| Literature DB >> 22292669 |
Cyrille Lepoivre1, Aurélie Bergon, Fabrice Lopez, Narayanan B Perumal, Catherine Nguyen, Jean Imbert, Denis Puthier.
Abstract
BACKGROUND: Deciphering gene regulatory networks by in silico approaches is a crucial step in the study of the molecular perturbations that occur in diseases. The development of regulatory maps is a tedious process requiring the comprehensive integration of various evidences scattered over biological databases. Thus, the research community would greatly benefit from having a unified database storing known and predicted molecular interactions. Furthermore, given the intrinsic complexity of the data, the development of new tools offering integrated and meaningful visualizations of molecular interactions is necessary to help users drawing new hypotheses without being overwhelmed by the density of the subsequent graph.Entities:
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Year: 2012 PMID: 22292669 PMCID: PMC3395838 DOI: 10.1186/1471-2105-13-19
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
A comparison of web tools dedicated to molecular interactions.
| MIR@NT@N | GeneMANIA | InnateDB | InteractomeBrowser | |||||
|---|---|---|---|---|---|---|---|---|
| Physical protein protein interactions | - | + | + | + | + | + | + | |
| Computationally predicted TF targetsa | + | - | + | - | - | - | + | |
| Experimentally observed TF targetsb | - | - | - | - | - | - | + | |
| Predicted miRNA targets | + | - | - | - | - | - | + | |
| Regulatory interactions from literature | - | + | - | - | - | - | + | |
| Biological pathways | - | + | - | + | - | - | - | |
| Inferred functional interactionsc | - | + | - | + | - | - | - | |
| Batch query | + | + | - | + | - | - | + | |
| add/remove/hide inter-actors and interactions | - | - | - | - | + | - | + | |
| Movable nodes | - | + | ND | + | + | + | + | |
| Compartment-based layout | - | - | - | - | - | + | + | |
The table provides an overview of the types of molecular interactions and of the functionalities offered by representative web tools previously published. Informations were obtained from latest articles describing the servers. The presence or absence of the corresponding features is denoted by + or - respectively.
a Refers to bioinformatic prediction of TFBSs using PWMs.
b Refers to results from large-scale experimental methods that profile the binding of TFs to DNA at the genome-wide level (e.g.; ChIP-Seq, ChIP-chip, ...).
c Refers to computational methods that aggregate various informations (e.g.; expression, genomic distance, conservation) to infer functional interactions.
d Search Tool for the Retrieval of Interacting Genes/Proteins
e MotifMap visualizer was not available during our tests. Informations related to the visualizer were obtained from documentation.
f Agile Protein Interaction DataAnalyzer
Figure 1Functional enrichment analysis of predicted targets. Annotation terms obtained from various annotation databases were used to performed systematic annotation of all predicted target sets in the mouse. For each pair of term/PWM we computed Fisher's exact test p-value f. Each cell of a matrix with terms as row and PWM as column was filled with a score defined as -log(f). (A-I) Representative biclusters found with BiMax are presented.
Figure 2The InteractomeBrowser plugin. (A) A global and zoom-in view of InteractomeBrowser cell-compartment based layout. Zoom-in view shows some sub-cellular compartments together with node corresponding to gene products. Note that node corresponding to Esr1 appears as green, indicating that regulatory information is available for this gene. (B) Positive interactions (i.e.; activations) appear as green edges with normal arrowheads (here Notch1 is the source). (C) Negative interactions (i.e; repressions) appear as red edges with T-shaped arrowheads (here Mirn17 is the source). (D) Ambiguous interactions (whose repressive or activating status is unknown) appear as violet arrows with dot arrowheads (here with Mycn as source).