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RETRIEVAL-DRIVEN MICROCALCIFICATION CLASSIFICATION FOR BREAST CANCER DIAGNOSIS

机译:检索驱动的微诊断分类对乳腺癌的诊断

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In this paper, a content-based mammogram retrieval system is developed and evaluated to improve the performance of both human and numerical observers in breast cancer diagnosis. We previously developed a machine learning approach for modeling the similarity measure between two lesion mammograms from expert observer studies for mammogram retrieval. In this work we investigate how to use the retrieved similar cases as references to improve a numerical classifier''s performance. The rationale is that by adaptively incorporating proximity information to the cost function of a classifier, it can help to improve the classification accuracy, thereby leading to an improved "second opinion" to radiologists. Our experiment results on a mammogram database demonstrate that the proposed retrieval-driven approach with an adaptive support vector machine (SVM) could improve the classification performance from 0.78 to 0.82 in terms of the area under the ROC curve
机译:在本文中,开发并评估了基于内容的乳房X线照片检索系统,以提高人类和数字观察者在乳腺癌诊断中的性能。我们先前开发了一种机器学习方法,用于对来自专家观察员研究的两个病变乳房X线照片之间的相似性度量进行建模,以进行乳房X线照片的检索。在这项工作中,我们研究了如何使用检索到的相似案例作为参考来改进数字分类器的性能。基本原理是,通过将邻近性信息自适应地合并到分类器的成本函数中,可以帮助提高分类准确性,从而为放射科医生带来更好的“第二意见”。我们在乳腺X线照片数据库上的实验结果表明,提出的带有自适应支持向量机(SVM)的检索驱动方法可以将ROC曲线下面积的分类性能从0.78提高到0.82

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