| Literature DB >> 23055976 |
Michael Mayo1, Ahmed F Abdelzaher, Edward J Perkins, Preetam Ghosh.
Abstract
Motifs are patterns of recurring connections among the genes of genetic networks that occur more frequently than would be expected from randomized networks with the same degree sequence. Although the abundance of certain three-node motifs, such as the feed-forward loop, is positively correlated with a networks' ability to tolerate moderate disruptions to gene expression, little is known regarding the connectivity of individual genes participating in multiple motifs. Using the transcriptional network of the bacterium Escherichia coli, we investigate this feature by reconstructing the distribution of genes participating in feed-forward loop motifs from its largest connected network component. We contrast these motif participation distributions with those obtained from model networks built using the preferential attachment mechanism employed by many biological and man-made networks. We report that, although some of these model networks support a motif participation distribution that appears qualitatively similar to that obtained from the bacterium E. coli, the probability for a node to support a feed-forward loop motif may instead be strongly influenced by only a few master transcriptional regulators within the network. From these analyses we conclude that such master regulators may be a crucial ingredient to describe coupling among feed-forward loop motifs in transcriptional regulatory networks.Entities:
Keywords: complex networks; feed-forward loop motif; gene regulatory networks; motif centrality; preferential attachment network models
Year: 2012 PMID: 23055976 PMCID: PMC3457071 DOI: 10.3389/fphys.2012.00357
Source DB: PubMed Journal: Front Physiol ISSN: 1664-042X Impact factor: 4.566
Figure 1Genes of feed-forward loops (open circles) may be connected by the participation of common genes.
Normalized attachment kernels used to create the model networks.
| Functional type | Attachment kernel (e.g., | |||
|---|---|---|---|---|
| Linear | ||||
| Power-law (γ = 0.8) | ||||
| Sigmoid | ||||
Figure 2Cumulative degree distributions for synthetic networks created using linear attachment kernels (A–C), power-law kernels (D–F), and sigmoidal type kernels (G–I).
Scaling exponents α, defined for cumulative distribution functions .
| Distributions | Features | ||||
|---|---|---|---|---|---|
| In-degree | Out-degree | Total-degree | Motif | ||
| Model networks | Linear | 2.7671 | 2.6973 | 2.9765 | 1.8289 |
| Power-law | 2.7452 | 2.5378 | 2.7373 | 1.8484 | |
| Sigmoid | 2.7462 | 2.8632 | 2.9953 | 1.8856 | |
| Experimental network | 1.871 | 3.4922 | 2.4078 | 2.0079 | |
Data are collected here for networks with .
Figure 3Cumulative distribution functions measuring the probability that a measurement made on a network node gives a number of motifs greater than μ, for each of three model networks built using (A) linear attachment kernels, (B) power-law kernels, and (C) sigmoidal kernels.
Figure 4Motif probability distributions (Eq. .
Top five genes in the motif participation distribution.
| Gene | Description | No. motifs |
|---|---|---|
| ihfA | Transcription factor | 559 |
| ihfB | Transcription factor | 529 |
| crp | cAMP receptor protein | 378 |
| fnr | Global transcription factor for anaerobic growth | 316 |
| fis | Transcription factor | 307 |