Improved mammographic mass retrieval performance using multi-view information

Wei Liu, Weidong Xu, Lihua Li, Shuang Li, Huanping Zhao, Juan Zhang
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引用次数: 3

Abstract

Breast cancer is the most common malignant disease in women. Mammographic mass retrieval system can help radiologists to improve the diagnostic accuracy by retrieving biopsy-proven masses which are similar with the diagnostic ones. However, although screening mammograms usually consists of two-view(MLO and CC) mammography of the same breast, most breast CAD systems incorporate with image retrieval techniques are based on a single-view principle where query ROI within a view is analyzed independently. In this paper, a mammographic mass retrieval approach based on multi-view information is proposed. In this work, the query example is a multi-view(MLO and CC) mass pair instead of the single view mass in the traditional image retrieval framework. In the experiments, several visual features are used for retrieval evaluation. Both distance similarity measures, such as Euclidean distance, and k-NN regression model based non-distance similarity measures are used for comparison. Experimental study was carried out on a database with 126 biopsy-proven masses(63 mass pairs). Preliminary results showed that multi-view based retrieval approach achieves better retrieval accuracy than single-view based one, especially for the k-NN regression model based similairy metric.
利用多视图信息改进乳房x线影像质量检索性能
乳腺癌是女性中最常见的恶性疾病。乳房x线肿块检索系统可以帮助放射科医师检索活检证实的与诊断相似的肿块,从而提高诊断的准确性。然而,尽管筛查乳房x光检查通常由同一乳房的双视图(MLO和CC)乳房x光检查组成,但大多数乳房CAD系统结合图像检索技术是基于单视图原则的,其中一个视图内的查询ROI是独立分析的。本文提出了一种基于多视图信息的乳房x线图像质量检索方法。在这项工作中,查询示例是一个多视图(MLO和CC)质量对,而不是传统图像检索框架中的单视图质量。在实验中,几种视觉特征被用于检索评价。距离相似度量(如欧几里得距离)和基于k-NN回归模型的非距离相似度量都用于比较。实验研究在一个包含126个活检证实的肿块(63对质量)的数据库中进行。初步结果表明,基于多视图的检索方法比基于单视图的检索方法具有更好的检索精度,特别是对于基于相似度量的k-NN回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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