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Inferring gene regulatory networks with hybrid of multi-agent genetic algorithm and random forests based on fuzzy cognitive maps

机译:基于模糊认知地图的多毒率遗传算法和随机林的杂交地推断基因调控网络

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Inferring gene regulatory networks (GRNs) from expression data is an important and challenging problem in the field of computational biology. With the growth of high-throughput gene expression data, GRN inference has attracted much interest from researchers. In this paper, we focus on inferring large-scale GRNs using a fast and accurate algorithm. We first use fuzzy cognitive maps (FCMs) to model GRNs. Then, multi-agent genetic algorithm (MAGA) is used to determine regulatory links, and random forests (RF) are used as the feature selection algorithm to initialize the agents, which can reduce the search space of MAGA according to the gene ranking. We improve the genetic operators of MAGA to cope with GRN inference. The proposed algorithm is termed as MAGARF(FC)M-GRN. In the experiments, the performance of MAGARF(FCM)-GRN is validated on synthetic data and the well-known benchmark DREAM3 and DREAM4. The results show that MAGARF(FCM)-GRN can infer directed GRNs with high accuracy and efficiency. (C) 2018 Elsevier B.V. All rights reserved.
机译:从表达数据推断基因调节网络(GRNS)是计算生物学领域的重要且挑战性问题。随着高通量基因表达数据的增长,GRN推理已经吸引了研究人员的许多兴趣。在本文中,我们专注于使用快速准确的算法推断大规模GRN。我们首先使用模糊的认知地图(FCM)来模拟GRN。然后,使用多代理遗传算法(Maga)来确定调节链路,随机森林(RF)用作初始化代理的特征选择算法,这可以根据基因排名来减少Maga的搜索空间。我们改善了Maga的遗传运营商以应对GRN推理。所提出的算法被称为Magarf(Fc)M-Grn。在实验中,Magarf(FCM)-GRN的性能在合成数据和众所周知的基准梦中和Dream4上验证。结果表明,Magarf(FCM)-GRN可以以高精度和效率推断出针对GRN。 (c)2018 Elsevier B.v.保留所有权利。

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