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Comparison of Statistical, LBP, and Multi-Resolution Analysis Features for Breast Mass Classification

机译:乳房质量分类的统计,LBP和多分辨率分析功能的比较

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Millions of women are suffering from breast cancer, which can be treated effectively if it is detected early. Mammography is broadly recognized as an effective imaging modality for the early detection of breast cancer. Computer-aided diagnosis (CAD) systems are very helpful for radiologists in detecting and diagnosing abnormalities earlier and faster than traditional screening programs. An important step of a CAD system is feature extraction. This research gives a comprehensive study of the effects of different features to be used in a CAD system for the classification of masses. The features are extracted using local binary pattern (LBP), which is a texture descriptor, statistical measures, and multi-resolution frameworks. Statistical and LBP features are extracted from each region of interest (ROI), taken from mammogram images, after dividing it into NxN blocks. The multi-resolution features are based on discrete wavelet transform (DWT) and contourlet transform (CT). In multi-resolution analysis, ROIs are decomposed into low sub-band and high sub-bands at different resolution levels and the coefficients of the low sub-band at the last level are taken as features. Support vector machines (SVM) is used for classification. The evaluation is performed using Digital Database for Screening Mammography (DDSM) database. An accuracy of 98.43 is obtained using statistical or LBP features but when both these types of features are fused, the accuracy is increased to 98.63. The CT features achieved classification accuracy of 98.43 whereas the accuracy resulted from DWT features is 96.93. The statistical analysis and ROC curves show that methods based on LBP, statistical measures and CT performs equally well and they not only outperform DWT based method but also other existing methods.
机译:数以百万计的妇女患有乳腺癌,如果及早发现,可以有效治疗。乳房X线照相术被广泛认为是早期发现乳腺癌的有效成像方式。与传统的筛查程序相比,计算机辅助诊断(CAD)系统对放射科医生在检测和诊断异常方面的帮助更早和更快。 CAD系统的重要步骤是特征提取。这项研究对在CAD系统中用于质量分类的不同功能的影响进行了全面研究。使用局部二进制模式(LBP)提取特征,该模式是纹理描述符,统计量度和多分辨率框架。在将其分成NxN个块后,从乳房X线照片中提取的每个感兴趣区域(ROI)提取统计特征和LBP特征。多分辨率特征基于离散小波变换(DWT)和轮廓波变换(CT)。在多分辨率分析中,ROI被分解为处于不同分辨率级别的低子带和高子带,并且以最后一级的低子带的系数为特征。支持向量机(SVM)用于分类。评估是使用数字化乳腺钼靶筛查数据库(DDSM)进行的。使用统计或LBP特征可获得98.43的精度,但是当将这两种类型的特征融合在一起时,精度将提高到98.63。 CT特征的分类精度为98.43,而DWT特征的分类精度为96.93。统计分析和ROC曲线表明,基于LBP,统计量度和CT的方法表现良好,不仅优于基于DWT的方法,而且优于其他现有方法。

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