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首页> 外文期刊>Micron: The international research and review journal for microscopy >A study about color normalization methods for histopathology images
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A study about color normalization methods for histopathology images

机译:关于组织病理学图像的颜色归一化方法研究

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Histopathology images are used for the diagnosis of the cancerous disease by the examination of tissue with the help of Whole Slide Imaging (WSI) scanner. A decision support system works well by the analysis of the histopathology images but a lot of problems arise in its decision. Color variation in the histopathology images is occurring due to use of the different scanner, use of various equipments, different stain coloring and reactivity from a different manufacturer. In this paper, detailed study and performance evaluation of color normalization methods on histopathology image datasets are presented. Color normalization of the source image by transferring the mean color of the target image in the source image and also to separate stain present in the source image. Stain separation and color normalization of the histopathology images can be helped for both pathology and computerized decision support system. Quality performances of different color normalization methods are evaluated and compared in terms of quaternion structure similarity index matrix (QSSIM), structure similarity index matrix (SSIM) and Pearson correlation coefficient (PCC) on various histopathology image datasets. Our experimental analysis suggests that structure-preserving color normalization (SPCN) provides better qualitatively and qualitatively results in comparison to the all the presented methods for breast and colorectal cancer histopathology image datasets.
机译:组织病理学图像用于通过在整个载玻片成像(WSI)扫描仪的帮助下通过检查组织来诊断癌症疾病。决策支持系统通过对组织病理学图像的分析进行良好,但在其决定中出现了很多问题。由于使用不同的扫描仪,使用各种设备,不同的污渍着色和来自不同制造商的反应性的颜色变化,发生了组织病理学图像的颜色变化。本文提出了对组织病理学图像数据集的彩色归一化方法的详细研究和性能评价。通过在源图像中传送目标图像的平均颜色以及将存在于源图像中的污点来分离源图像来源图像的颜色归一化。可以帮助对组织病理学图像的污渍分离和颜色归一化对病理学和计算机化决策支持系统有所帮助。在各种组织病理学图像数据集上评估和比较不同颜色归一化方法的质量性能,并在四季结构相似指数矩阵(QSSIM),结构相似性指数矩阵(SSIM)和Pearson相关系数(PCC)上进行比较。我们的实验分析表明,与乳腺癌和结直肠癌组织病理学图像数据集的所有呈现方法相比,结构保存的颜色标准化(SPCN)提供了更好的定性和定性结果。

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