Département de Biochimie, Université de Montréal, Montréal, QC, Canada.
Sebastian Pechmann Research Lab, Saarbrücken, Germany.
PeerJ. 2022 Feb 22;10:e13016. doi: 10.7717/peerj.13016. eCollection 2022.
Cells are enticingly complex systems. The identification of feedback regulation is critically important for understanding this complexity. Network motifs defined as small graphlets that occur more frequently than expected by chance have revolutionized our understanding of feedback circuits in cellular networks. However, with their definition solely based on statistical over-representation, network motifs often lack biological context, which limits their usefulness. Here, we define functional network motifs (FNMs) through the systematic integration of genetic interaction data that directly inform on functional relationships between genes and encoded proteins. Occurring two orders of magnitude less frequently than conventional network motifs, we found FNMs significantly enriched in genes known to be functionally related. Moreover, our comprehensive analyses of FNMs in yeast showed that they are powerful at capturing both known and putative novel regulatory interactions, thus suggesting a promising strategy towards the systematic identification of feedback regulation in biological networks. Many FNMs appeared as excellent candidates for the prioritization of follow-up biochemical characterization, which is a recurring bottleneck in the targeting of complex diseases. More generally, our work highlights a fruitful avenue for integrating and harnessing genomic network data.
细胞是极具吸引力的复杂系统。识别反馈调节对于理解这种复杂性至关重要。网络基元被定义为比随机出现更频繁的小图块,它们彻底改变了我们对细胞网络中反馈回路的理解。然而,由于它们的定义仅仅基于统计上的过度表示,网络基元往往缺乏生物学背景,这限制了它们的用途。在这里,我们通过系统地整合直接反映基因和编码蛋白之间功能关系的遗传相互作用数据来定义功能网络基元 (FNMs)。FNMs 的出现频率比传统网络基元低两个数量级,我们发现它们在已知功能相关的基因中显著富集。此外,我们对酵母中 FNMs 的全面分析表明,它们能够有效地捕捉已知和推测的新型调节相互作用,因此为系统地识别生物网络中的反馈调节提供了一种很有前途的策略。许多 FNMs 是后续生化特征分析的绝佳候选者,这是靶向复杂疾病的一个反复出现的瓶颈。更一般地说,我们的工作突出了整合和利用基因组网络数据的一条富有成效的途径。