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首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >DIVERSITY-BASED CLASSIFIER SELECTION FOR BREAST CANCER CYTOLOGICAL IMAGE ANALYSIS
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DIVERSITY-BASED CLASSIFIER SELECTION FOR BREAST CANCER CYTOLOGICAL IMAGE ANALYSIS

机译:基于多样性的乳腺癌细胞学图像分析分类器选择

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The article presents an application of combined classifier in the medical decision support system for breast cancer diagnosis. Apart from the canonical malignant vs. non-malignant problem we introduced a third class — fibroadenoma, which is a benign tumor of the breast often occurring in women. Medical images are delivered by the Regional Hospital in Zielona Góra, Poland. For the process of segmentation and feature extraction, adaptive thresholding and competitive neural networks are used. To increase the overall accuracy of the pattern recognition step we selected the classifiers using diversity measures to achieve a heterogeneous ensemble. A two-step selection, combining the advantages of pairwise and non-pairwise diversity measures is proposed. Experimental investigation proves that the introduced method is more accurate than previously used classification approaches.
机译:本文介绍了组合分类器在乳腺癌诊断医学决策支持系统中的应用。除了典型的恶性与非恶性问题外,我们还引入了第三类-纤维腺瘤,它是女性经常发生的乳腺良性肿瘤。医学图像由波兰ZielonaGóra的地区医院提供。对于分割和特征提取的过程,使用自适应阈值和竞争神经网络。为了提高模式识别步骤的整体准确性,我们选择了使用多样性测度的分类器,以实现异构集成。提出了两步选择方法,结合了成对和非成对分集措施的优点。实验研究证明,引入的方法比以前使用的分类方法更准确。

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