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Computer-aided Classification of Liver Tumors in 3D Ultrasound Images with Combined Deformable Model Segmentation and Support Vector Machine

机译:结合可变形模型分割和支持向量机的3D超声图像中肝肿瘤的计算机辅助分类

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In this study, we propose a computer-aided classification scheme of liver tumor in 3D ultrasound by using a combination of deformable model segmentation and support vector machine. For segmentation of tumors in 3D ultrasound images, a novel segmentation model was used which combined edge, region, and contour smoothness energies. Then four features were extracted from the segmented tumor including tumor edge, roundness, contrast, and internal texture. We used a support vector machine for the classification of features. The performance of the developed method was evaluated with a dataset of 79 cases including 20 cysts, 20 hemangiomas, and 39 hepatocellular carcinomas, as determined by the radiologist's visual scoring. Evaluation of the results showed that our proposed method produced tumor boundaries that were equal to or better than acceptable in 89.8% of cases, and achieved 93.7% accuracy in classification of cyst and hemangioma.
机译:在这项研究中,我们通过结合可变形模型分割和支持向量机,提出了3D超声中肝肿瘤的计算机辅助分类方案。为了在3D超声图像中分割肿瘤,使用了一种新颖的分割模型,该模型结合了边缘,区域和轮廓平滑度能量。然后从分割的肿瘤中提取四个特征,包括肿瘤边缘,圆度,对比度和内部纹理。我们使用支持向量机对特征进行分类。根据放射科医生的视觉评分,使用79个病例的数据集评估了开发方法的性能,其中包括20个囊肿,20个血管瘤和39个肝细胞癌。结果评估表明,我们提出的方法在89.8%的病例中产生的肿瘤边界等于或好于可接受的边界,并且在囊肿和血管瘤的分类中达到了93.7%的准确度。

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