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Application of complex discrete wavelet transform in classification of Doppler signals using complex-valued artificial neural network

机译:复离散小波变换在复值人工神经网络多普勒信号分类中的应用

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Objective: In biomedical signal classification, due to the huge amount of data, to compress the biomedical waveform data is vital. This paper presents two different structures formed using feature extraction algorithms to decrease size of feature set in training and test data. Materials and methods: The proposed structures, named as wavelet transform-complex-valued artificial neural network (WT-CVANN) and complex wavelet transform-complex-valued artificial neural network (CWT-CVANN), use real and complex discrete wavelet transform for feature extraction. The aim of using wavelet transform is to compress data and to reduce training time of network without decreasing accuracy rate. In this study, the presented structures were applied to the problem of classification in carotid arterial Doppler ultrasound signals. Carotid arterial Doppler ultrasound signals were acquired from left carotid arteries of 38 patients and 40 healthy volunteers. The patient group included 22 males and 16 females with an established diagnosis of the early phase of atherosclerosis through coronary or aortofemoropopliteal (lower extremity) angiographies (mean age, 59years; range, 48-72 years). Healthy volunteers were young non-smokers who seem to not bear any risk of atherosclerosis, including 28 males and 12 females (mean age, 23 years; range, 19-27 years). Results and conclusion: Sensitivity, specificity and average detection rate were calculated for comparison, after training and test phases of all structures finished. These parameters have demonstrated that training times of CVANN and real-valued artificial neural network (RVANN) were reduced using feature extraction algorithms without decreasing accuracy rate in accordance to our aim.
机译:目的:在生物医学信号分类中,由于数据量巨大,压缩生物医学波形数据至关重要。本文介绍了使用特征提取算法形成的两种不同结构,以减少训练和测试数据中特征集的大小。材料和方法:所提出的结构分别称为小波变换-复值人工神经网络(WT-CVANN)和复数小波-变换复合值人工神经网络(CWT-CVANN),使用实数和复数离散小波变换进行特征分析萃取。使用小波变换的目的是在不降低准确率的情况下压缩数据并减少网络的训练时间。在这项研究中,提出的结构被应用于颈动脉多普勒超声信号的分类问题。从38位患者和40位健康志愿者的左颈动脉中获取颈动脉多普勒超声信号。患者组包括22例男性和16例女性,通过冠状动脉或股骨emo动脉(下肢)血管造影(平均年龄59岁;范围48-72岁)明确诊断出动脉粥样硬化的早期。健康的志愿者是年轻的非吸烟者,似乎没有任何动脉粥样硬化的危险,包括28例男性和12例女性(平均年龄23岁;范围19-27岁)。结果与结论:在所有结构的训练和测试阶段完成后,计算了敏感性,特异性和平均检出率以进行比较。这些参数表明,根据我们的目标,使用特征提取算法可以减少CVANN和实值人工神经网络(RVANN)的训练时间,而不会降低准确率。

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