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Evaluating a common semi-mechanistic mathematical model of gene-regulatory networks

机译:评估基因调控网络的通用半机械数学模型

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摘要

Modeling and simulation of gene-regulatory networks (GRNs) has become an important aspect of modern systems biology investigations into mechanisms underlying gene regulation. A key challenge in this area is the automated inference (reverse-engineering) of dynamic, mechanistic GRN models from gene expression time-course data. Common mathematical formalisms for representing such models capture two aspects simultaneously within a single parameter: (1) Whether or not a gene is regulated, and if so, the type of regulator (activator or repressor), and (2) the strength of influence of the regulator (if any) on the target or effector gene. To accommodate both roles, "generous" boundaries or limits for possible values of this parameter are commonly allowed in the reverse-engineering process. This approach has several important drawbacks. First, in the absence of good guidelines, there is no consensus on what limits are reasonable. Second, because the limits may vary greatly among different reverse-engineering experiments, the concrete values obtained for the models may differ considerably, and thus it is difficult to compare models. Third, if high values are chosen as limits, the search space of the model inference process becomes very large, adding unnecessary computational load to the already complex reverse-engineering process. In this study, we demonstrate that restricting the limits to the [−1, +1] interval is sufficient to represent the essential features of GRN systems and offers a reduction of the search space without loss of quality in the resulting models. To show this, we have carried out reverse-engineering studies on data generated from artificial and experimentally determined from real GRN systems.
机译:基因调控网络(GRN)的建模和仿真已成为现代系统生物学研究基因调控机制的重要方面。该领域的主要挑战是根据基因表达时程数据自动推断(逆向工程)动态的,机械的GRN模型。用于表示此类模型的常见数学形式主义在一个参数内同时捕获了两个方面:(1)是否调节基因,如果调节,调节子的类型(激活物或阻遏物),以及(2)靶标或效应基因的调节子(如果有)。为了兼顾这两个角色,在逆向工程过程中通常允许对该参数的可能值使用“宽泛的​​”边界或限制。这种方法有几个重要的缺点。首先,在没有好的指导原则的情况下,对于合理的限制尚无共识。其次,由于在不同的逆向工程实验中,限制可能会有很大差异,因此为模型获得的具体值可能会有很大差异,因此很难对模型进行比较。第三,如果选择高值作为限制,则模型推断过程的搜索空间将变得非常大,从而给已经很复杂的逆向工程过程增加不必要的计算负担。在这项研究中,我们证明了将限制限制为[-1,+1]间隔足以代表GRN系统的基本特征,并在不损失结果模型质量的情况下减少了搜索空间。为了证明这一点,我们对从人工和实验确定的实际GRN系统生成的数据进行了逆向工程研究。

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