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首页> 外文期刊>Frontiers in Molecular Biosciences >Toward Modeling Context-Specific EMT Regulatory Networks Using Temporal Single Cell RNA-Seq Data
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Toward Modeling Context-Specific EMT Regulatory Networks Using Temporal Single Cell RNA-Seq Data

机译:朝着使用时间单个单元RNA-SEQ数据建模上下文特定的EMT监管网络

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Epithelial-mesenchymal transition (EMT) is well established as playing a crucial role in cancer progression and being a potential therapeutic target. To elucidate the gene regulation that drives the decision making of EMT, many previous studies have been conducted to model EMT gene regulatory circuits (GRCs) using interactions from the literature. While this approach can depict the generic regulatory interactions, it falls short of capturing context-specific features. Here, we explore the effectiveness of a combined bioinformatics and mathematical modeling approach to construct context-specific EMT GRCs directly from transcriptomics data. Using time-series single cell RNA-sequencing data from four different cancer cell lines treated with three EMT-inducing signals, we identify context-specific activity dynamics of common EMT transcription factors. In particular, we observe distinct paths during the forward and backward transitions, as is evident from the dynamics of major regulators such as NF-KB (e.g., NFKB2 and RELB) and AP-1 (e.g., FOSL1 and JUNB). For each experimental condition, we systematically sample a large set of network models and identify the optimal GRC capturing context-specific EMT states using a mathematical modeling method named Random Circuit Perturbation (RACIPE). The results demonstrate that the approach can build high quality GRC models in certain cases, but not others and, meanwhile, elucidate the role of common bioinformatics parameters and properties of network structures in determining the quality of GRC models. We expect the integration of top-down bioinformatics and bottom-up systems biology modeling to be a powerful and generally applicable approach to elucidate gene regulatory mechanisms of cellular state transitions.
机译:上皮 - 间充质转换(EMT)是在癌症进展中发挥至关重要和潜在的治疗目标。为了阐明驱动EMT的决策的基因调节,已经进行了许多先前的研究,以使用来自文献的相互作用来模拟EMT基因调节电路(GRC)。虽然这种方法可以描绘通用的调节互动,但它缺少捕获上下文专用特征。在这里,我们探讨了组合的生物信息学和数学建模方法的有效性,直接从转录组织数据构建了上下文特定的EMT GRC。使用来自三种EMT诱导信号处理的四种不同癌细胞系的时间序列单细胞RNA测序数据,我们识别常见EMT转录因子的上下文专用活动动态。特别地,我们观察到前向和向后转换期间的不同路径,正如NF-KB(例如NFKB2和RELB)和AP-1(例如,FOSL1和JUNB)的主要调节器的动态所示。对于每个实验条件,我们系统地采样大量网络模型,并使用名为随机电路扰动(RACIPE)的数学建模方法来识别最佳GRC捕获上下文专用EMT状态。结果表明,该方法可以在某些情况下构建高质量的GRC模型,但不是其他方法,同时,同时阐明常见的生物信息学参数和网络结构的性质在确定GRC型号的质量时的作用。我们预计将自上而下的生物信息学和自下而上系统生物学建模的集成成为一种强大而普遍适用的方法来阐明细胞状态过渡的基因调节机制。

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