2012
DOI: 10.1101/gr.127191.111
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Predictive regulatory models in Drosophila melanogaster by integrative inference of transcriptional networks

Abstract: Gaining insights on gene regulation from large-scale functional data sets is a grand challenge in systems biology. In this article, we develop and apply methods for transcriptional regulatory network inference from diverse functional genomics data sets and demonstrate their value for gene function and gene expression prediction. We formulate the network inference problem in a machine-learning framework and use both supervised and unsupervised methods to predict regulatory edges by integrating transcription fac… Show more

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Cited by 119 publications
(135 citation statements)
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“…S1), including (1) experimental protein-protein interactions (PPIs), (2) confirmed protein-DNA binding data, (3) TF and target coexpression relationships inferred from expression profiles under two physiological conditions (development and abiotic stress), and (4) TF and target chromatin comodification (Marbach et al, 2012) information inferred from genome-wide chromatin immunoprecipitation (ChIP)-chip experiments of 13 modification types (Supplemental Table S1). We selected these data because they are representative of and highly complementary to gene regulation relationships (Walhout, 2006;Marbach et al, 2012). To reduce false positives from these high-throughput data, we adopted a series of scoring strategies to remove unreliable gene association data (for more details, see "Materials and Methods" and Supplemental Figs.…”
Section: Assembly Of An Integrated Gene Network Of Arabidopsismentioning
confidence: 99%
“…S1), including (1) experimental protein-protein interactions (PPIs), (2) confirmed protein-DNA binding data, (3) TF and target coexpression relationships inferred from expression profiles under two physiological conditions (development and abiotic stress), and (4) TF and target chromatin comodification (Marbach et al, 2012) information inferred from genome-wide chromatin immunoprecipitation (ChIP)-chip experiments of 13 modification types (Supplemental Table S1). We selected these data because they are representative of and highly complementary to gene regulation relationships (Walhout, 2006;Marbach et al, 2012). To reduce false positives from these high-throughput data, we adopted a series of scoring strategies to remove unreliable gene association data (for more details, see "Materials and Methods" and Supplemental Figs.…”
Section: Assembly Of An Integrated Gene Network Of Arabidopsismentioning
confidence: 99%
“…In a network context, hub genes are attributed the important function of providing crosstalk between different processes (Barabási and Oltvai, 2004). To delineate the hub genes in the ChIP gene regulatory network, a random TF-gene target distribution was built ( Figure 2A) by randomizing the relationships between TFs and potential target genes while preserving the number of potential target genes per TF (Marbach et al, 2012). Based on the 99th percentile values of the randomized distributions, we defined the 1174 potential target genes that are bound by eight TFs or more as target hubs.…”
Section: Detection Of Hub Targets and Hot Regionsmentioning
confidence: 99%
“…Information on protein-protein interactions, microRNA (miRNA)-target interactions, and gene expression profiles has been harnessed for the identification of master regulators and network motifs (Cheng et al, 2011;Gerstein et al, 2012) and for inferring gene regulatory networks and predictive models of gene expression levels of target genes (Marbach et al, 2012;Van Nostrand and Kim, 2013). Ferrier et al (2011) and Mejia-Guerra et al (2012) have already generated an overview of the available TF profiling studies in Arabidopsis.…”
Section: Introductionmentioning
confidence: 99%
“…These methods include conditional information (13,14), correlation coefficient, machine learning (15), and statistical models (16). Recently, heterogeneous data integration of promoter sequence and gene expression profiles has also been used to infer gene regulation patterns (17,18).…”
mentioning
confidence: 99%