correct classification rate. These results shown that PCA-CVANN and FCM-CVANN classified Doppler signals successfully.
机译:在这项研究中,从38位患者和40位健康志愿者的左颈动脉中获取了颈动脉多普勒超声信号。患者组通过冠状动脉或股骨动脉造影对动脉粥样硬化的早期阶段有了明确的诊断。使用复数值人工神经网络(CVANN)对结果进行分类。使用主成分分析(PCA)和模糊c均值聚类(FCM)算法使CVANN系统更有效。为此,在使用CVANN进行分类之前,将PCA方法用于PCA-CVANN体系结构中的特征提取,并将FCM算法用于FCM-CVANN体系结构中的数据集约简。使用10倍交叉验证随机选择训练和测试数据。 PCA-CVANN和FCM-CVANN体系结构将健康和不健康的对象分类为训练和测试数据,正确分类率约为100%。这些结果表明,PCA-CVANN和FCM-CVANN成功地将多普勒信号分类。

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