Loregic: a method to characterize the cooperative logic of regulatory factors.

The topology of the gene-regulatory network has been extensively analyzed. Now, given the large amount of available functional genomic data, it is possible to go beyond this and systematically study regulatory circuits in terms of logic elements. To this end, we present Loregic, a computational meth...

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Main Authors: Daifeng Wang, Koon-Kiu Yan, Cristina Sisu, Chao Cheng, Joel Rozowsky, William Meyerson, Mark B Gerstein
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-04-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1004132
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spelling doaj-8e2243200e4e4db7bebb367523bca6242021-04-21T15:40:21ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582015-04-01114e100413210.1371/journal.pcbi.1004132Loregic: a method to characterize the cooperative logic of regulatory factors.Daifeng WangKoon-Kiu YanCristina SisuChao ChengJoel RozowskyWilliam MeyersonMark B GersteinThe topology of the gene-regulatory network has been extensively analyzed. Now, given the large amount of available functional genomic data, it is possible to go beyond this and systematically study regulatory circuits in terms of logic elements. To this end, we present Loregic, a computational method integrating gene expression and regulatory network data, to characterize the cooperativity of regulatory factors. Loregic uses all 16 possible two-input-one-output logic gates (e.g. AND or XOR) to describe triplets of two factors regulating a common target. We attempt to find the gate that best matches each triplet's observed gene expression pattern across many conditions. We make Loregic available as a general-purpose tool (github.com/gersteinlab/loregic). We validate it with known yeast transcription-factor knockout experiments. Next, using human ENCODE ChIP-Seq and TCGA RNA-Seq data, we are able to demonstrate how Loregic characterizes complex circuits involving both proximally and distally regulating transcription factors (TFs) and also miRNAs. Furthermore, we show that MYC, a well-known oncogenic driving TF, can be modeled as acting independently from other TFs (e.g., using OR gates) but antagonistically with repressing miRNAs. Finally, we inter-relate Loregic's gate logic with other aspects of regulation, such as indirect binding via protein-protein interactions, feed-forward loop motifs and global regulatory hierarchy.https://doi.org/10.1371/journal.pcbi.1004132
collection DOAJ
language English
format Article
sources DOAJ
author Daifeng Wang
Koon-Kiu Yan
Cristina Sisu
Chao Cheng
Joel Rozowsky
William Meyerson
Mark B Gerstein
spellingShingle Daifeng Wang
Koon-Kiu Yan
Cristina Sisu
Chao Cheng
Joel Rozowsky
William Meyerson
Mark B Gerstein
Loregic: a method to characterize the cooperative logic of regulatory factors.
PLoS Computational Biology
author_facet Daifeng Wang
Koon-Kiu Yan
Cristina Sisu
Chao Cheng
Joel Rozowsky
William Meyerson
Mark B Gerstein
author_sort Daifeng Wang
title Loregic: a method to characterize the cooperative logic of regulatory factors.
title_short Loregic: a method to characterize the cooperative logic of regulatory factors.
title_full Loregic: a method to characterize the cooperative logic of regulatory factors.
title_fullStr Loregic: a method to characterize the cooperative logic of regulatory factors.
title_full_unstemmed Loregic: a method to characterize the cooperative logic of regulatory factors.
title_sort loregic: a method to characterize the cooperative logic of regulatory factors.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2015-04-01
description The topology of the gene-regulatory network has been extensively analyzed. Now, given the large amount of available functional genomic data, it is possible to go beyond this and systematically study regulatory circuits in terms of logic elements. To this end, we present Loregic, a computational method integrating gene expression and regulatory network data, to characterize the cooperativity of regulatory factors. Loregic uses all 16 possible two-input-one-output logic gates (e.g. AND or XOR) to describe triplets of two factors regulating a common target. We attempt to find the gate that best matches each triplet's observed gene expression pattern across many conditions. We make Loregic available as a general-purpose tool (github.com/gersteinlab/loregic). We validate it with known yeast transcription-factor knockout experiments. Next, using human ENCODE ChIP-Seq and TCGA RNA-Seq data, we are able to demonstrate how Loregic characterizes complex circuits involving both proximally and distally regulating transcription factors (TFs) and also miRNAs. Furthermore, we show that MYC, a well-known oncogenic driving TF, can be modeled as acting independently from other TFs (e.g., using OR gates) but antagonistically with repressing miRNAs. Finally, we inter-relate Loregic's gate logic with other aspects of regulation, such as indirect binding via protein-protein interactions, feed-forward loop motifs and global regulatory hierarchy.
url https://doi.org/10.1371/journal.pcbi.1004132
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