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Characterization and classification of adherent cells in monolayer culture using automated tracking and evolutionary algorithms

机译:使用自动跟踪和进化算法对单层培养中的贴壁细胞进行表征和分类

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摘要

This paper presents a novel method for tracking and characterizing adherent cells in monolayer culture. A system of cell tracking employing computer vision techniques was applied to time-lapse videos of replicate normal human uro-epithelial cell cultures exposed to different concentrations of adenosine triphosphate (ATP) and a selective purinergic P2X antagonist (PPADS), acquired over a 24 h period. Subsequent analysis following feature extraction demonstrated the ability of the technique to successfully separate the modulated classes of cell using evolutionary algorithms. Specifically, a Cartesian Genetic Program (CGP) network was evolved that identified average migration speed, in-contact angular velocity, cohesivity and average cell clump size as the principal features contributing to the separation. Our approach not only provides non-biased and parsimonious insight into modulated class behaviours, but can be extracted as mathematical formulae for the parameterization of computational models.
机译:本文提出了一种跟踪和表征单层培养中粘附细胞的新方法。将采用计算机视觉技术的细胞跟踪系统应用于重复的正常人类尿路上皮细胞培养物的延时视频,该培养物暴露于不同浓度的三磷酸腺苷(ATP)和选择性嘌呤能P2X拮抗剂(PPADS),在24小时内获得期。特征提取之后的后续分析证明了该技术具有使用进化算法成功分离出细胞调制类别的能力。具体而言,发展了笛卡尔遗传程序(CGP)网络,该网络将平均迁移速度,接触角速度,内聚力和平均细胞团大小确定为有助于分离的主要特征。我们的方法不仅提供了对调制类行为的无偏见和简约见解,而且可以将其提取为用于计算模型参数化的数学公式。

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