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Automated contour-based tracking and analysis of cell behaviour over long time scales in environments of varying complexity and cell density

机译:在复杂性和细胞密度变化的环境中基于轮廓的自动跟踪和长时间范围内的细胞行为分析

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摘要

Understanding single and collective cell motility in model environments is foundational to many current research efforts in biology and bioengineering. To elucidate subtle differences in cell behaviour despite cell-to-cell variability, we introduce an algorithm for tracking large numbers of cells for long time periods and present a set of physics-based metrics that quantify differences in cell trajectories. Our algorithm, termed automated contour-based tracking for in vitro environments (ACTIVE), was designed for adherent cell populations subject to nuclear staining or transfection. ACTIVE is distinct from existing tracking software because it accommodates both variability in image intensity and multi-cell interactions, such as divisions and occlusions. When applied to low-contrast images from live-cell experiments, ACTIVE reduced error in analysing cell occlusion events by as much as 43% compared with a benchmark-tracking program while simultaneously tracking cell divisions and resulting daughter–daughter cell relationships. The large dataset generated by ACTIVE allowed us to develop metrics that capture subtle differences between cell trajectories on different substrates. We present cell motility data for thousands of cells studied at varying densities on shape-memory-polymer-based nanotopographies and identify several quantitative differences, including an unanticipated difference between two ‘control’ substrates. We expect that ACTIVE will be immediately useful to researchers who require accurate, long-time-scale motility data for many cells.
机译:了解模型环境中的单细胞和集体细胞运动是生物学和生物工程领域当前许多研究工作的基础。为了阐明尽管细胞之间存在差异,细胞行为的细微差别,我们引入了一种可长时间跟踪大量细胞的算法,并提出了一套基于物理的指标来量化细胞轨迹的差异。我们的算法被称为体外环境中基于轮廓的自动跟踪(ACTIVE),是为经受核染色或转染的贴壁细胞群设计的。 ACTIVE与现有的跟踪软件不同,因为它既可以适应图像强度的变化,又可以适应多细胞相互作用(例如划分和遮挡)。当应用于来自活细胞实验的低对比度图像时,与基准跟踪程序相比,ACTIVE将分析细胞闭塞事件时的错误减少了多达43%,同时可以跟踪细胞分裂以及由此产生的子女细胞关系。由ACTIVE生成的大型数据集使我们能够开发度量标准,以捕获不同底物上细胞轨迹之间的细微差异。我们提供了基于形状记忆聚合物的纳米形貌图上不同密度研究的成千上万个细胞的细胞运动性数据,并确定了一些定量差异,包括两个“对照”底物之间的意外差异。我们希望,ACTIVE将对需要许多细胞的长期准确运动数据的研究人员立即有用。

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