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An Automated and Accurate Methodology to Assess Ki-67 Labeling Index of Immunohistochemical Staining Images of Breast Cancer Tissues

机译:自动化和准确的方法来评估乳腺癌组织免疫组织化学染色图像的Ki-67标记指数

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Automatic scoring of Ki-67 with digital image analysis would improve the accuracy of the diagnostic. However, automatic Ki-67 assessment is very challenging due to complex variations of cell characteristics. In this paper, we propose an integrated framework for accurate Ki-67 scoring. The main contributions of our method are: a robust cell detection algorithm to detect all tumor and non-tumor cells; a clustering model for computerized classification of tumor and non-tumor cells and subsequent proliferation rate scoring by quantifying Ki-67, based on classified cells which appear in breast cancer immunohistochemical images. Unlike existing Ki-67 scoring techniques, our methodology works on whole slide images (WSI) using patches that are extracted from detected tissues. As the size of each sample is so large they can not be handled as a single image. Therefore, each slide is divided into small parts and on edge tiles merging is considered to preserve the continuity of nuclei. The proposed method has been extensively evaluated on tissue microarray (TMA) whole slides, and the cell detection performance is comparable to manual annotations and is very accurate compared with the estimation of an experienced pathologist.
机译:使用数字图像分析对Ki-67进行自动评分会提高诊断的准确性。但是,由于细胞特性的复杂变化,自动Ki-67评估非常具有挑战性。在本文中,我们提出了一个用于准确进行Ki-67评分的集成框架。我们方法的主要贡献是:强大的细胞检测算法,可检测所有肿瘤和非肿瘤细胞;一个基于肿瘤免疫组织化学图像中出现的分类细胞的计算机模型,用于对肿瘤和非肿瘤细胞进行计算机分类,并随后通过量化Ki-67对增殖速率进行评分。与现有的Ki-67评分技术不同,我们的方法使用从检测到的组织中提取的补丁对整个幻灯片图像(WSI)起作用。由于每个样本的大小太大,因此无法将它们作为单个图像处理。因此,将每个载玻片分成小部分,并考虑在边缘瓦片上合并以保留核的连续性。所提出的方法已经在组织微阵列(TMA)整个玻片上进行了广泛的评估,并且与有经验的病理学家的估计相比,细胞检测性能可与手动标注相媲美,并且非常准确。

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