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Diagnosis of masses in mammographic images based on Zernike moments and Local Binary attributes

机译:基于Zernike Moments和局部二进制属性的乳房监测图像中群众的诊断

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Masses are important elements in the diagnosis of breast cancer. Many studies discussed the problem of detection and/or diagnosis of masses and most of these researches were based on shape descriptors to make decision. Textural descriptors contribute in indicating the presence of masses. Morphological descriptors determine their malignancy degree. Thus, we decided in our work to make a combination of morphological and textural descriptors. In fact, this method allowed us to extract different features in order to help make a decision concerning the malignancy of masses. The shape descriptor "Zernike moments" has the advantages to be invariant to the rotation and to be orthogonal. In addition, the texture descriptor "local binary attributes" provides information about the local variations of gray levels in the image. A multi-layer perceptron is used in the classification stage. The results were validated by using 160 regions of interest which are extracted from the database of mammographic images DDSM (Digital Database for Screening Mammography). We obtained an area under the ROC (Receiver Operating Characteristics) curve which is equal to 0,96. The results were confirmed by a radiologist.
机译:群众是乳腺癌诊断的重要因素。许多研究讨论了群众的检测和/或诊断问题,这些研究中的大部分都是基于形状描述符来做出决定。纹理描述符有助于表示群众的存在。形态学描述符决定了他们的恶性程度。因此,我们决定在我们的工作中结合形态和纹理描述符。事实上,这种方法使我们能够提取不同的特征,以帮助作出关于群众恶性的决定。形状描述符“Zernike Moments”具有不变的优点,旋转并正交。此外,纹理描述符“本地二进制属性”提供有关图像中灰色级别的局部变化的信息。在分类阶段使用多层的Perceptron。通过使用从乳房X线图DDSM数据库中提取的160个感兴趣区域(数字数据库用于筛选乳房X线摄影)来验证结果。我们在ROC(接收器操作特性)曲线下获得了一个区域,其等于0,96。结果由放射科医师确认。

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