首页> 外文期刊>Journal of Microscopy >GENERALIZED REGION GROWING OPERATOR WITH OPTIMAL SCANNING - APPLICATION TO SEGMENTATION OF BREAST CANCER IMAGES
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GENERALIZED REGION GROWING OPERATOR WITH OPTIMAL SCANNING - APPLICATION TO SEGMENTATION OF BREAST CANCER IMAGES

机译:具有最佳扫描的广义区域生长算子-在乳腺癌图像分割中的应用。

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摘要

Segmentation of medical images is a complex problem owing to the large variety of their characteristics. In the automated analysis of breast cancers, two image classes may be distinguished according to whether one considers the quantification of DNA (grey level images of isolated nuclei) or the detection of immunohistochemical staining (colour images of histological sections). The study of these image classes generally involves the use of largely different image processing techniques, We therefore propose a new algorithm derived from the watershed transformation enabling us to solve these two segmentation problems with the same general approach. We then present visual and quantitative results to validate our method. [References: 17]
机译:医学图像的分割由于其特征的多样性而成为一个复杂的问题。在乳腺癌的自动分析中,可以根据是否考虑DNA的定量(分离核的灰度图像)或免疫组织化学染色的检测(组织切片的彩色图像)来区分两种图像类型。这些图像类别的研究通常涉及使用非常不同的图像处理技术,因此,我们提出了一种从分水岭变换派生的新算法,使我们能够使用相同的通用方法来解决这两个分割问题。然后,我们提出视觉和定量结果以验证我们的方法。 [参考:17]

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