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Automatic detection of breast cancer mitotic cells based on the combination of textural, statistical and innovative mathematical features

机译:结合结构,统计和创新数学特征自动检测乳腺癌有丝分裂细胞

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Automatic grading systems based on histopathological slide images are applied to various types of cancers. To date, cancer scientists and researchers have conducted many experiments to find and evaluate new and innovative automatic cancer grading systems to accelerate their therapeutic diagnoses and ultimately to enable more efficient prognoses. The previously proposed automatic or computer-aided systems for breast cancer grading, including specializing mitosis counting, suffer from various shortcomings. The most important one is their low efficiency along with high complexity due to the huge amount of features. In this paper, three types of features with more flexibility and less complexity are employed. These features are: completed local binary pattern (CLBP) as textural features, statistical moment entropy (SME) and stiffness matrix (SM) as a mathematical model which includes geometric, morphometric and shape-based features. In the proposed automatic mitosis detection method, these three types of features are fused with each other. The SM feature comprises of characteristics which are to be extracted for reliable discrimination of mitosis objects from non-mitosis ones. The evaluations are applied over histology datasets A and H provided by the Mitos-ICPR2012 contest sponsors. Employing both a nonlinear radial basis function (RBF) kernel for support vector machine (SVM) and also random forest classifiers, leads to the best efficiencies among the other competitive methods which have been proposed in the past The results are in the form of F-measure criterion which is a basis for bioinformatics assessments and evaluation.
机译:基于组织病理学幻灯片图像的自动分级系统被应用于各种类型的癌症。迄今为止,癌症科学家和研究人员已经进行了许多实验,以发现和评估新的和创新的自动癌症分级系统,以加速其治疗性诊断并最终实现更有效的预后。先前提出的用于乳腺癌分级的自动或计算机辅助系统,包括专门的有丝分裂计数,存在各种缺点。最重要的一项是由于具有大量功能,它们的效率低且复杂性高。在本文中,采用了三种类型的功能,它们具有更大的灵活性和更少的复杂性。这些功能包括:作为纹理特征的完整局部二元模式(CLBP),作为几何模型的统计矩熵(SME)和刚度矩阵(SM),包括几何,形态和基于形状的特征。在提出的自动有丝分裂检测方法中,这三种类型的特征相互融合。 SM特征包括将被提取的特征,以可靠地区分非有丝分裂对象。将评估应用于由Mitos-ICPR2012竞赛赞助商提供的组织学数据集A和H。在支持向量机(SVM)和随机森林分类器中同时使用非线性径向基函数(RBF)内核,可以在过去提出的其他竞争方法中获得最佳效率。结果以F-测量标准,这是生物信息学评估和评估的基础。

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