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Shape-Based Tumor Retrieval in Mammograms Using Relevance-Feedback Techniques

机译:相关反馈技术在乳腺X线照片中基于形状的肿瘤检索

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This paper presents an experimental "morphological analysis" retrieval system for mammograms, using Relevance-Feedback techniques. The features adopted are first-order statistics of the Normalized Radial Distance, extracted from the annotated mass boundary. The system is evaluated on an extensive dataset of 2274 masses of the DDSM database, which involves 7 distinct classes. The experiments verify that the involvement of the radiologist as part of the retrieval process improves the results, even for such a hard classification task, reaching the precision rate of almost 90%. Therefore, Relevance-Feedback can be employed as a very useful complementary tool to a Computer Aided Diagnosis system.
机译:本文介绍了一种使用相关性反馈技术的乳腺X线照片实验“形态分析”检索系统。所采用的特征是从带注释的质量边界提取的归一化径向距离的一阶统计量。该系统在DDSM数据库的2274个质量的广泛数据集上进行评估,该数据库涉及7个不同的类。实验证明,即使对于这种艰巨的分类任务,放射科医生作为检索过程的一部分也可以改善结果,达到近90%的准确率。因此,相关性反馈可以用作计算机辅助诊断系统的非常有用的补充工具。

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