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Automated nuclear segmentation in skin histopathological images using multi-scale radial line scanning

机译:使用多尺度放射线扫描在皮肤组织病理学图像中进行自动核分割

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摘要

Segmentation of cell nuclei is an important step towards automatic analysis of microscopic images. This paper presents an automated technique for nuclear segmentation in skin histopathological images. The proposed technique first detects nuclear seeds using a bank of generalized Laplacian of Gaussian (gLoG) kernels. Based on the detected nuclear seeds, a multi-scale radial line scanning (mRLS) method combined with dynamic programming (DP) is utilized to delineate a set of candidate nuclear boundaries. The gradient, intensity and shape information are then integrated to determine the optimal boundary for each nucleus in the image. Experimental results on 28 H&E stained skin histopathological images show that the proposed technique is superior to conventional schemes in nuclear segmentation.
机译:细胞核的分割是朝着自动分析显微图像迈出的重要一步。本文提出了一种在皮肤组织病理学图像中进行核分割的自动化技术。提出的技术首先使用一堆广义高斯Laplacian高斯(gLoG)核来检测核种子。基于检测到的核种子,结合动态规划(DP)的多尺度径向线扫描(mRLS)方法来描绘一组候选核边界。然后将梯度,强度和形状信息整合在一起,以确定图像中每个原子核的最佳边界。 28张H&E染色的皮肤组织病理学图像的实验结果表明,该技术在核分割方面优于传统方案。

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