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A machine learning approach on multiscale texture analysis for breast microcalcification diagnosis

机译:乳房微碳化诊断多尺度纹理分析的机器学习方法

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Screening programs use mammography as primary diagnostic tool for detecting breast cancer at an early stage. The diagnosis of some lesions, such as microcalcifications, is still difficult today for radiologists. In this paper, we proposed an automatic binary model for discriminating tissue in digital mammograms, as support tool for the radiologists. In particular, we compared the contribution of different methods on the feature selection process in terms of the learning performances and selected features. For each ROI, we extracted textural features on Haar wavelet decompositions and also interest points and corners detected by using Speeded Up Robust Feature (SURF) and Minimum Eigenvalue Algorithm (MinEigenAlg). Then a Random Forest binary classifier is trained on a subset of a sub-set features selected by two different kinds of feature selection techniques, such as filter and embedded methods. We tested the proposed model on 260 ROIs extracted from digital mammograms of the BCDR public database. The best prediction performance for the normal/abnormal and benign/malignant problems reaches a median AUC value of 98.16% and 92.08%, and an accuracy of 97.31% and 88.46%, respectively. The experimental result was comparable with related work performance. The best performing result obtained with embedded method is more parsimonious than the filter one. The SURF and MinEigen algorithms provide a strong informative content useful for the characterization of microcalcification clusters.
机译:筛选程序使用乳房X线摄影作为早期检测乳腺癌的主要诊断工具。对微钙剂等一些病变的诊断,今天仍然困难为放射科医师。在本文中,我们提出了一种用于鉴别数字乳房X光图中的组织的自动二进制模型,作为放射科学家的支持工具。特别是,我们在学习表演和所选功能方面比较了不同方法对特征选择过程的贡献。对于每个ROI,我们通过使用加速鲁棒特征(冲浪)和最小特征值算法(MineigeNalg)提取了哈尔小波分解的纹理特征以及通过使用加速的鲁棒特征(冲浪)来检测到的感兴趣点和角。然后,随机林二进制分类器培训由由两种不同类型的特征选择技术选择的子集功能的子集培训,例如过滤器和嵌入式方法。我们在BCDR公共数据库的数字乳房X线照片中提取了260 ROI的提出模型。正常/异常和良性/恶性问题的最佳预测性能达到98.16%和92.08%的中值,分别为97.31%和88.46%。实验结果与相关工作性能相当。使用嵌入式方法获得的最佳表现结果比过滤器1更加解释。冲浪和雷线算法提供了一种强大的信息含量,可用于描述微钙化簇。

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