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Volume 14 Supplement 2

Selected articles from ISCB-Asia 2012

miRNA-target prediction based on transcriptional regulation

Abstract

Background

microRNAs (miRNAs) are tiny endogenous RNAs that have been discovered in animals and plants, and direct the post-transcriptional regulation of target mRNAs for degradation or translational repression via binding to the 3'UTRs and the coding exons. To gain insight into the biological role of miRNAs, it is essential to identify the full repertoire of mRNA targets (target genes). A number of computer programs have been developed for miRNA-target prediction. These programs essentially focus on potential binding sites in 3'UTRs, which are recognized by miRNAs according to specific base-pairing rules.

Results

Here, we introduce a novel method for miRNA-target prediction that is entirely independent of existing approaches. The method is based on the hypothesis that transcription of a miRNA and its target genes tend to be co-regulated by common transcription factors. This hypothesis predicts the frequent occurrence of common cis-elements between promoters of a miRNA and its target genes. That is, our proposed method first identifies putative cis-elements in a promoter of a given miRNA, and then identifies genes that contain common putative cis-elements in their promoters. In this paper, we show that a significant number of common cis-elements occur in ~28% of experimentally supported human miRNA-target data. Moreover, we show that the prediction of human miRNA-targets based on our method is statistically significant. Further, we discuss the random incidence of common cis-elements, their consensus sequences, and the advantages and disadvantages of our method.

Conclusions

This is the first report indicating prevalence of transcriptional regulation of a miRNA and its target genes by common transcription factors and the predictive ability of miRNA-targets based on this property.

Background

microRNAs (miRNAs) are tiny endogenous RNAs which occur in animals and plants and that direct the post-transcriptional regulation of target mRNAs for degradation or translational repression via binding to the 3'UTRs and the coding exons [1–4]. More than 1,500 miRNA genes have been identified in the human genome [5]. Computational predictions have shown that miRNAs may directly regulate 20-30% of protein-coding genes [6, 7], and, on average, each miRNA can regulate the expression of several hundred genes [8]. Therefore, miRNAs are regarded as important regulators for cell differentiation, proliferation/growth, mobility, and apoptosis [9–11].

To gain insight into the biological role of miRNAs, it is essential to identify the full repertoire of mRNA targets (target genes). A number of computer programs have been developed for miRNA-target prediction [12]. These programs essentially perform two steps. First, they identify potential binding sites in 3'UTRs, which are recognized by the seed region of a given miRNA according to specific base-pairing rules. The seed region is defined as the consecutive stretch of 7 nucleotides starting from either the first or the second nucleotide at the 5' end of a miRNA. Note that they do not take potential binding sites in coding exons into consideration. Second, they evaluate cross-species conservation of the potential binding sites, and regard mRNAs with high conservation as putative target genes. This step successfully reduces many false positive predictions. However, it is increasingly evident that many non-conserved binding sites are also functional [13].

Accordingly, several programs that do not rely on cross-species conservation have been developed. These programs employ novel features in addition to base-pairing rules in seed regions. Kim et al. [14] and Yousef et al. [15] introduced various types of features observed in downstream seed regions (out-seed regions), e.g. structural, thermodynamic and positional features. Robins et al. [16] and Kertesz et al. [17] incorporated mRNA secondary structure as a measure of accessibility to miRNA-target binding sites in their prediction programs. Wang & Naqa [18] and Gennarino et al. [19] proposed integration of gene expression data into their prediction programs. Nonetheless, almost all the programs had region-limited view of miRNA activity, that is, they focused on potential binding sites in 3'UTRs of mRNAs only.

We introduce here a novel method for miRNA-target prediction that is completely different from existing approaches. The method is based on the hypothesis that transcription of a miRNA and its target genes tends to be co-regulated by common transcription factors (Figure 1). This hypothesis is supported by several lines of evidence, such as the observation that the miRNA miR-17-5p and its target gene E2F1 are both transcriptionally activated by c-Myc in human cells [20]. Marco et al. [21] reported that pairs of genes with shared cis-element showed, on average, a higher degree of co-expression than those with no common cis-element (however, the reverse did not hold true). Therefore, this hypothesis predicts that common cis-elements may occur occasionally between promoters of a miRNA and its target genes. That is, the proposed method first identifies putative cis-elements in the promoter of a given miRNA, and then identifies genes that have similar putative cis-elements in their promoters. We adopted human as a model organism because human has the most comprehensive miRNA-target data and genome annotations [22–24].

