高含量筛选中基于形态学的自适应细胞分割和定量分析

J. Angulo, B. Schaack
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引用次数: 9

摘要

在用于高含量筛选应用的荧光标记细胞分析中,图像处理软件必须具有自动算法,用于单独分割细胞并量化其强度,大小/形状参数等。数学形态学是一种非线性图像处理技术,已被证明是生物医学显微图像分析的有力工具。本文提出了一种基于连通滤波器、分水岭变换和粒度测量的形态学方法,用于分割不同大小、对比度等的细胞。特别是,算法的性能用纳米滴细胞片上格式的三标签(Hoechst, EGFP, Phalloi'din)毒性试验的细胞图像来说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Morphological-based adaptive segmentation and quantification of cell assays in high content screening
In fluorescence-labelled cell assays for high content screening applications, image processing software is necessary to have automatic algorithms for segmenting the cells individually and for quantifying their intensities, size/shape parameters, etc. Mathematical morphology is a non-linear image processing technique which is proven to be a very powerful tool in biomedical microscopy image analysis. This paper presents a morphological methodology based on connected filters, watershed transformation and granulometries for segmenting cells of different size, contrast, etc. In particular, the performance of the algorithms is illustrated with cell images from a toxicity assay in three-labels (Hoechst, EGFP, Phalloi'din) on nanodrops cell-on-chip format.
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