Identification of putative miR direct targets
PANCANCER cohort with 12 disease types (Primary solid tumor)
22 February 2013  |  analyses__2013_02_22
Maintainer Information
Citation Information
Maintained by Sachet Shukla (Broad Institute)
Cite as Broad Institute TCGA Genome Data Analysis Center (2013): Identification of putative miR direct targets. Broad Institute of MIT and Harvard. doi:10.7908/C10K26SG
Overview
Introduction

This pipeline infers putative direct gene targets of miRs based on miR and gene expression profiles across multiple samples.

Summary

This pipeline use a relevance network approach to infer putative miR:mRNA regulatory connections. All miR:mRNA pairs that have correlations < -0.3 and have predicted interactions in three sequence prediction databases (Miranda, Pictar, Targetscan) define the final network.

Results
Overlap of miR:gene network with sequence prediction databases

Figure 1.  Get High-res Image Distribution of miR:gene pairs by the number of sequence prediction databases that predict an interaction between the two molecules. Miranda, Targetscan and Pictar are the three databases used in the analysis. Only miR:gene pairs that have correlation values less than the threshold are shown.

miR connectivity distribution

Figure 2.  Get High-res Image Summary of miR counts by the number of associated genes in the putative direct target network

Gene connectivity distribution

Figure 3.  Get High-res Image Summary of gene counts by the number of associated miRs in the putative direct target network

Significant miR:gene edges

Table 1.  Get Full Table List of miR:gene pairs with corr < -0.30 and prediction support in Miranda, Targetscan and Pictar

miR gene corr prediction databases miranda pictar targetscan total
hsa-mir-29b MLLT11 -0.46 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29b TDG -0.43 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29a TDG -0.42 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29a MYBL2 -0.42 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29b MFAP2 -0.42 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29a DNMT3B -0.4 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29b VASH2 -0.4 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29a MLLT11 -0.4 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29b DNMT3A -0.39 miranda,pictar,targetscan 1 1 1 3
hsa-mir-29b DNMT3B -0.38 miranda,pictar,targetscan 1 1 1 3
miR connections

Table 2.  Get Full Table All miR hubs with their associated genes in the putative direct target network.

Mir Number.of.Genes Genes
hsa-mir-29b 20 BLMH, COL2A1, COL4A2, COL4A5, DNMT3A, DNMT3B, EIF4E2, FAM130A1, GPX7, JARID2, MFAP2, MLLT11, MYBL2, TDG, TRIM37, TUBB, TUBB2A, TUBB2B, VASH2,FSTL1
hsa-mir-29a 13 BLMH, DNMT3A, DNMT3B, GPX7, JARID2, MFAP2, MLLT11, MYBL2, TDG, TRIM37, TUBB, VASH2,EIF4E2
hsa-mir-29c 8 DNMT3A, EIF4E2, GPX7, MFAP2, MLLT11, TUBB2B, VASH2,FSTL1
hsa-mir-9 2 LMNA,KCTD12
hsa-mir-26b 1 TMEM2
hsa-mir-183 1 MEF2C
hsa-mir-142-3p 1 HMGA2
hsa-mir-182 1 MMD
hsa-mir-30b 1 ECOP
hsa-mir-200c 1 ZEB1
Gene connections

Table 3.  Get Full Table All gene hubs with their associated miRs in the putative direct target network.

Gene Number.of.Mirs Mirs
EIF4E2 3 hsa-mir-29b, hsa-mir-29c,hsa-mir-29a
MFAP2 3 hsa-mir-29b, hsa-mir-29c,hsa-mir-29a
GPX7 3 hsa-mir-29b, hsa-mir-29c,hsa-mir-29a
VASH2 3 hsa-mir-29b, hsa-mir-29c,hsa-mir-29a
MLLT11 3 hsa-mir-29b, hsa-mir-29c,hsa-mir-29a
DNMT3A 3 hsa-mir-29b, hsa-mir-29c,hsa-mir-29a
FSTL1 2 hsa-mir-29c,hsa-mir-29b
MMD 2 hsa-mir-30c,hsa-mir-182
DNMT3B 2 hsa-mir-29b,hsa-mir-29a
JARID2 2 hsa-mir-29b,hsa-mir-29a
Methods & Data
Input

This section should list the files that were used as input.

  • Level 3 miR expression file = /xchip/cga/gdac-prod/tcga-gdac/jobResults/GDAC_MergeDataFilesPipeline/PANCAN12-TP/2599145/2.GDAC_MergeDataFiles.Finished/PANCAN12-TP.mirna__h_mirna_8x15kv2__unc_edu__Level_3__unc_DWD_Batch_adjusted__data.data.txt

  • Level 3 gene expression file = /xchip/cga/gdac-prod/tcga-gdac/jobResults/GDAC_MergeDataFilesPipeline/PANCAN12-TP/2599158/2.GDAC_MergeDataFiles.Finished/PANCAN12-TP.transcriptome__ht_hg_u133a__broad_mit_edu__Level_3__gene_rma__data.data.txt

  • miR:gene predicted interactions file = /xchip/cga/reference/miR_predictions/human_interactions.predicted.v2.txt

  • Miranda = microrna.org Aug 2010 release, Microcosm version 5

  • Pictar = version 1

  • Targetscan = release 5.2

Method

Pairwise Pearson correlations coefficients between all miR:gene pairs are first computed. All genes that have correlation values less than the user-defined threshold (-0.3) with a particular miR and have been predicted as targets of that miR in three sequence based prediction databases: Miranda##REF##10##REF##11 Pictar##REF##12##REF##13, TargetScan ##REF##14##REF##15##REF##16 are identified as putative direct targets of that miR. We infer a direct target miR:gene network which comprises all such putative direct associations.

  • threshold = -0.3

Download Results

This is an experimental feature. The full results of the analysis summarized in this report can be downloaded from the TCGA Data Coordination Center.

References
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