首页> 外文会议>Conference on Medical Imaging 2008: Computer-Aided Diagnosis; 20080219-21; San Diego,CA(US) >Computer-Aided Diagnosis for Classification of Focal Liver Lesions on Contrast-Enhanced Ultrasonography: Feature Extraction and Characterization of Vascularity Patterns
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Computer-Aided Diagnosis for Classification of Focal Liver Lesions on Contrast-Enhanced Ultrasonography: Feature Extraction and Characterization of Vascularity Patterns

机译:超声造影对局灶性肝病变分类的计算机辅助诊断:特征提取和血管形态特征

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We have developed a computer-aided diagnostic (CAD) scheme for classifying focal liver lesions (FLLs) into hepatocellular carcinoma (HCC), liver metastasis, and hemangioma, by use of B-mode and micro flow imaging (MFI) of contrast-enhanced ultrasonography. We used 98 cases in this study, in which 104 FLLs consisted of 68 HCCs, 21 metastases, and 15 hemangiomas. MFI was obtained with contrast-enhanced low-mechanical-index (MI) pulse subtraction imaging at a fixed plane which included a distinctive cross section of the FLL. In the MFI, the inflow high signals in the plane, which were due to the vascular patterns and the contrast agent, were accumulated following flash scanning with a high-MI ultrasound exposure. In this study, in addition to the existing 29 image features extracted from MFI images, such as replenishment time, the average and the standard deviation of pixel values in a FLL, and the average thickness of vessel-like patterns, four types of image features were extracted from MFI, temporal subtraction and B-mode images based on small square regions of interest (ROIs: 4x4 matrix size) placed to cover a whole region of the FLL. The four features were 1) uniformity of average pixel values for all ROIs, 2) peak pixel values in a histogram of average pixel values of ROIs, 3) fraction of hypoechoic regions within an FLL, and 4) cross-correlation of pixel values within an FLL between B-mode and MFI images. Overall classification accuracies performed by this CAD scheme were 87.5% for all 104 liver lesions.
机译:我们已经开发了一种计算机辅助诊断(CAD)方案,通过使用B型和微流造影增强造影剂,将局灶性肝病灶(FLL)分为肝细胞癌(HCC),肝转移和血管瘤。超声检查。在这项研究中,我们使用了98个病例,其中104个FLL包括68个HCC,21个转移灶和15个血管瘤。 MFI是在固定平面上通过对比增强的低机械指数(MI)脉冲减影成像获得的,该平面包括FLL的独特横截面。在MFI中,由于血管模式和造影剂的原因,飞机上流入的高信号是在高MI超声照射下进行快速扫描后累积的。在这项研究中,除了从MFI图像中提取的现有29个图像特征(例如补给时间,FLL中像素值的平均和标准偏差以及类似容器的图案的平均厚度)以外,还有四种图像特征从MFI,时间减法和B模式图像中提取图像,这些图像基于放置在FLL整个区域上的小方形正方形区域(ROI:4x4矩阵大小)。这四个特征是:1)所有ROI的平均像素值的均匀性; 2)ROI的平均像素值的直方图中的峰值像素值; 3)FLL内的低回声区域的分数; 4)内的像素值的互相关B模式和MFI图像之间的FLL。对于所有104个肝病灶,通过此CAD方案执行的总体分类准确度为87.5%。

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