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Discrimination of Liver Diseases from CT Images Based on Gabor Filters

机译:基于Gabor过滤器的CT图像鉴别肝脏疾病

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In this paper, a liver disease diagnosis based on Gabor filters is proposed. Three kinds of liver diseases are identified: cyst, hepatoma and cavernous hemangioma. The diagnosis scheme includes two steps: features extraction and classification. The features derived from Gabor filters are obtained from the ROIs among the normal and abnormal CT images. In the classification step the SVM classifier is used to discriminate the different liver disease types. Finally the receiver operating characteristic curve is employed to evaluate the performance of the diagnosis system. The effectiveness of the proposed method is demonstrated through experimental results on CT images including 76 liver cysts, 30 hepatomas, and 40 cavernous hemangiomas. From the results, we can observe that the discrimination rate of cyst is higher than the other diseases, and the classification accuracy decreases slightly between cavernous hemangiomas and hepatomas. However, a normal region can be discriminated from all of these diseases entirely.
机译:本文提出了一种基于Gabor过滤器的肝病诊断。鉴定了三种肝病:囊肿,肝癌和海绵状血管瘤。诊断计划包括两个步骤:提取和分类功能。源自Gabor滤波器的特征是从正常和异常CT图像之间的ROI获得的。在分类步骤中,SVM分类器用于区分不同的肝病类型。最后,采用接收器操作特性曲线来评估诊断系统的性能。通过CT图像的实验结果证明了所提出的方法的有效性,包括76个肝囊肿,30肝细胞和40个海绵状血管瘤。从结果中,我们可以观察到囊肿的歧视率高于其他疾病,并且血管血管瘤和肝​​癌之间的分类精度略微降低。然而,可以完全从所有这些疾病中区分正常区域。

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