2020
DOI: 10.3390/cancers12102823
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Functional Transcription Factor Target Networks Illuminate Control of Epithelial Remodelling

Abstract: Cell identity is governed by gene expression, regulated by transcription factor (TF) binding at cis-regulatory modules. Decoding the relationship between TF binding patterns and gene regulation is nontrivial, remaining a fundamental limitation in understanding cell decision-making. We developed the NetNC software to predict functionally active regulation of TF targets; demonstrated on nine datasets for the TFs Snail, Twist, and modENCODE Highly Occupied Target (HOT) regions. Snail and Twist are canonical drive… Show more

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Cited by 7 publications
(8 citation statements)
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References 191 publications
(313 reference statements)
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“…NetNC [ 45 ] analysis of DE genes for the radiation (28.5-rad vs 28.5-Ctrl) and torpor + radiation (18.5-mel-rad vs 28.5-Ctrl) groups produced two networks for each condition (28.5-rad_NET_UP, 28.5-rad_NET_DOWN, 18.5-mel-rad_NET_UP, 18.5-mel-rad_NET_DOWN). Merging of the networks in Cytoscape produced an integrated network (as seen in Figure 10 ) (cytoscape network available in Supplementary Network S1 ) revealing considerable overlap in the NetNC results for each condition and producing two networks that reveal common response mechanisms.…”
Section: Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…NetNC [ 45 ] analysis of DE genes for the radiation (28.5-rad vs 28.5-Ctrl) and torpor + radiation (18.5-mel-rad vs 28.5-Ctrl) groups produced two networks for each condition (28.5-rad_NET_UP, 28.5-rad_NET_DOWN, 18.5-mel-rad_NET_UP, 18.5-mel-rad_NET_DOWN). Merging of the networks in Cytoscape produced an integrated network (as seen in Figure 10 ) (cytoscape network available in Supplementary Network S1 ) revealing considerable overlap in the NetNC results for each condition and producing two networks that reveal common response mechanisms.…”
Section: Resultsmentioning
confidence: 99%
“…A zebrafish functional gene network (ZFGN) was kindly provided by Olga Troyanskaya [ 44 ]. The top 500 upregulated and 500 downregulated genes (FC > ±1.5) for the radiation (28.5-rad) and torpor + radiation (18.5-mel-rad) were analysed by NetNC [ 45 ] in ‘Functional Target Identification’ (FTI) mode using the network formed from all ZFGN edges that had edge weight >0.5. The resulting networks for each condition were merged and subsequently visualised using Cytoscape v3.7.2 [ 46 ] and a gene ontology analysis was performed on distinct clusters using the Cytoscape plugin ‘BiNGO’ [ 47 ].…”
Section: Methodsmentioning
confidence: 99%
“…B-net has the most unique genes ( n = 1022) and the highest average degree (22.8). We derived focus networks for each immune cell grouping by taking the IMMUNETS genes given in Table 1 as input for the NetNC algorithm and using HumanNet as the reference network [ 26 , 27 ] ( Figure 2 , Supplementary Figures S1–S3 and Data Files S2 and S3 ). As expected, the focus networks have connections between clusters that are annotated with biologically related terms.…”
Section: Resultsmentioning
confidence: 99%
“…Genes from each of the five correlation networks for the regulated genes were taken as input to the NetNC algorithm if they were found in no more than two IMMUNETS networks; in order to produce five focus networks. NetNC analysis used the FTI setting and HumanNet as the base network [28,29]. The five focus networks output from NetNC-FTI were visualized by Cytoscape and annotated with the BiNGO plugin using a significance threshold of q<0.05 [102,103] (Supplementary Data File S3), all of the expressed genes in IRIS [21] were taken as the background gene list for enrichment analysis.…”
Section: Co-expression Gene Network and Focus Network Constructionmentioning
confidence: 99%
“…NK-net is the largest overall (2748 genes) and has the greatest overlap with the other networks, for example sharing 751 and 535 genes with Dend-net and B-net, respectively. In order to refine the IMMUNETS correlation networks, we derived focus networks taking the genes from Table 1 for each immune cell type as input for the NetNC algorithm, and using HumanNet as the reference network [28,29] (Figure 2, Supplementary Figures S1, S2, S3, Supplementary Data Files S2, S3). As expected, the focus networks have connections between clusters that are annotated with biologically related terms.…”
Section: Immunets: Modelling Immune Cell Differentiation and Activationmentioning
confidence: 99%