| Literature DB >> 21050438 |
Jörg Linde1, Duncan Wilson, Bernhard Hube, Reinhard Guthke.
Abstract
BACKGROUND: Reverse engineering of gene regulatory networks can be used to predict regulatory interactions of an organism faced with environmental changes, but can prove problematic, especially when focusing on complicated multi-factorial processes. Candida albicans is a major human fungal pathogen. During the infection process, this fungus is able to adapt to conditions of very low iron availability. Such adaptation is an important virulence attribute of virtually all pathogenic microbes. Understanding the regulation of iron acquisition genes will extend our knowledge of the complex regulatory changes during the infection process and might identify new potential drug targets. Thus, there is a need for efficient modelling approaches predicting key regulatory events of iron acquisition genes during the infection process.Entities:
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Year: 2010 PMID: 21050438 PMCID: PMC3225834 DOI: 10.1186/1752-0509-4-148
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Figure 1Measured, interpolated and simulated expression time courses. The figure shows gene expression time courses of iron acquisition genes and their regulators. Dots, measured values; dashed lines, interpolated time courses; solid lines, time courses simulated by the inferred regulatory model. (a) Nine reductase genes; (b) oxidase genes, permease genes and genes coding for inner membrane transporters; (c) genes coding for regulators.
Figure 2Perturbation function. The figure visualises the perturbation function used to model the limitation of iron during the infection process. After a delay of 60 minutes the iron avaibility is modelled by an exponential loss.
Figure 3Inferred regulatory network model. The inferred regulatory network model. Arrow, activating interaction; bar, repressing interaction. Green edge, consistent with prior knowledge; blue edge, newly predicted edge. Edges resampled less than 50% times are neglected.
Transcriptional regulators and their predicted target genes
| Regulator source | Prior 1/2/3 | found from prior 1/2/3 | newly predicted target genes |
|---|---|---|---|
| Hap3 | 0/0/15 | 0/0/10 | |
| Rim101 | 2/4/7 | 2/1/6 | |
| Tup1 | 1/7/14 | 1/6/5 | |
| Sef1 | 0/0/0 | 0/0/0 | |
For each regulator the number of compiled prior knowledge edges, the number of inferred edges consistent with this prior knowledge, and newly predicted target genes are shown. For description of the three prior knowledge sources see Methods. A target gene is scored as "newly predicted" if it was predicted by the time series data without prior knowledge, or if it was predicted by prior knowledge based on the occurrence of TFBS (source 3) and was found to be consistent with the time series data. Newly predicted target genes are ordered in respect to the stability of the regulatory interaction (number of re-sampling during random perturbation of time series data and cross-validation of prior knowledge).