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A Preliminary Study of Content-based Mammographic Masses Retrieval

机译:基于内容的乳腺X线摄影质量检索的初步研究

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The purpose of this study is to develop a Content-Based Image Retrieval (CBIR) system for mammographic computer-aided diagnosis. We have investigated the potential of using shape, texture, and intensity features to categorize masses that may lead to sorting similar image patterns in order to facilitate clinical viewing of mammographic masses. Experiments were conducted within a database that contains 243 masses (122 benign and 121 malignant). The retrieval performances using the individual feature was evaluated, and the best precision was determined to be 79.9% when using the curvature scale space descriptor (CSSD). By combining several selected shape features for retrieval, the precision was found to improve to 81.4%. By combining the shape, texture, and intensity features together, the precision was found to improve to 82.3%.
机译:这项研究的目的是开发一种基于内容的图像检索(CBIR)系统,用于乳腺X射线计算机辅助诊断。我们已经研究了使用形状,纹理和强度特征对肿块进行分类的潜力,这些肿块可能导致对相似的图像模式进行排序,以便于对乳房X线照片肿块进行临床观察。在包含243个肿块(122个良性肿瘤和121个恶性肿瘤)的数据库中进行了实验。评估了使用单个特征的检索性能,使用曲率标度空间描述符(CSSD)时,最佳精度确定为79.9%。通过组合几个选定的形状特征进行检索,发现精度提高到81.4%。通过将形状,纹理和强度特征结合在一起,发现精度提高到82.3%。

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