Figure 1
figure 1

Schematic diagram of our hypothesis. Filled rectangles indicate cis-elements in promoters. Circles indicate transcription factors, and transcription factor x' binds to cis-element x. Cis-element 2 is common in both miRNA and target gene promoters, while cis-elements 1 and 3 are specific in target and miRNA genes, respectively. In this figure, all transcription factors are regarded as activators. (A) In a case that transcription factor 1' binds to cis-element 1, only the target gene is transcribed. (B) In a case that transcription factor 2' binds to cis-element 2, both the miRNA and the target genes are transcribed. The miRNA subsequently downregulates the expression of the target gene after several transportation and processing steps. In a case that transcription factor 3' binds to cis-element 3, the expression of genes whose promoters contain cis-element 3 will be downregulated by the miRNA.

In terms of genomic organization, miRNAs can be categorized into two classes, namely, intragenic and intergenic miRNAs [25]. Intragenic miRNAs are located within other transcriptional units (host genes). Rodriguez et al. [26] proposed that such miRNAs are transcribed in parallel with their host genes, suggesting that they share promoters with their host genes. In contrast, intergenic miRNAs are located between other transcriptional units and therefore have their own transcriptional units and promoters. Lee et al. [27] verified that they are first transcribed as long primary transcripts (pri-miRNAs) by RNA polymerase II. These long pri-miRNAs are then processed into pre-miRNAs and mature miRNAs. Intergenic miRNAs occasionally form a cluster, and these can be simultaneously transcribed as a single polycistronic transcript [28]. Short distances between consecutive intergenic miRNA loci are hallmarks of polycistronic transcription.

We discuss here two questions. (1) Are there common cis-elements between promoters of a miRNA and its target genes? (2) Is it possible to predict miRNA-target genes based on common cis-elements? First, we found that a significant number of common cis-elements were observed in ~28% of experimentally supported miRNA-target data. Second, we demonstrate the statistical significance of the predictive ability of our method. Finally, we discuss the random background resulting from common cis-elements, consensus sequences of these elements, and the advantages and disadvantages of our method. This is the first report indicating prevalent transcriptional regulation of a miRNA and its target genes by common transcription factors and the potential to predict miRNA targets based on this property.

Results and discussion

Finding common cis-elements

For each set of miRNA-target data, we detected a set of common cis-elements between promoters of the miRNA and its target gene, and evaluated its statistical significance. As a result, we observed at least one common cis-element in 73 (73/97) of the intragenic miRNA-target data and 62 (62/110) of the intergenic miRNA-target data. Among these, 32 (32/97) of the intragenic miRNA-target data and 25 (25/110) of the intergenic miRNA-target data were found to be statistically significant. That is, we observed a statistically significant number of common cis-elements in 57 (57/207) of the miRNA-target data. This corresponds to 27.5% of the data, and clearly shows the prevalence of transcriptional regulation of a miRNA and its target gene by common transcription factors. Although pairs of genes with common cis-elements show, on average, a higher degree of co-expression than those without, gene pairs with higher degrees of expression correlation do not have significantly greater numbers of common cis-elements [21]. Thus, there is a possibility that a greater fraction of the miRNA-target data is actually co-expressed.

Why were common cis-elements so frequently observed?

We found that promoters of miRNAs and target genes were well conserved (Figure 2). On average, 641 and 581 columns were conserved in multiple sequence alignments of miRNA and target gene promoters, respectively. In contrast, only an average of 357 columns were conserved in multiple sequence alignments of promoters of human protein coding genes from DBTSS. This reflects an enrichment of functional sites in promoters of miRNAs and target genes, and may suggest more complex regulation of these promoters at the transcription level.

Figure 2
figure 2

Distribution of number of conserved columns between the five mammals (human, chimp, mouse, rat and dog) in multiple sequence alignments of respective promoters. The multiple sequence alignments, which were 2,200 bp long, were obtained from the UCSC Genome Browser.

