Makadia Hirenkumar K, Schwaber James S, Vadigepalli Rajanikanth
Daniel Baugh Institute for Functional Genomics and Computational Biology, Department of Pathology, Anatomy and Cell Biology, Sidney Kimmel Medical College, Thomas Jefferson University, Philadelphia, Pennsylvania, United States of America.
PLoS Comput Biol. 2015 Oct 22;11(10):e1004563. doi: 10.1371/journal.pcbi.1004563. eCollection 2015 Oct.
Cell signaling dynamics and transcriptional regulatory activities are variable within specific cell types responding to an identical stimulus. In addition to studying the network interactions, there is much interest in utilizing single cell scale data to elucidate the non-random aspects of the variability involved in cellular decision making. Previous studies have considered the information transfer between the signaling and transcriptional domains based on an instantaneous relationship between the molecular activities. These studies predict a limited binary on/off encoding mechanism which underestimates the complexity of biological information processing, and hence the utility of single cell resolution data. Here we pursue a novel strategy that reformulates the information transfer problem as involving dynamic features of signaling rather than molecular abundances. We pursue a computational approach to test if and how the transcriptional regulatory activity patterns can be informative of the temporal history of signaling. Our analysis reveals (1) the dynamic features of signaling that significantly alter transcriptional regulatory patterns (encoding), and (2) the temporal history of signaling that can be inferred from single cell scale snapshots of transcriptional activity (decoding). Immediate early gene expression patterns were informative of signaling peak retention kinetics, whereas transcription factor activity patterns were informative of activation and deactivation kinetics of signaling. Moreover, the information processing aspects varied across the network, with each component encoding a selective subset of the dynamic signaling features. We developed novel sensitivity and information transfer maps to unravel the dynamic multiplexing of signaling features at each of these network components. Unsupervised clustering of the maps revealed two groups that aligned with network motifs distinguished by transcriptional feedforward vs feedback interactions. Our new computational methodology impacts the single cell scale experiments by identifying downstream snapshot measures required for inferring specific dynamical features of upstream signals involved in the regulation of cellular responses.
在对相同刺激作出反应的特定细胞类型中,细胞信号传导动力学和转录调控活性是可变的。除了研究网络相互作用外,人们还对利用单细胞尺度数据来阐明细胞决策过程中变异性的非随机方面很感兴趣。以往的研究基于分子活性之间的瞬时关系来考虑信号传导和转录域之间的信息传递。这些研究预测了一种有限的二元开/关编码机制,该机制低估了生物信息处理的复杂性,从而低估了单细胞分辨率数据的效用。在这里,我们采用了一种新颖的策略,将信息传递问题重新表述为涉及信号传导的动态特征而非分子丰度。我们采用一种计算方法来测试转录调控活性模式是否以及如何能够提供信号传导时间历程的信息。我们的分析揭示了:(1)显著改变转录调控模式(编码)的信号传导动态特征,以及(2)可从转录活性的单细胞尺度快照推断出的信号传导时间历程(解码)。立即早期基因表达模式能够提供信号峰值保留动力学的信息,而转录因子活性模式能够提供信号传导激活和失活动力学的信息。此外,信息处理方面在整个网络中各不相同,每个组件编码动态信号特征的一个选择性子集。我们开发了新颖的敏感性和信息传递图谱,以揭示这些网络组件中每个组件处信号特征的动态复用。对这些图谱进行无监督聚类揭示了两组,它们与由转录前馈与反馈相互作用区分的网络基序一致。我们新的计算方法通过识别推断参与细胞反应调控的上游信号特定动态特征所需的下游快照测量,对单细胞尺度实验产生影响。