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Hybrid Modeling of Cell Signaling and Transcriptional Reprogramming and Its Application in C. elegans Development

机译:细胞信号传导和转录重编程的混合建模及其在秀丽隐杆线虫发育中的应用

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摘要

Modeling of signal driven transcriptional reprogramming is critical for understanding of organism development, human disease, and cell biology. Many current modeling techniques discount key features of the biological sub-systems when modeling multiscale, organism-level processes. We present a mechanistic hybrid model, GESSA, which integrates a novel pooled probabilistic Boolean network model of cell signaling and a stochastic simulation of transcription and translation responding to a diffusion model of extracellular signals. We apply the model to simulate the well studied cell fate decision process of the vulval precursor cells (VPCs) in C. elegans, using experimentally derived rate constants wherever possible and shared parameters to avoid overfitting. We demonstrate that GESSA recovers (1) the effects of varying scaffold protein concentration on signal strength, (2) amplification of signals in expression, (3) the relative external ligand concentration in a known geometry, and (4) feedback in biochemical networks. We demonstrate that setting model parameters based on wild-type and LIN-12 loss-of-function mutants in C. elegans leads to correct prediction of a wide variety of mutants including partial penetrance of phenotypes. Moreover, the model is relatively insensitive to parameters, retaining the wild-type phenotype for a wide range of cell signaling rate parameters.
机译:信号驱动的转录重编程模型对于理解生物体发育,人类疾病和细胞生物学至关重要。当对多尺度,生物体水平的过程进行建模时,许多当前的建模技术会折衷生物子系统的关键功能。我们提出了一种机械混合模型GESSA,该模型集成了一种新型的细胞信号混合概率布尔网络模型以及响应于细胞外信号扩散模型的转录和翻译的随机模拟。我们应用该模型来模拟线虫中外阴前体细胞(VPC)的深入研究的细胞命运决定过程,并尽可能使用实验得出的速率常数和共享参数来避免过度拟合。我们证明,GESSA恢复(1)改变支架蛋白浓度对信号强度的影响;(2)表达中信号的放大;(3)已知几何结构中的相对外部配体浓度;以及(4)生化网络中的反馈。我们证明基于秀丽隐杆线虫的野生型和LIN-12功能丧失突变体设置模型参数可导致正确预测各种突变体,包括表型的部分渗透。此外,该模型对参数相对不敏感,对于广泛的细胞信号速率参数,仍保留了野生型表型。

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