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An automatic mitosis detection method for breast cancer histopathology slide images based on objective and pixel-wise textural features classification

机译:基于客观和像素结构特征分类的乳腺癌组织病理学幻灯片图像自动有丝分裂检测方法

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Study of histopathological cancerous tissue is one of the most reliable ways to grade various types of cancers. The result of grading helps the physicians to diagnose and prescribe suitable prognosis. The focus of this paper is on a CAD for automatic analysis of breast cancer histopathological Images to count mitosis as an important criteria for the breast cancer grading. To achieve this aim, sets of specific digital histopathological data are used which are captured by particular microscopic scanners named as Aperio XT and Hamamatsu NanoZoomer scanners. In the proposed method, these acquired images are employed and processed based on digital image processing approaches like 2-D anisotropic diffusion as a pre-process and morphological process. For extraction of pixel-wise features from predetermined mitotic regions, an statistical approach based on color information such as maximum likelihood estimation is employed. To prevent misclassification of mitosis and non-mitosis objects, an object-wise completed local binary pattern (CLBP) is proposed to extract texture features robust against rotation and color-level changes, and finally support vector machine (SVM) is used to classify the extracted feature vectors. Having computed the evaluation criteria, our proposed method performs better f-measure (70.94% for Aperio XT scanner images and 70.11% for Hamamatsu images) among the methods proposed by other participants at ICPR2012 Mitosis detection in breast cancer histopathological images.
机译:组织病理学癌变组织的研究是分级各种类型癌症的最可靠方法之一。评分结果有助于医生诊断和开出合适的预后。本文的重点是用于自动分析乳腺癌组织病理学图像的CAD,以将有丝分裂计数为乳腺癌分级的重要标准。为了实现这一目标,使用了一组特定的数字组织病理学数据,这些数据由名为Aperio XT和Hamamatsu NanoZoomer扫描仪的特定显微扫描仪捕获。在所提出的方法中,这些获取的图像是基于数字图像处理方法(例如2-D各向异性扩散)作为预处理和形态过程而采用和处理的。为了从预定的有丝分裂区域提取逐像素特征,采用了基于颜色信息的统计方法,例如最大似然估计。为了防止有丝分裂和非有丝分裂对象的错误分类,提出了一种针对对象的完整局部二进制模式(CLBP),以提取对旋转和颜色级别变化具有鲁棒性的纹理特征,最后使用支持向量机(SVM)对该对象进行分类。提取的特征向量。计算了评估标准后,我们​​提出的方法在乳腺癌组织病理学图像中ICPR2012有丝分裂检测中其他参与者提出的方法中,具有更好的f度量(Aperio XT扫描仪图像为70.94%,滨松图像为70.11%)。

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