Modeling structural dissimilarity based on shape embodiment for cell segmentation

Hyun-Gyu Lee, Adiba Orzikulova, Bo-Gyu Park, Sang-chul Lee
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引用次数: 2

Abstract

Accurate cell segmentation is one of the critical, yet challenging problems in microscopy images due to ambiguous boundaries as well as a wide variation of shapes and sizes of cells. Even though a number of existing methods have achieved decent results for cell segmentation, boundary vagueness between adjoining cells tended to cause generation of perceptually inaccurate segmentation of stained nuclei. We propose a segmentation method of cells based on structural dissimilarity between embodied and imaged cells. From assumption that the shape of the region of adjoining cells follows a 2D Gaussian mixture model, the cell region is divided by an expectation-maximization method. The lowest structural dissimilarity using embodied cells decides on the number of components of the 2D Gaussian mixture model. The region of interest is extracted by implementation of both global and local thresholdings, which performs binarization of the local image with a seed at the center, where the seed is obtained by the maximally stable extremal regions. Our approach presented considerably higher evaluation scores compared with other five existing methods in terms of both accuracies of region of interest (ROI) detection and boundary discrimination.
基于形状体现的细胞分割结构不相似性建模
由于模糊的边界以及细胞形状和大小的广泛变化,准确的细胞分割是显微镜图像中关键但具有挑战性的问题之一。尽管许多现有的方法在细胞分割方面取得了不错的结果,但相邻细胞之间的边界模糊往往会导致染色细胞核在感知上的分割不准确。提出了一种基于实体细胞和图像细胞结构不相似性的细胞分割方法。假设相邻单元的区域形状遵循二维高斯混合模型,采用期望最大化方法划分单元区域。嵌入单元的最小结构不相似性决定了二维高斯混合模型的分量数。通过实现全局和局部阈值来提取感兴趣的区域,该阈值对中心位置有种子的局部图像进行二值化,其中种子由最稳定的极值区域获得。与其他五种现有方法相比,我们的方法在感兴趣区域(ROI)检测和边界识别的准确性方面都获得了相当高的评价分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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