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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Inferring gene regulatory networks using a time-delayed mass action model
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Inferring gene regulatory networks using a time-delayed mass action model

机译:使用时间延迟的质量动作模型推断基因调控网络

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摘要

This paper demonstrates a new time-delayed mass action model which applies a set of delay differential equations (DDEs) to represent the dynamics of gene regulatory networks (GRNs). The mass action model is a classical model which is often used to describe the kinetics of biochemical processes, so it is fit for GRN modeling. The ability to incorporate time-delayed parameters in this model enables different time delays of interaction between genes. Moreover, an efficient learning method which employs population-based incremental learning (PBIL) algorithm and trigonometric differential evolution (TDE) algorithm TDE is proposed to automatically evolve the structure of the network and infer the optimal parameters from observed time-series gene expression data. Experiments on three well-known motifs of GRN and a real budding yeast cell cycle network show that the proposal can not only successfully infer the network structure and parameters but also has a strong anti-noise ability. Compared with other works, this method also has a great improvement in performances.
机译:本文演示了一个新的时滞质量作用模型,该模型应用了一组延迟微分方程(DDE)来表示基因调控网络(GRN)的动力学。质量作用模型是经典模型,通常用于描述生化过程的动力学,因此适合于GRN建模。在模型中纳入延迟参数的能力使得基因之间相互作用的时间延迟不同。此外,提出了一种有效的学习方法,该方法采用基于人口的增量学习(PBIL)算法和三角差分进化(TDE)算法TDE来自动进化网络的结构,并从观察到的时间序列基因表达数据推断出最佳参数。对GRN的三个著名基序和一个真实的出芽酵母细胞周期网络进行的实验表明,该方案不仅可以成功地推断出网络结构和参数,而且具有很强的抗噪能力。与其他作品相比,该方法在性能上也有了很大的提高。

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