首页> 外文期刊>Microscopy and microanalysis: The official journal of Microscopy Society of America, Microbeam Analysis Society, Microscopical Society of Canada >Segmentation and Quantitative Analysis of Apoptosis of Chinese Hamster Ovary Cells from Fluorescence Microscopy Images
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Segmentation and Quantitative Analysis of Apoptosis of Chinese Hamster Ovary Cells from Fluorescence Microscopy Images

机译:荧光显微镜图像中汉仓卵巢细胞凋亡的分割及定量分析

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摘要

Accurate and fast quantitative analysis of living cells from fluorescence microscopy images is useful for evaluating experimental outcomes and cell culture protocols. An algorithm is developed in this work to automatically segment and distinguish apoptotic cells from normal cells. The algorithm involves three steps consisting of two segmentation steps and a classification step. The segmentation steps are: (i) a coarse segmentation, combining a range filter with a marching square method, is used as a prefiltering step to provide the approximate positions of cells within a two-dimensional matrix used to store cells’ images and the count of the number of cells for a given image; and (ii) a fine segmentation step using the Active Contours Without Edges method is applied to the boundaries of cells identified in the coarse segmentation step. Although this basic two-step approach provides accurate edges when the cells in a given image are sparsely distributed, the occurrence of clusters of cells in high cell density samples requires further processing. Hence, a novel algorithm for clusters is developed to identify the edges of cells within clusters and to approximate their morphological features. Based on the segmentation results, a support vector machine classifier that uses three morphological features: the mean value of pixel intensities in the cellular regions, the variance of pixel intensities in the vicinity of cell boundaries, and the lengths of the boundaries, is developed for distinguishing apoptotic cells from normal cells. The algorithm is shown to be efficient in terms of computational time, quantitative analysis, and differentiation accuracy, as compared with the use of the active contours method without the proposed preliminary coarse segmentation step.
机译:从荧光显微镜图像的精确和快速定量分析活细胞可用于评估实验结果和细胞培养方案。在这项工作中开发了一种算法,以自动分段和区分来自正常细胞的凋亡细胞。该算法涉及三个步骤由两个分段步骤和分类步骤组成。分割步骤是:(i)将带有游行方形方法的范围滤波器组合的粗略分割用作预过滤器步骤,以提供用于存储单元格图像和计数的二维矩阵内的单元的近似位置给定图像的细胞数量; (ii)使用没有边缘方法的活性轮廓的精细分割步骤应用于在粗略分割步骤中识别的细胞的边界。尽管这种基本的两步方法在给定图像中的细胞稀疏地分布时提供精确的边缘,但是高细胞密度样本中的细胞簇的发生需要进一步处理。因此,开发了一种用于簇的新颖算法以识别簇内的细胞的边缘,并近似其形态特征。基于分割结果,使用三种形态特征的支持向量机分类器:蜂窝区域中的像素强度的平均值,为细胞边界附近的像素强度的变化以及边界的长度将凋亡细胞与正常细胞区分开。与在没有所提出的初步粗略分割步骤的情况下,该算法显示在计算时间,定量分析和分化精度方面是有效的。

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