Are there consensus sequences between common cis-elements?

We assigned common cis-elements in the miRNAtarget data to matrix models of transcription factor binding sites in JASPAR CORE database Ver.3 [29]. We also assigned cis-elements in promoters of human protein coding genes of DBTSS to JASPAR matrix models. Here, we used the jaspscan program (with 'matrix score' threshold set to ≥ 80) provided by EMBOSS-6.1.0 [30] for these assignments. Figure 3 shows two frequency distributions of the JASPAR matrix models to which we assigned the common cis-elements and cis-elements of DBTSS protein-coding gene promoters. The Kendall rank correlation test [31] revealed that the two distributions in Figure 3 were significantly correlated (z-score: +4.3), which indicates that there are no consensus sequences that are specific to common cis-elements.

Figure 3
figure 3

Two frequency distributions of JASPAR matrix models to which we assigned the common cis -elements and cis -elements from DBTSS protein-coding gene promoters. JASPAR matrix models are ranked by the latter frequencies, and are sorted in ascending rank order along the x axis.

Predicting miRNA-target

We applied our method to 155 mature miRNAs in the prepared miRNA-target data. For comparative purposes, we also applied two existing methods, mi-Randa (Sep. 2008 Rel.) [32] and RNAhybrid Ver.2.1 [33], to the same data. These two methods search for potential binding sites in 3'UTRs of mRNAs using the seed region of a given mature miRNA according to specific base-pairing rules. Note that they do not rely on cross-species conservation of potential binding sites as in our method. However, they still have region-limited view of miRNA activity, that is, they do not take potential binding sites in coding exons into consideration. We applied the programs with default parameter sets. A threshold of RNAhybrid, 'minimum free energy', was ≤ −25.0. To test the programs, we applied the collection of 3'UTR sequences used in the miRNA-target prediction program, TargetScan Rel.4.0 [6]. To allow fair comparison with our method, we used only the 3'UTR sequences corresponding to all human protein coding genes of DBTSS (14,728 genes).

Figure 4 shows the prediction accuracy of the respective methods. Our method successfully predicted miRNA-targets in 50 of the data with an average of 2,204 predictions for each miRNA. These numbers will increase if we allow mismatches and gaps to find putative and common cis-elements in promoters (see 'Identifying putative cis-elements' and 'Detecting common cis-elements' in 'Methods' for detailed information). In contrast, miRanda predicted miRNA-targets in 68 of the data with an average of 3,332 predictions for each miRNA. RNAhybrid predicted miRNA-targets in 63 of the data with an average of 3,303 predictions for each miRNA. These numbers will increase if they focus on potential binding sites in coding exons of mRNAs as well as 3'UTRs.

Figure 4
figure 4

Prediction accuracy of respective methods for the 155 miRNAs examined. 'method A + method B' indicates a combination of method A and B. Combination results were calculated by intersecting the target genes predicted by A and B.

It is possible to predict miRNA-targets based on common cis-elements

Although the predictive ability of our method is not particularly high, its prediction accuracy is comparable to that of miRanda or RNAhybrid (Figure 4). We evaluated statistical significances of their prediction abilities by using the binominal test [34], and found that p -value of our method was 5.69 × 10−8 while those of miRanda and RNAhybrid were 1.09 × 10−10 and 2.00 × 10−8, respectively. Those clearly show potential to predict miRNA-targets based on common cis-elements.

Advantages of our method

The main advantage of our method is that its prediction basis is significantly different from those of existing approaches. Combining existing methods results in only a minor decrease in both numbers of predictions and true positives, while a combination of existing methods and our method can drastically reduce both of these metrics (Figure 4). This is due to the different theoretical basis of the miRNA-target prediction; that is, our method focuses on promoter elements shared between miRNA and its target gene, while existing methods focus on miRNA-target binding sites. Our method provides a novel basis for miRNA-target prediction, which is entirely independent of cross-species conservation of miRNA-target binding sites. The data prepared contains 15 pairs of miRNA and its target gene the binding sites of which were known not to be conserved between related species [12]. Table 1 shows the prediction accuracy of our method for the 15 pairs. Our method correctly predicted 5 pairs, and its true positive rate (5/15) is comparable to that observed in Figure 4 (50/155). Moreover, while the existing methods focus on potential binding sites in 3'UTRs, not in coding exons, our method is entirely independent of their locations. Another advantage of our method is that it does not include learning steps. Thus, it does not require training data, and it is easy to apply it to other species. Although our method requires frequency distributions of the background incidence of common cis-elements, the same distributions should be applicable to other mammals whose genome compositions (e.g. GC contents) are similar to that of human.

