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A Combined Approach of Multiscale Texture Analysis and Interest Point/Corner Detectors for Microcalcifications Diagnosis

机译:多尺度纹理分析与兴趣点/角点检测器相结合的微钙化诊断方法

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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 model for characterizing and discriminating tissue in normal/abnormal and benign/malign in digital mammograms, as support tool for the radiologists. We trained a Random Forest classifier on some textural features extracted on a multiscale image decomposition based on the Haar wavelet transform combined with the interest points and corners detected by using Speeded Up Robust Feature (SURF) and Minimum Eigenvalue Algorithm (MinEigenAlg), respectively. We tested the proposed model on 192 ROIs extracted from 176 digital mammograms of a public database. The model proposed was high performing in the prediction of the normal/abnormal and benign/malignant ROIs, with a median AUC value of 98.46% and 94.19%, respectively. The experimental result was comparable with related work performance.
机译:筛查程序将乳腺X线照相术作为早期诊断乳腺癌的主要诊断工具。如今,放射科医生仍然难以诊断某些病变,例如微钙化。在本文中,我们提出了一种用于在乳腺X线照片中表征和区分正常/异常和良性/恶性组织的自动模型,作为放射科医生的支持工具。我们针对随机纹理分类器训练了一些纹理特征,这些纹理特征是基于Haar小波变换在多尺度图像分解上提取的,结合了分别使用加速鲁棒特征(SURF)和最小特征值算法(MinEigenAlg)检测到的兴趣点和角点。我们测试了从176个公共数据库的乳腺X线照片中提取的192个ROI的模型。所提出的模型在正常/异常和良性/恶性ROI的预测中表现出色,AUC中值分别为98.46%和94.19%。实验结果与相关工作表现相当。

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