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Evolutionary constraints on the complexity of genetic regulatory networks allow predictions of the total number of genetic interactions

机译:遗传调控网络复杂性的进化限制可以预测遗传相互作用的总数

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摘要

Genetic regulatory networks (GRNs) have been widely studied, yet there is a lack of understanding with regards to the final size and properties of these networks, mainly due to no network currently being complete. In this study, we analyzed the distribution of GRN structural properties across a large set of distinct prokaryotic organisms and found a set of constrained characteristics such as network density and number of regulators. Our results allowed us to estimate the number of interactions that complete networks would have, a valuable insight that could aid in the daunting task of network curation, prediction, and validation. Using state-of-the-art statistical approaches, we also provided new evidence to settle a previously stated controversy that raised the possibility of complete biological networks being random and therefore attributing the observed scale-free properties to an artifact emerging from the sampling process during network discovery. Furthermore, we identified a set of properties that enabled us to assess the consistency of the connectivity distribution for various GRNs against different alternative statistical distributions. Our results favor the hypothesis that highly connected nodes (hubs) are not a consequence of network incompleteness. Finally, an interaction coverage computed for the GRNs as a proxy for completeness revealed that high-throughput based reconstructions of GRNs could yield biased networks with a low average clustering coefficient, showing that classical targeted discovery of interactions is still needed.
机译:遗传调控网络(GRN)已被广泛研究,但是对于这些网络的最终大小和性质缺乏了解,主要是因为目前尚无完整的网络。在这项研究中,我们分析了GRN结构特性在一大批不同的原核生物中的分布,并发现了一组受约束的特征,例如网络密度和调节子数量。我们的结果使我们能够估计完整的网络将具有的交互次数,这是有价值的见解,可以帮助完成网络管理,预测和验证的艰巨任务。使用最新的统计方法,我们还提供了新的证据来解决先前提到的争议,该争议增加了完整生物网络是随机的可能性,因此将观察到的无标度特性归因于采样过程中出现的人工产物网络发现。此外,我们确定了一组属性,使我们能够针对不同的替代统计分布评估各种GRN的连接分布的一致性。我们的结果支持以下假设:高度连接的节点(集线器)不是网络不完整的结果。最后,为GRN计算的交互作用覆盖范围可作为完整性的代理,显示基于GRN的高通量重构可以产生具有低平均聚类系数的有偏网络,这表明仍需要经典的有针对性的交互发现。

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