Table 1 Prediction accuracy of our method for miRNA-target data whose binding sites are not conserved between related species.

Disadvantages of our method

The main disadvantage of our method is that it includes promoter determination steps. This disadvantage is particularly an issue in cases of intergenic miRNAs that have their own promoters. Since currently available data of intergenic miRNAs are premiRNAs, not primiRNAs, TSSs cannot be exactly defined to determine their promoters. Thus, we simply designated their promoters as the genomic regions upstream from the 5' ends of the intergenic pre-miRNAs. This procedure occasionally fails to capture promoters, especially in cases of miRNAs containing introns. The reduced proportion of statistically significant common cis-elements in intergenic miRNA-target data (25/110) compared to intragenic miRNA-target data (32/97) may be a result of this issue. Thus, we examined the cross-species conservation of our intergenic miRNA promoter designations (Figure 5). Figure 5 shows the widespread moderate conservation over the [−1400, −1] region, where +1 is the 5' end of the intergenic pre-miRNAs. This indicates that our procedure captured the promoter in many cases. Nevertheless, it will be essential to accumulate intergenic pri-miRNA data to improve the accuracy of our method.

Figure 5
figure 5

Cross-species conservation of intergenic miRNA promoters. Conservation was evaluated by using % identity in multiple sequence alignments between human, chimp, mouse, rat and dog. Multiple sequence alignments were obtained from the UCSC Genome Browser. For comparison, cross-species conservations of intragenic miRNA promoters and protein coding gene promoters are shown.

For which functional categories of target genes is our method effective/ineffective?

We checked Gene Ontology (GO) terms [35] of target genes by using Uniprot [36], and calculated the success rate of miRNA-target prediction by our method for every GO term. Since GO terms have hierarchical relationships with each other, we also checked all the parent terms, which are indirectly associated with GO terms of target genes. Table 2 summarizes lists of GO terms ranked according to the success rate of miRNA-target prediction by our method. That is, target genes which have these terms tend (not) to be co-regulated with corresponding miRNAs at the transcriptional level. A list of GO terms with high success rates (Table 2 upper) contained a high frequency of terms associated with regulation, response and development. These terms are consistent with the typical biological function of miRNAs. On the other hand, a list of GO terms with low success rates (Table 2 lower) contained a high frequency of terms associated with system process and cell cycle. System process represents a steady process. Cell cycle is a periodic biological process and also represents a steady process. Table 2 also provides information on the reliability of miRNA-target prediction by our method. If the predicted target genes have GO terms associated with regulation, response and development, then the prediction is considered reliable, whereas if the predicted target genes have GO terms associated with system process and cell cycle, then the prediction is considered unreliable.

Table 2 Lists of GO terms ranked according to success rate of miRNA-target prediction by our method.

Availability

All of the data described in this paper are available from the author on request. We applied our method to all human miRNAs in miRBase rel.12.0, and the results are also available.

Methods

Finding common cis-elements

We collected experimentally supported human miRNA-target data, and determined the associated promoter regions. Next, we identified potential cis-elements in each promoter based on cross-species conservation, and selected those that were common between the promoters of a particular miRNA and its target genes.

Collecting miRNA-target data

We collected a set of experimentally supported human miRNA-target data from TarBase ver.5.0 [22]. TarBase contains ~1,100 entries of human miRNA-target data, which comprise a collection of pairs of mature miRNAs and their target genes. From this data set, we selected 166 entries that had direct experimental support, e.g. reporter gene assay. By using miRBase rel.12.0 [5] and the UCSC Genome Browser [24], we identified genomic loci of the miRNAs and the target genes in the human genome (hg18). Since miRBase consists of pre-miRNA data, we assigned mature miRNAs in TarBase to pre-miRNAs of miRBase based on their names and sequences. In some cases, a mature miRNA was assigned to multiple pre-miRNAs. We discarded mature miRNAs that were not assigned to any premiRNAs. In summary, our filtered miRNA-target data set consisted of 71 mature miRNAs, 84 premiRNAs and 117 target genes. The data contained 155 pairs of mature miRNAs and their target genes, and 207 pairs of pre-miRNAs and their target genes.

