活体成像技术对克隆癌细胞的自动分析。

IntraVital Pub Date : 2013-07-01 DOI:10.4161/intv.26138
Sarah Earley Coffey, Randy J Giedt, Ralph Weissleder
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引用次数: 18

摘要

单细胞谱系长时间的纵向分析一直具有挑战性,特别是在以高细胞周转率为特征的过程中,如炎症、增殖或癌症。RGB标记已成为实现此类调查的一种优雅方法。然而,自动图像分析的方法仍然缺乏。在这里,为了解决这个问题,我们创造了许多不同的彩色多克隆和单克隆癌细胞系,用于体外和体内使用。为了在大规模数据集中对这些细胞进行分类,我们随后开发并测试了一种基于色调选择的自动算法。我们的结果表明,这种方法可以在更复杂的颜色分类方法所需的计算时间的一小部分进行准确的分析。此外,该方法应广泛适用于体外和体内分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated analysis of clonal cancer cells by intravital imaging.

Longitudinal analyses of single cell lineages over prolonged periods have been challenging particularly in processes characterized by high cell turn-over such as inflammation, proliferation, or cancer. RGB marking has emerged as an elegant approach for enabling such investigations. However, methods for automated image analysis continue to be lacking. Here, to address this, we created a number of different multicolored poly- and monoclonal cancer cell lines for in vitro and in vivo use. To classify these cells in large scale data sets, we subsequently developed and tested an automated algorithm based on hue selection. Our results showed that this method allows accurate analyses at a fraction of the computational time required by more complex color classification methods. Moreover, the methodology should be broadly applicable to both in vitro and in vivo analyses.

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