Dept. of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, MA, USA.
PLoS One. 2012;7(11):e50085. doi: 10.1371/journal.pone.0050085. Epub 2012 Nov 30.
Modeling of signal transduction pathways plays a major role in understanding cells' function and predicting cellular response. Mathematical formalisms based on a logic formalism are relatively simple but can describe how signals propagate from one protein to the next and have led to the construction of models that simulate the cells response to environmental or other perturbations. Constrained fuzzy logic was recently introduced to train models to cell specific data to result in quantitative pathway models of the specific cellular behavior. There are two major issues in this pathway optimization: i) excessive CPU time requirements and ii) loosely constrained optimization problem due to lack of data with respect to large signaling pathways. Herein, we address both issues: the former by reformulating the pathway optimization as a regular nonlinear optimization problem; and the latter by enhanced algorithms to pre/post-process the signaling network to remove parts that cannot be identified given the experimental conditions. As a case study, we tackle the construction of cell type specific pathways in normal and transformed hepatocytes using medium and large-scale functional phosphoproteomic datasets. The proposed Non Linear Programming (NLP) formulation allows for fast optimization of signaling topologies by combining the versatile nature of logic modeling with state of the art optimization algorithms.
信号转导通路的建模在理解细胞功能和预测细胞反应方面起着重要作用。基于逻辑形式主义的数学形式主义相对简单,但可以描述信号如何从一个蛋白质传播到另一个蛋白质,并导致构建模拟细胞对环境或其他干扰的反应的模型。最近引入了受约束的模糊逻辑来训练特定于细胞的数据的模型,以产生特定细胞行为的定量途径模型。在这条途径的优化中有两个主要问题:i)过多的 CPU 时间要求和 ii)由于缺乏与大信号通路相关的数据,导致优化问题约束不严格。在此,我们解决了这两个问题:前者通过将途径优化重新表述为正则非线性优化问题;后者通过增强算法对信号网络进行预处理和后处理,以去除在给定实验条件下无法识别的部分。作为案例研究,我们使用中大规模功能磷酸蛋白质组数据集来解决正常和转化肝细胞中细胞类型特异性途径的构建问题。所提出的非线性规划 (NLP) 公式通过将逻辑建模的多功能性与最先进的优化算法相结合,允许快速优化信号拓扑结构。