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Reverse engineering genetic networks using nonlinear saturation kinetics

机译:使用非线性饱和动力学的逆向工程基因网络

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摘要

A gene regulatory network (GRN) represents a set of genes along with their regulatory interactions. Cellular behavior is driven by genetic level interactions. Dynamics of such systems show nonlinear saturation kinetics which can be best modeled by Michaelis-Menten (MM) and Hill equations. Although MM equation is being widely used for modeling biochemical processes, it has been applied rarely. for reverse engineering GRNs. In this paper, we develop a complete framework for a novel model for GRN inference using MM kinetics. A set of coupled equations is first proposed for modeling GRNs. In the coupled model, Michaelis-Menten constant associated with regulation by a gene is made invariant irrespective of the gene being regulated. The parameter estimation of the proposed model is carried out using an evolutionary optimization method, namely, trigonometric differential evolution (TDE). Subsequently, the model is further improved and the regulations of different genes by a given gene are made distinct by allowing varying values of Michaelis-Menten constants for each regulation. Apart from making the model more relevant biologically, the improvement results in a decoupled GRN model with fast estimation of model parameters. Further, to enhance exploitation of the search, we propose a local search algorithm based on hill climbing heuristics. A novel mutation operation is also proposed to avoid population stagnation and premature convergence. Real life benchmark data sets generated in vivo are used for validating the proposed model. Further, we also analyze realistic in silico datasets generated using GeneNetweaver. The comparison of the performance of proposed model with other existing methods shows the potential of the proposed model.
机译:基因调节网络(GRN)代表一组基因以及其调节相互作用。细胞行为由遗传水平相互作用驱动。这种系统的动态显示了非线性饱和动力学,其可以最好地由Michaelis-Menten(MM)和Hill方程建模。尽管MM方程被广泛用于建模生化过程,但它已经很少施用。用于逆向工程GRN。在本文中,我们使用MM动力学为GRN推断进行了一个完整的框架。首先提出一组耦合方程用于建模GRN。在偶联模型中,与基因调节相关的MICHAELIS-MENTen常数是不论受调节的基因的不敏感。使用进化优化方法,即三角差分进化(TDE)进行所提出的模型的参数估计。随后,通过允许每个调节的Michaelis-Menten常数的不同值,进一步改善了该模型并通过给定基因的不同基因的规定是不同的。除了制造模型的生物上更相关,还改善了一种具有快速估计模型参数的解耦GRN模型。此外,为了增强搜索的利用,我们提出了一种基于山攀岩启发式的本地搜索算法。还提出了一种新的突变操作,以避免人口滞纳率和过早的会聚。体内生成的现实生​​活基准数据集用于验证所提出的模型。此外,我们还在使用GenenetWeaver生成的Silico数据集中分析了现实。提出模型与其他现有方法的性能的比较显示了所提出的模型的潜力。

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