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Automated classification of coronary artery disease using discrete wavelet transform and back propagation neural network

机译:使用离散小波变换和反向传播神经网络对冠状动脉疾病进行自动分类

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摘要

An automated classification of coronary artery disease using discrete wavelet watershed transform and back propagation neural network has been proposed which basically segments the blood vessels of the coronary angiogram image as a first step, which in turn involves various stages such as pre-processing, image enhancement, and segmentation using discrete wavelet transform and watershed transform along with morphological operations. Pre-processing is done to remove the noise using the bicubic interpolation method followed by Daubechies 4 discrete wavelet transform and Weiner filtering. Further, image enhancement is done to improve the quality of the image using the histogram equalization technique. Auto thresholding is done to segment the edges of the blood vessel accurately and efficiently using distance and watershed transforms followed by normalization and median filtering. Finally, morphological operations are performed to remove the noise due to segmentation. Features such as area, mean, standard deviation, variance, brightness, diameter, smoothness, compactness, skewness, kurtosis, eccentricity and circularity are extracted from the segmented coronary blood vessel to train the neural network using back propagation network. Thus, the system is able to achieve 93.75% normal classification and 83.33% abnormal classification. Also, 90% efficiency is achieved in classifying Type 1 and 92% efficiency is achieved in classifying Type 2 stenosis at a learning rate of 0.7 and Type 1 classification efficiency of 85% and Type 2 classification of 89% has been achieved for 50 hidden units of the neural network.
机译:已经提出了使用离散小波分水岭变换和反向传播神经网络对冠状动脉疾病进行自动分类的方法,该方法基本上将冠状动脉血管造影图像的血管作为第一步进行分割,而该步骤又涉及各个阶段,例如预处理,图像增强,以及使用离散小波变换和分水岭变换以及形态学运算进行分割。使用双三次插值方法进行了预处理,以去除噪声,然后进行Daubechies 4离散小波变换和Weiner滤波。此外,使用直方图均衡技术进行图像增强以改善图像质量。使用距离和分水岭变换,然后进行归一化和中值滤波,可以完成自动阈值化以准确,高效地分割血管边缘。最后,进行形态学运算以去除由于分割而产生的噪声。从分割的冠状血管中提取面积,均值,标准差,方差,亮度,直径,平滑度,紧密度,偏度,峰度,偏心率和圆度等特征,以使用反向传播网络训练神经网络。因此,该系统能够实现93.75%的正常分类和83.33%的异常分类。此外,在50个隐藏单元中,以0.7的学习率对1型狭窄进行分类的效率为90%,对2型狭窄进行分类的效率为92%,对1型狭窄的效率为85%,对2型狭窄的效率为89%神经网络。

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