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Ensemble and Greedy Approach for the Reconstruction of Large Gene Co-Expression Networks

机译:大型基因共表达网络重建的集合与贪婪方法

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摘要

Gene networks have become a powerful tool in the comprehensive analysis of gene expression. Due to the increasing amount of available data, computational methods for networks generation must deal with the so-called curse of dimensionality in the quest for the reliability of the obtained results. In this context, ensemble strategies have significantly improved the precision of results by combining different measures or methods. On the other hand, structure optimization techniques are also important in the reduction of the size of the networks, not only improving their topology but also keeping a positive prediction ratio. In this work, we present Ensemble and Greedy networks (EnGNet), a novel two-step method for gene networks inference. First, EnGNet uses an ensemble strategy for co-expression networks generation. Second, a greedy algorithm optimizes both the size and the topological features of the network. Not only do achieved results show that this method is able to obtain reliable networks, but also that it significantly improves topological features. Moreover, the usefulness of the method is proven by an application to a human dataset on post-traumatic stress disorder, revealing an innate immunity-mediated response to this pathology. These results are indicative of the method’s potential in the field of biomarkers discovery and characterization.
机译:基因网络已成为基因表达综合分析的强大工具。由于可用数据量的越来越多,网络生成的计算方法必须在寻求获得所获得的结果的可靠性时处理所谓的维度诅咒。在这种情况下,通过结合不同的措施或方法,集合策略显着提高了结果的精度。另一方面,结构优化技术在减少网络的尺寸方面也很重要,不仅改善了它们的拓扑,而且还保持阳性预测率。在这项工作中,我们呈现集合和贪婪网络(EngNET),这是基因网络推断的新型两步方法。首先,ENGNET使用共同表达网络生成的集合策略。其次,贪婪算法优化了网络的大小和拓扑功能。不仅实现了结果表明,这种方法能够获得可靠的网络,还可以显着提高拓扑功能。此外,该方法的有用性通过应用于人类数据集,在创伤后应激障碍上揭示了对该病理学的先天免疫介导的反应。这些结果表明该方法在生物标志物发现和表征领域的潜力。

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