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Comparison of Pleomorphic and Structural Features Used for Breast Cancer Malignancy Classification

机译:多态性和结构特征用于乳腺癌恶性分类的比较

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Malignancy of a cancer is one of the most important factors that are taken into consideration during breast cancer. Depending on the malignancy grade the appropriate treatment is suggested. In this paper we make use of the Bloom-Richardson grading system, which is widely used by pathologists when grading breast cancer malignancy. Here we discuss the use of two categories of cells features for malignancy classification. The features are divided into polymorphic features that describe nuclei shapes, and structural features that describe cells ability to form groups. Results presented in this work, show that calculated features present a valuable information about cancer malignancy and they can be used for computerized malignancy grading. To support that argument classification error rates are presented that show the influence of the features on classification. In this paper we compared the performance of Support Vector Machines (SVMs) with three other classifiers. The SVMs presented here are able to assign a malignancy grade based on pre-extracted features with accuracy up to 94.24% for pleomorphic features and with an accuracy 91.33% when structural features were used.
机译:癌症的恶性肿瘤是乳腺癌期间要考虑的最重要因素之一。根据恶性程度,建议采取适当的治疗方法。在本文中,我们使用了Bloom-Richardson分级系统,该系统已被病理学家广泛用于对乳腺癌恶性程度进行分级。在这里,我们讨论了使用两类细胞特征进行恶性分类。这些特征分为描述核形状的多态特征和描述细胞形成组的能力的结构特征。这项工作提出的结果表明,计算出的特征可提供有关癌症恶性肿瘤的有价值的信息,它们可用于计算机化恶性肿瘤分级。为了支持该论点,提出了分类错误率,该错误率显示了特征对分类的影响。在本文中,我们将支持向量机(SVM)与其他三个分类器的性能进行了比较。此处介绍的SVM能够基于预提取的特征分配恶性等级,对于多形特征,其准确度高达94.24%,而使用结构性特征时,精确度可达91.33%。

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