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Texture Analysis for Classification of Endometrial Tissue in Gray Scale Transvaginal Ultrasonography

机译:灰度阴道超声对子宫内膜组织分类的质地分析

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摘要

Computer-aided classification of benign and malignant endometrial tissue, as depicted in 2D gray scale transvaginal ultrasonography (TVS), was attempted by computing texture-based features. 65 TVS endometrial images were collected (15 malignant, 50 benign) and processed with a wavelet based enhancement technique. Two regions of interest (ROIs) were identified (endometrium, endometrium margin) on each processed image. Thirty-two textural features were extracted from each ROI employing first and second order statistics texture analysis algorithms. Textural feature-based models were generated for differentiating benign from malignant endometrial tissue employing stepwise logistic regression analysis. Models' performance was evaluated by means of receiver operating characteristics (ROC) analysis. The best benign versus malignant classification was obtained from the model combining three textural features from endometrium and four textural features from endometrium margin, with corresponding area under ROC curve (Az) 0.956.
机译:通过计算基于纹理的特征,尝试对子宫内膜组织的良恶性进行计算机辅助分类,如二维灰度经阴道超声检查(TVS)所示。收集65例TVS子宫内膜图像(15例恶性,50例良性),并使用基于小波的增强技术进行处理。在每个处理过的图像上都确定了两个感兴趣的区域(ROI)(子宫内膜,子宫内膜边缘)。使用一阶和二阶统计纹理分析算法从每个ROI中提取了32个纹理特征。使用逐步逻辑回归分析,生成了基于纹理特征的模型以区分良性与子宫内膜组织的良性。通过接收器工作特性(ROC)分析评估模型的性能。从该模型获得了最佳的良恶性分类,该模型结合了子宫内膜的三个纹理特征和子宫内膜边缘的四个纹理特征,以及ROC曲线下的相应面积(Az)0.956。

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