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Construction of Gene Regulatory Networks Using Recurrent Neural Networks and Swarm Intelligence

机译:利用递归神经网络和群体智能构建基因调控网络

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摘要

We have proposed a methodology for the reverse engineering of biologically plausible gene regulatory networks from temporal genetic expression data. We have used established information and the fundamental mathematical theory for this purpose. We have employed the Recurrent Neural Network formalism to extract the underlying dynamics present in the time series expression data accurately. We have introduced a new hybrid swarm intelligence framework for the accurate training of the model parameters. The proposed methodology has been first applied to a small artificial network, and the results obtained suggest that it can produce the best results available in the contemporary literature, to the best of our knowledge. Subsequently, we have implemented our proposed framework on experimental (in vivo) datasets. Finally, we have investigated two medium sized genetic networks (in silico) extracted from GeneNetWeaver, to understand how the proposed algorithm scales up with network size. Additionally, we have implemented our proposed algorithm with half the number of time points. The results indicate that a reduction of 50% in the number of time points does not have an effect on the accuracy of the proposed methodology significantly, with a maximum of just over 15% deterioration in the worst case.
机译:我们已经提出了一种从时态基因表达数据对生物学上可行的基因调控网络进行反向工程的方法。为此,我们使用了已建立的信息和基本的数学理论。我们已采用递归神经网络形式主义来准确提取时间序列表达数据中存在的潜在动力学。我们引入了一种新的混合群智能框架,用于精确训练模型参数。所提出的方法已首先应用于小型人工网络,所获得的结果表明,据我们所知,它可以产生当代文学中可获得的最佳结果。随后,我们在实验(体内)数据集上实现了我们提出的框架。最后,我们研究了从GeneNetWeaver中提取的两个中等规模的遗传网络(计算机模拟),以了解所提出的算法如何随网络规模扩大。另外,我们用一半的时间点实现了我们提出的算法。结果表明,时间点数量减少50%不会显着影响所提出方法的准确性,在最坏的情况下,最大值只会超过15%。

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