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Genetic network inference as a series of discrimination tasks

机译:遗传网络推理是一系列歧视任务

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Motivation: Genetic network inference methods based on sets of differential equations generally require a great deal of time, as the equations must be solved many times. To reduce the computational cost, researchers have proposed other methods for inferring genetic networks by solving sets of differential equations only a few times, or even without solving them at all. When we try to obtain reasonable network models using these methods, however, we must estimate the time derivatives of the gene expression levels with great precision. In this study, we propose a new method to overcome the drawbacks of inference methods based on sets of differential equations.Results: Our method infers genetic networks by obtaining classifiers capable of predicting the signs of the derivatives of the gene expression levels. For this purpose, we defined a genetic network inference problem as a series of discrimination tasks, then solved the defined series of discrimination tasks with a linear programming machine. Our experimental results demonstrated that the proposed method is capable of correctly inferring genetic networks, and doing so more than 500 times faster than the other inference methods based on sets of differential equations. Next, we applied our method to actual expression data of the bacterial SOS DNA repair system. And finally, we demonstrated that our approach relates to the inference method based on the S-system model. Though our method provides no estimation of the kinetic parameters, it should be useful for researchers interested only in the network structure of a target system.
机译:动机:基于微分方程组的遗传网络推理方法通常需要大量时间,因为这些方程必须多次求解。为了降低计算成本,研究人员提出了其他方法来推断遗传网络,方法是仅求解几次微分方程组,甚至根本不求解它们。但是,当我们尝试使用这些方法获得合理的网络模型时,必须非常精确地估计基因表达水平的时间导数。在这项研究中,我们提出了一种新的方法来克服基于微分方程组的推理方法的缺点。结果:我们的方法通过获得能够预测基因表达水平的导数符号的分类器来推断遗传网络。为此,我们将遗传网络推理问题定义为一系列判别任务,然后使用线性编程器解决定义的一系列判别任务。我们的实验结果表明,该方法能够正确地推断遗传网络,并且比基于微分方程组的其他推断方法快500倍以上。接下来,我们将我们的方法应用于细菌SOS DNA修复系统的实际表达数据。最后,我们证明了我们的方法与基于S系统模型的推理方法有关。尽管我们的方法没有提供动力学参数的估计,但对于仅对目标系统的网络结构感兴趣的研究人员来说,它应该是有用的。

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