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An Efficient Data Assimilation Schema for Restoration and Extension of Gene Regulatory Networks Using Time-Course Observation Data

机译:使用时间课程观察数据的基因调控网络的恢复和扩展的有效数据同化方案

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摘要

>Gene regulatory networks (GRNs) play a central role in sustaining complex biological systems in cells. Although we can construct GRNs by integrating biological interactions that have been recorded in literature, they can include suspicious data and a lack of information. Therefore, there has been an urgent need for an approach by which the validity of constructed networks can be evaluated; simulation-based methods have been applied in which biological observational data are assimilated. However, these methods apply nonlinear models that require high computational power to evaluate even one network consisting of only several genes. Therefore, to explore candidate networks whose simulation models can better predict the data by modifying and extending literature-based GRNs, an efficient and versatile method is urgently required. We applied a combinatorial transcription model, which can represent combinatorial regulatory effects of genes, as a biological simulation model, to reproduce the dynamic behavior of gene expressions within a state space model. Under the model, we applied the unscented Kalman filter to obtain the approximate posterior probability distribution of the hidden state to efficiently estimate parameter values maximizing prediction ability for observational data by the EM-algorithm. Utilizing the method, we propose a novel algorithm to modify GRNs reported in the literature so that their simulation models become consistent with observed data. The effectiveness of our approach was validated through comparison analysis to the previous methods using synthetic networks. Finally, as an application example, a Kyoto Encyclopedia of Genes and Genomes (KEGG)-based yeast cell cycle network was extended with additional candidate genes to better predict the real mRNA expressions data using the proposed method.
机译:>基因调控网络(GRN)在维持细胞中复杂的生物系统中发挥着核心作用。尽管我们可以通过整合文献中记录的生物相互作用来构建GRN,但它们可能包含可疑数据和信息不足。因此,迫切需要一种可以评估所构建网络的有效性的方法。已经应用了基于模拟的方法,将生物观测数据同化。但是,这些方法应用了非线性模型,该模型需要很高的计算能力才能评估仅由几个基因组成的一个网络。因此,为了探索其仿真模型可以通过修改和扩展基于文献的GRN更好地预测数据的候选网络,迫切需要一种有效且通用的方法。我们应用了组合转录模型作为生物学模拟模型,它可以代表基因的组合调节作用,以在状态空间模型中重现基因表达的动态行为。在该模型下,我们应用无味卡尔曼滤波器获得隐藏状态的近似后验概率分布,从而通过EM算法有效地估计参数值,从而最大化观测数据的预测能力。利用该方法,我们提出了一种新颖的算法来修改文献中报道的GRN,从而使它们的仿真模型与观察到的数据保持一致。通过与使用合成网络的先前方法进行比较分析,验证了我们方法的有效性。最后,作为应用实例,使用提出的方法扩展了基于京都基因与基因组百科全书(KEGG)的酵母细胞周期网络,并添加了其他候选基因,以便更好地预测真实的mRNA表达数据。

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