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Preliminary results of breast cancer cell classifying based on gray-level co-occurrence matrix

机译:基于灰度共现矩阵的乳腺癌细胞分类的初步结果

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This study proposes and appraise a gray level co-occurrence matrix (GLCM) for extracting the feature of cell regions in microscopic image into four region types: positive cancer cell, negative cancer cell, lymphocyte and stromal cell. The classification task uses decision tree with cross validation. To give a high classification performance, the main focus of interest is feature extraction task. Twenty-two texture features of GLCM have used to analysis images at four directions and six scales of gray-level quantization. A set of these texture features is used in 2045 images for training and testing. The result shows that the classification accuracy obtained from decision tree is 95.21%. It is demonstrated that the proposed GLCM texture features and decision tree can classify the histological structures in microscopic image and can be applied to improve and to develop an accurate cell counting of computer-aided diagnosis system for breast cancer prognosis.
机译:本研究提出并评估了灰度共现矩阵(GLCM),用于将显微图像中的细胞区域特征提取为四种区域类型:阳性癌细胞,阴性癌细胞,淋巴细胞和基质细胞。分类任务使用带有交叉验证的决策树。为了获得较高的分类性能,关注的重点是特征提取任务。 GLCM的二十二个纹理特征已用于分析四个方向和六个等级的灰度量化图像。在2045张图像中使用了一组这些纹理特征进行训练和测试。结果表明,决策树的分类精度为95.21%。结果表明,所提出的GLCM纹理特征和决策树可以对显微图像中的组织学结构进行分类,并且可以用于改善和发展用于乳腺癌预后的计算机辅助诊断系统的准确细胞计数。

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