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从单细胞的配对动态轨迹推断信号基序的结构。

Inferring the structures of signaling motifs from paired dynamic traces of single cells.

作者信息

Haggerty Raymond A, Purvis Jeremy E

机构信息

Department of Genetics, University of North Carolina, Chapel Hill, North Carolina, United States of America.

Computational Medicine Program, University of North Carolina, Chapel Hill, North Carolina, United States of America.

出版信息

PLoS Comput Biol. 2021 Feb 4;17(2):e1008657. doi: 10.1371/journal.pcbi.1008657. eCollection 2021 Feb.

Abstract

Individual cells show variability in their signaling dynamics that often correlates with phenotypic responses, indicating that cell-to-cell variability is not merely noise but can have functional consequences. Based on this observation, we reasoned that cell-to-cell variability under the same treatment condition could be explained in part by a single signaling motif that maps different upstream signals into a corresponding set of downstream responses. If this assumption holds, then repeated measurements of upstream and downstream signaling dynamics in a population of cells could provide information about the underlying signaling motif for a given pathway, even when no prior knowledge of that motif exists. To test these two hypotheses, we developed a computer algorithm called MISC (Motif Inference from Single Cells) that infers the underlying signaling motif from paired time-series measurements from individual cells. When applied to measurements of transcription factor and reporter gene expression in the yeast stress response, MISC predicted signaling motifs that were consistent with previous mechanistic models of transcription. The ability to detect the underlying mechanism became less certain when a cell's upstream signal was randomly paired with another cell's downstream response, demonstrating how averaging time-series measurements across a population obscures information about the underlying signaling mechanism. In some cases, motif predictions improved as more cells were added to the analysis. These results provide evidence that mechanistic information about cellular signaling networks can be systematically extracted from the dynamical patterns of single cells.

摘要

单个细胞在其信号传导动力学方面表现出变异性,这种变异性通常与表型反应相关,这表明细胞间变异性不仅仅是噪声,而是可能具有功能后果。基于这一观察结果,我们推断在相同处理条件下的细胞间变异性部分可以由一个单一的信号基序来解释,该基序将不同的上游信号映射到相应的一组下游反应中。如果这一假设成立,那么对一群细胞中的上游和下游信号传导动力学进行重复测量,即使对该基序没有先验知识,也可以提供有关给定途径潜在信号基序的信息。为了检验这两个假设,我们开发了一种名为MISC(单细胞基序推断)的计算机算法,该算法从单个细胞的配对时间序列测量中推断潜在的信号基序。当应用于酵母应激反应中转录因子和报告基因表达的测量时,MISC预测的信号基序与先前的转录机制模型一致。当一个细胞的上游信号与另一个细胞的下游反应随机配对时,检测潜在机制的能力变得不那么确定,这表明对一群细胞的时间序列测量进行平均会掩盖有关潜在信号机制的信息。在某些情况下,随着分析中添加更多细胞,基序预测得到改善。这些结果提供了证据,表明可以从单个细胞的动态模式中系统地提取有关细胞信号网络的机制信息。

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