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Smart computational exploration of stochastic gene regulatory network models using human-in-the-loop semi-supervised learning

机译:随机基因监管网络模型的智能计算探索利用人载于循环半监督学习

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摘要

Motivation: Discrete stochastic models of gene regulatory network models are indispensable tools for biological inquiry since they allow the modeler to predict how molecular interactions give rise to nonlinear system output. Model exploration with the objective of generating qualitative hypotheses about the workings of a pathway is usually the first step in the modeling process. It involves simulating the gene network model under a very large range of conditions, due to the large uncertainty in interactions and kinetic parameters. This makes model exploration highly computational demanding. Furthermore, with no prior information about the model behavior, labor-intensive manual inspection of very large amounts of simulation results becomes necessary. This limits systematic computational exploration to simplistic models.
机译:动机:基因监管网络模型的离散随机模型是生物查询的不可或缺的工具,因为它们允许建模者预测分子相互作用如何产生非线性系统输出。 模型勘探,目的是产生关于途径的工作的定性假设是建模过程中的第一步。 由于相互作用和动力学参数的巨大不确定性,它涉及在非常大的条件下模拟基因网络模型。 这使模型探索高度计算苛刻。 此外,没有关于模型行为的先前信息,需要对非常大量的模拟结果进行劳动密集型手动检查。 这限制了系统的计算探索到简单的模型。

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