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Beyond genealogies: Mutual information of causal paths to analyse single cell tracking data

机译:超越家谱:因果道路的相互信息分析单个小区跟踪数据

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Single cell tracking, based on the computerised analysis of time-lapse movies, is a sophisticated experimental technique to quantify single cell dynamics in time and space. Although the resulting cellular genealogies comprehensively describe the divisional history of each cell, there are many open questions regarding the statistical analysis of this type of data. In particular, it is unclear, how tracking uncertainties or spatial information of cellular development can correctly be incorporated into the analysis. Here we propose a generalised description of single cell tracking data by spatiotemporal networks that can account for ambiguities in cell assignment as well as for spatial relations between cells. We present a way to measure correlations among cell states by analysing the mutual information in state space considering causal (time-respecting) paths and illustrate our approach by a corresponding example. We conclude that a comprehensive spatiotemporal description of single cell tracking data is ultimately necessary to fully exploit the information obtained by time-lapse imaging.
机译:基于计时电影的计算机化分析,单电池跟踪是一种复杂的实验技术,可以在时间和空间中量化单个细胞动态。虽然所产生的细胞系术综合描述了每个细胞的分区历史,但是有许多关于这种类型数据的统计分析的开放性问题。特别地,尚不清楚,如何正确地将蜂窝发育的不确定性或空间信息正确纳入分析。在这里,我们提出了通过时尚网络的单个小区跟踪数据的广义描述,其可以解释细胞分配中的歧义以及细胞之间的空间关系。我们通过在考虑因果(时间偏见)路径中,通过分析状态空间中的互信息来提出一种方法来测量单元格状态的相关方法,并通过相应的示例说明我们的方法。我们得出结论,单个小区跟踪数据的全面时空描述最终是必要的,以充分利用延时成像所获得的信息。

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