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Predicting missing expression values in gene regulatory networks using a discrete logic modeling optimization guided by network stable states

机译:使用网络稳定状态指导的离散逻辑建模优化,预测基因调控网络中的缺失表达值

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The development of new high-throughput technologies enables us to measure genome-wide transcription levels, protein abundance, metabolite concentration, etc. Nevertheless, these experimental data are often noisy and incomplete, which hinders data analysis, modeling and prediction. Here, we propose a method to predict expression values of genes involved in stable cellular phenotypes from the expression values of the remaining genes in a literature-based gene regulatory network. The consistency between predicted and known stable states from experimental data is used to guide an iterative network pruning that contextualizes the network to the biological conditions under which the expression data were obtained. Using the contextualized network and the property of network stability we predict gene expression values missing from experimental data. The prediction method assumes a Boolean model to compute steady states of networks and an evolutionary algorithm to iteratively prune the networks. The evolutionary algorithm samples the probability distribution of positive feedback loops or positive circuits and individual interactions within the subpopulation of the best-pruned networks at each iteration. The resulting expression inference is based not only on previous knowledge about local connectivity but also on a global network property (stability), providing robustness in the predictions.
机译:新的高通量技术的发展使我们能够测量全基因组的转录水平,蛋白质丰度,代谢物浓度等。尽管如此,这些实验数据通常嘈杂且不完整,这阻碍了数据分析,建模和预测。在这里,我们提出了一种从基于文献的基因调控网络中,通过其余基因的表达值预测参与稳定细胞表型的基因表达值的方法。来自实验数据的预测和已知稳定状态之间的一致性可用于指导迭代网络修剪,该修剪将网络与获取表达数据所依据的生物学条件相关联。使用上下文网络和网络稳定性的属性,我们可以预测实验数据中缺少的基因表达值。该预测方法假定布尔模型可计算网络的稳态,而进化算法则可迭代修剪网络。进化算法在每次迭代时采样正反馈回路或正电路的概率分布以及最佳修剪网络的子种群内的个体相互作用。产生的表达式推断不仅基于有关本地连接的先前知识,还基于全局网络属性(稳定性),从而在预测中提供了鲁棒性。

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