Masnadi-Shirazi Maryam, Maurya Mano Ram, Subramaniam Shankar
IEEE Trans Biomed Circuits Syst. 2014 Feb;8(1):74-86. doi: 10.1109/TBCAS.2013.2288035.
Cellular signaling circuitry in eukaryotes can be studied by analyzing the regulation of protein phosphorylation and its impact on downstream mechanisms leading to a phenotype. A primary role of phosphorylation is to act as a switch to turn "on" or "off" a protein activity or a cellular pathway. Specifically, protein phosphorylation is a major leit motif for transducing molecular signals inside the cell. Errors in transferring cellular information can alter the normal function and may lead to diseases such as cancer; an accurate reconstruction of the "true" signaling network is essential for understanding the molecular machinery involved in normal and pathological function. In this study, we have developed a novel framework for time-dependent reconstruction of signaling networks involved in the activation of macrophage cells leading to an inflammatory response. Several signaling pathways have been identified in macrophage cells, but the time-varying causal relationship that can produce a dynamic directed graph of these molecules has not been explored in detail. Here, we use the notion of Granger causality, and apply a vector autoregressive model to phosphoprotein time-course data in RAW 264.7 macrophage cells. Through the reconstruction of the phosphoprotein network, we were able to estimate the directionality and the dynamics of information flow. Significant interactions were selected through statistical hypothesis testing ( t-test) of the coefficients of a linear model and were used to reconstruct the phosphoprotein signaling network. Our approach results in a three-stage phosphoprotein network that represents the evolution of the causal interactions in the intracellular signaling pathways.
真核生物中的细胞信号传导电路可以通过分析蛋白质磷酸化的调节及其对导致表型的下游机制的影响来进行研究。磷酸化的主要作用是充当开关,开启或关闭蛋白质活性或细胞途径。具体而言,蛋白质磷酸化是在细胞内转导分子信号的主要主题。细胞信息传递中的错误会改变正常功能,并可能导致癌症等疾病;准确重建“真实”的信号网络对于理解参与正常和病理功能的分子机制至关重要。在本研究中,我们开发了一种新颖的框架,用于对参与巨噬细胞激活并导致炎症反应的信号网络进行时间依赖性重建。在巨噬细胞中已经鉴定出几种信号通路,但尚未详细探索能够产生这些分子动态有向图的时变因果关系。在这里,我们使用格兰杰因果关系的概念,并将向量自回归模型应用于RAW 264.7巨噬细胞中的磷蛋白时间进程数据。通过重建磷蛋白网络,我们能够估计信息流的方向性和动态性。通过对线性模型系数的统计假设检验(t检验)选择显著的相互作用,并用于重建磷蛋白信号网络。我们的方法产生了一个三阶段的磷蛋白网络,该网络代表了细胞内信号通路中因果相互作用的演变。