Prediction of cirrhosis from liver ultrasound B-mode images based on Laws' masks analysis

J. Virmani, Vinod Kumar, N. Kalra, N. Khandelwal
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引用次数: 42

Abstract

In this present work, a technique for differentiation of normal and cirrhotic liver segmented regions of interest (SROIs) based on Laws' masks analysis is reported. Thirty four B-mode ultrasound images taken from 22 normal volunteers and 12 patients suffering from liver cirrhosis were collected from Department of Radiodiagnosis and Imaging, PGIMER, Chandigarh, India. The filtered texture images are obtained by convolving the SROIs with twenty five, 2D (5×5) special filters based on laws' masks. Metrics that can quantify the texture can be obtained by computing the statistics from these filtered texture images. Similar features are combined to remove the directional information as texture directionality is not important here. This results into 15 rotational invariant filtered texture images for each SROI. For each of the filtered images, five statistics namely, mean, standard deviation, skewness, kurtosis and energy are computed. Thus, a total of 75 Laws' texture features (15 filtered texture images × 5 statistical features) are computed for 82 normal SROIs and 39 cirrhotic SROIs taken from 34 B-Mode ultrasound liver images. Correlation based feature selection (CFS) method is used to find the optimal subset of Laws' texture features which can provide best discrimination between normal and cirrhotic SROIs. It has been observed that CFS method results in an optimal subset of 8 Laws' texture features {LLmean, LLsd, LEsd, SSskewness, RRenergy, LEenergy, LSenergy and LWenegy}. The classification performance of neural network (NN) classifier is compared with support vector machine (SVM) classifier. By using all 75 Laws' texture features the classification accuracy of 90.08% and 90.90% is obtained with NN and SVM classifier respectively. By using 8 Laws' features selected by CFS method the classification accuracy of 91.73% and 92.56% is obtained with NN and SVM classifier respectively. From the comparison it is can be concluded that only 8 Laws' texture features namely {LLmean, LLsd, LEsd, SSskewness, RRenergy, LEenergy, LSenergy and LWenegy} can be used to build an efficient computer aided diagnostic (CAD) system for predicting of liver cirrhosis.
基于Laws掩模分析的肝脏b超图像肝硬化预测
在目前的工作中,报告了一种基于Laws' mask分析的区分正常和肝硬化肝分割感兴趣区域(sroi)的技术。本文收集了印度昌迪加尔PGIMER放射诊断与影像部22名正常志愿者和12名肝硬化患者的34张b超图像。通过将sroi与25个2D (5×5)基于定律掩模的特殊滤波器进行卷积得到滤波后的纹理图像。通过计算这些过滤后的纹理图像的统计量,可以得到量化纹理的度量。由于纹理的方向性在这里并不重要,因此将相似的特征组合在一起以去除方向信息。这将为每个SROI生成15张旋转不变滤波纹理图像。对每幅滤波后的图像,分别计算均值、标准差、偏度、峰度和能量5个统计量。由此,对取自34张b超肝脏图像的82张正常sroi和39张肝硬化sroi,共计算了75个Laws纹理特征(15张滤波后的纹理图像× 5个统计特征)。基于相关性的特征选择(CFS)方法用于寻找Laws纹理特征的最优子集,该子集可以最好地区分正常和硬化sroi。结果表明,CFS方法可以得到8个Laws纹理特征{LLmean, LLsd, led, SSskewness, rrenenergy, LEenergy, LSenergy和LWenegy}的最优子集。将神经网络(NN)分类器与支持向量机(SVM)分类器进行分类性能比较。利用所有75个Laws的纹理特征,NN和SVM分类器的分类准确率分别为90.08%和90.90%。利用CFS方法选择的8个Laws特征,NN和SVM分类器的分类准确率分别为91.73%和92.56%。通过比较可知,只有{LLmean, LLsd, led, SSskewness, rrenenergy, LEenergy, LSenergy, LWenegy}这8个Laws的纹理特征可以用来构建一个高效的预测肝硬化的计算机辅助诊断(CAD)系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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