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Automatic cell nuclei segmentation and classification of breast cancer histopathology images

机译:乳腺癌组织病理学图像的自动细胞核分割和分类

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Breast cancer is the leading type of malignant tumor observed in women and the effective treatment depends on its early diagnosis. Diagnosis from histopathological images remains the "gold standard" for breast cancer. The complexity of breast cell histopathology (BCH) images makes reliable segmentation and classification hard. In this paper, an automatic quantitative image analysis technique of BCH images is proposed. For the nuclei segmentation, top-bottom hat transform is applied to enhance image quality. Wavelet decomposition and multi-scale region-growing (WDMR) are combined to obtain regions of interest (ROIs) thereby realizing precise location. A double-strategy splitting model (DSSM) containing adaptive mathematical morphology and Curvature Scale Space (CSS) corner detection method is applied to split overlapped cells for better accuracy and robustness. For the classification of cell nuclei, 4 shape-based features and 138 textural features based on color spaces are extracted. Optimal feature set is obtained by support vector machine (SVM) with chain-like agent genetic algorithm (CAGA). The proposed method was tested on 68 BCH images containing more than 3600 cells. Experimental results show that the mean segmentation sensitivity was 91.53% (± 4.05%) and specificity was 91.64% (± 4.07%). The classification performance of normal and malignant cell images can achieve 96.19% (+ 0.31%) for accuracy, 99.05% (+ 0.27%) for sensitivity and 9333% (+ 0.81%) for specificity.
机译:乳腺癌是女性观察到的恶性肿瘤的主要类型,有效的治疗取决于其早期诊断。从组织病理学图像诊断仍然是乳腺癌的“金标准”。乳房细胞组织病理学(BCH)图像的复杂性使可靠的分割和分类变得困难。本文提出了一种BCH图像自动定量图像分析技术。对于核分割,应用了上下帽子变换来增强图像质量。小波分解和多尺度区域增长(WDMR)相结合以获得关注区域(ROI),从而实现精确定位。将包含自适应数学形态学和曲率尺度空间(CSS)角点检测方法的双策略拆分模型(DSSM)应用于拆分重叠单元,以提高准确性和鲁棒性。为了对细胞核进行分类,提取了基于颜色空间的4个基于形状的特征和138个纹理特征。通过支持向量机(SVM)和链状代理遗传算法(CAGA)获得最优特征集。该方法在包含3600多个细胞的68个BCH图像上进行了测试。实验结果表明,平均分割敏感性为91.53%(±4.05%),特异性为91.64%(±4.07%)。正常和恶性细胞图像的分类性能可以达到96.19%(+ 0.31%)的准确度,99.5%(+ 0.27%)的敏感性和9333%(+ 0.81%)的特异性。

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