| Literature DB >> 20195495 |
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Year: 2010 PMID: 20195495 PMCID: PMC2829042 DOI: 10.1371/journal.pcbi.1000655
Source DB: PubMed Journal: PLoS Comput Biol ISSN: 1553-734X Impact factor: 4.475
Figure 1Cellular networks underlying observable phenotypes.
(A) Phenotypes are the response of the cell to external signals mediated by cellular networks and pathways. The goal of computation is to reconstruct these networks from the observed phenotypes. (B) Global molecular phenotypes like gene expression allow a view inside the cell but also have limitations. This is exemplified here in a cartoon pathway adapted from [61] showing a cascade of five genes/proteins (1–5). Proteins 1–3 form a kinase cascade, 4 is a transcription factor acting on 5. Up-regulation of 1 starts information flow in the cascade and results in 5 being turned on. In gene expression data this is visible as a correlation between 1 and 5 (represented as an undirected edge in the model). Experimentally perturbing a gene, say 3, removes the corresponding protein from the cascade, breaks the information flow, and results in an expression change at 5 (represented as an arrow in the model). However, the different phosphorylation and activation states of proteins 2–4 will most probably not be visible as changes in gene expression. Thus, because of the pathway mostly acting on the protein level most parts of the cascade (dashed arrows in the model) can not be inferred from gene expression data directly.
Figure 2Functional annotation of hits by enrichment analysis.
(A) In the first approach [38] a cutoff is applied to select the hits with strongest phenotypes. A hyper-geometric test then evaluates if the overlap between the hits and a given gene set is surprisingly large (or small) compared to the overlap with a random set. (B) A second approach [35] does not need a cutoff. It maps the gene set (black bars) onto the observed phenotypes and quantifies if there is a significant trend or if the genes are spread out uniformly over the whole range.
Figure 3Extracting rich subnetworks.
Different patterns in the graph point to a common cellular mechanism causing a phenotype: (A) hits in a low-dimensional screen (red nodes) clustering in highly connected subnetworks, and (B) high correlation between high-dimensional phenotypes of target genes connected in the background network. The black graph represents any type of background network.
Examples of software for network analysis of gene perturbation screens.
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| Software environment for the analysis of genomic data featuring hundreds of contributed packages |
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| Software platform for visualizing molecular interaction networks and integrating them with other data types |
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| End-to-end analysis of cell-based screens: from raw intensity readings to the annotated hit list |
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| Analysis of cell-based RNAi screens, includes quality assessment and customizable normalization |
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| Cell image analysis and feature extraction |
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| Cell image analysis and feature extraction |
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| Tools for data annotation, visualization, and integration | david.abcc.ncifcrf.gov |
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| Enrichment analysis and visualization of GO graph ( | function.princeton.edu/GOLEM |
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| Enrichment analysis with dependencies between GO nodes ( | compbio.charite.de/ontologizer |
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| Gene set enrichment analysis ( |
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| Interactive exploration and analysis of multidimensional data from image-based experiments |
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| Ranking of phenotype profiles according to similarity with given profile |
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| Prioritizes hits for further analysis |
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| Finds optimal subnetworks rich in hits ( |
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| Finds heuristic subnetworks rich in hits ( |
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| Finds subnetworks with high phenotypic similarity ( | acgt.cs.tau.ac.il/matisse/ |
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| NEMs reconstruct pathway features from subset relations in high-dim phenotypes |
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| Copia uses MIMO models to reconstruct networks from perturbations | cbio.mskcc.org/copia/ |
This list is far from comprehensive, but hopefully provides a starting point even for noncoding experimentalists.