Determining promoter regions

We classified miRNAs from the miRNA-target data into intragenic and intergenic subsets to identify their promoter regions. We searched for host genes whose genomic loci overlapped with those of the miRNAs on the same strands. Genomic loci of host genes were examined by using five human (hg18) gene annotation tracks (UCSC Genes, RefSeq Genes, human mRNA from GenBank, H-Invitational, and Ensembl Genes) from the UCSC Genome Browser. In cases where host genes were found, the corresponding miRNAs were classified as intragenic miR-NAs. The remaining miRNAs were classified as intergenic miRNAs. Six miRNAs (hsa-let-7a-3, hsalet-7b, has-mir-21, hsa-mir-24-2, hsa-mir-34a, hsamir-129-1) were classified as intergenic miRNAs despite their intersection with host genes, because the fractions of their overlap were relatively small. As a result, from the 207 pairs of pre-miRNAs and their target genes, 97 were classified as intragenic and 110 were classified as intergenic.

Intragenic miRNA promoters were defined as the genomic region −2000/+ 200 bp from the transcription start site (TSS) of the host gene (where +1 is TSS). Genomic locations of TSSs were obtained from DBTSS Ver.6.0 [23]. In cases where alternative TSSs were reported, we selected the TSS for which the 'Number of confident cDNAs' was maximal. If this number was small (≤ 3), we adopted the most upstream TSS provided either by RefSeq [37] or UCSC Genes.

Intergenic miRNA promoters were defined as the 2,200 bp genomic region upstream from the 5' end of the intergenic pre-miRNAs. In cases where the intergenic miRNAs form a cluster, we identified the most upstream miRNA within the cluster to assign a promoter of a polycistronic transcript. We regarded intergenic miRNAs as clustered, when distances to neighboring miRNAs were ≤ 5,000 bp

We defined the promoters of miRNA target genes using the same approach as that described for host genes above. We discarded coding regions from all promoters according to annotations of UCSC Genes.

Identifying putative cis-elements

We identified putative cis-elements in promoters of miRNA and target genes based on cross-species conservation. We first extracted the promoter regions from multiple sequence alignments of 28 vertebrate genomes as provided by the UCSC Genome Browser. Next, we identified ≥ 6 nt regions that were completely conserved between human, chimp, mouse, rat and dog, and defined these as putative cis-elements.

Detecting common cis-elements

By comparing putative cis-elements between promoters of a miRNA and its target gene, we searched for ≥ 6 nt identical subsequences, and defined these as common cis-elements. To evaluate the statistical significance of the subsequences, we determined the frequency distribution of common cis-elements that occur by chance alone by applying the following procedure. First, we prepared two sets of TSSs from DBTSS. The former consisted of TSSs whose promoters shows a cross-species conservation distribution similar to that of the miRNA promoters, while the latter consisted of TSSs whose promoters shows a cross-species conservation distribution similar to that of the target gene promoters. Next, we randomly selected a pair of TSSs: one from the former and the other from the latter. Then, we repeated this application 100,000 times. For each pair of TSSs, we determined promoter regions [−2000, +200], and detected common cis-elements according to the above procedure. Then, we recorded the frequency of their incidence for every sequence length. Finally, we summarized these for all pairs of TSSs, and obtained frequency distributions of common cis-elements that occurred by chance for every sequence length. The Bonferroni method was applied to correct for multiple testing [38]. A set of common cis-elements between promoters of a miRNA and its target gene was considered statistically significant where its occurrence distribution by chance was 5% or less.

