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Improving the Classification of Cirrhotic Liver by using Texture Features

机译:利用纹理特征改善肝硬化肝的分类

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We have been developing a computer-aided diagnosis (CAD) system for distinguishing the cirrhosis in MR images by shape and texture analysis. Two shape features are calculated from a segmented liver region, and seven texture features are quantified by using grey level difference method (GLDM) within the small region-of-interests (ROIs). The degree of cirrhosis is derived from integrating the shape and texture features of the liver into a three-layer feed-forward artificial neural network (ANN). A liver is regarded as cirrhosis if the percentage of the ROIs with a degree over 0.5 is greater than 50%. The initial experimental result showed that the ANN can learn all of the patterns in the training data sets. In testing of the whole liver regions, 82% cirrhosis and 100% normal cases were correctly differentiated from 18 test cases, that indicates our proposed method is effective to the cirrhosis prediction on MRI
机译:我们已经开发了一种计算机辅助诊断(CAD)系统,用于通过形状和纹理分析来区分MR图像中的肝硬化。从分割的肝脏区域中计算出两个形状特征,并通过使用灰度级差异法(GLDM)在小目标区域(ROI)内量化了七个纹理特征。肝硬化的程度是通过将肝脏的形状和纹理特征整合到三层前馈人工神经网络(ANN)中得出的。如果ROI大于0.5的百分比大于50%,则将肝脏视为肝硬化。初步的实验结果表明,人工神经网络可以学习训练数据集中的所有模式。在整个肝脏区域的测试中,正确区分了82%的肝硬化和100%的正常病例与18个测试例,这表明我们提出的方法对于MRI的肝硬化预测是有效的

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