Predicting miRNA-target

We developed a method for miRNA-target prediction as described below. Note that the method does not rely on any features of binding sites in 3'UTRs and coding exons. (1) The method assigned a given mature miRNA to a pre-miRNA, and identified its genomic locus. Then, the method determined a promoter region of the pre-miRNA, and identified putative cis-elements. See 'Collecting miRNA-target data' ~ 'Identifying putative cis-elements' for detailed information. (2) For all protein coding genes of an organism from which the miRNA originates, the method determined their promoter regions, and identified putative cis-elements. Since we adopted human as a model organism, the method identified putative cis-elements in 14,728 promoters of all human protein coding genes from DBTSS. See 'Determining promoter regions' 'Identifying putative cis-elements' for detailed information. (3) For each of the protein coding genes, the method compared its putative cis-elements with those of the miRNA, and detected common cis-elements. Then, the method evaluated statistical significance of an occurrence distribution of the common cis-elements, and regarded a protein coding gene whose occurrence distribution was significant as a target. See 'Detecting common cis-elements' for detailed information. In step (1), a mature miRNA was sometimes assigned to multiple pre-miRNAs. In such cases, we applied the method to each of the pre-miRNAs, and took the union of all predicted target genes.

Acknowledgements

This work was supported by KAKENHI (Grantin-Aid for Scientific Research) No.221S0002 and No.22240032 from the Ministry of Education, Culture, Sports, Science and Technology of Japan.

References

  1. Zamore PD, B H: Ribo-gnome: the big world of small RNAs. Science. 2005, 309: 1519-1524. 10.1126/science.1111444.

    Article  CAS  PubMed  Google Scholar 

  2. Shyu AB, Wilkinson MF, van Hoof A: Messenger RNA regulation: to translate or to degrade. EMBO J. 2008, 27: 471-481. 10.1038/sj.emboj.7601977.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  3. Rigoutsos I: New tricks for animal microRNAs: Targeting of amino acid coding regions at conserved and nonconserved sites. Cancer Res. 2009, 69: 3245-3248. 10.1158/0008-5472.CAN-09-0352.

    Article  CAS  PubMed  Google Scholar 

  4. Pasquinelli AE: MicroRNAs and their targets: recognition, regulation and an emerging reciprocal relationship. Nat Rev Genet. 2012, 13: 271-282.

    CAS  PubMed  Google Scholar 

  5. miRBase. [http://www.mirbase.org/]

  6. Lewis BP, Burge CB, Bartel DP: Conserved seed pairing, often flanked by adenosines, indicates that thousands of human genes are microRNA targets. Cell. 2005, 120: 15-20. 10.1016/j.cell.2004.12.035.

    Article  CAS  PubMed  Google Scholar 

  7. Xie X, Lu J, Kulbokas EJ, Golub TR, Mootha V, Lindblad-Toh K, Lander ES, Kellis M: Systematic discovery of regulatory motifs in human promoters and 3'UTRs by comparison of several mammals. Nature. 2005, 434: 338-345. 10.1038/nature03441.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  8. Tian Z, Greene AS, Pietrusz JL, Matus IR, Liang M: MicroRNA-target pairs in the rat kidney identified by microRNA microarray, proteomic, and bioinformatic analysis. Genome Res. 2008, 18: 404-411. 10.1101/gr.6587008.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  9. Chang TC, Mendell JT: microRNAs in vertebrate physiology and human disease. Annu Rev Genomics Hum Genet. 2007, 8: 215-239. 10.1146/annurev.genom.8.080706.092351.

    Article  CAS  PubMed  Google Scholar 

  10. Stefani G, Slack FJ: Small non-coding RNAs in animal development. Nat Rev Mol Cell Biol. 2008, 9: 219-230. 10.1038/nrm2347.

    Article  CAS  PubMed  Google Scholar 

  11. Zhang C: MicroRNomics: a newly emerging approach for disease biology. Physiol Genomics. 2008, 33: 139-147. 10.1152/physiolgenomics.00034.2008.

    Article  PubMed  Google Scholar 

  12. Sethupathy P, Megraw M, Hatzigeorgiou AG: A guide through present computational approaches for the identification of mammalian microRNA targets. Nat Methods. 2006, 3: 881-886. 10.1038/nmeth954.

    Article  CAS  PubMed  Google Scholar 

  13. Farh KK, Grimson A, Jan C, Lewis BP, Johnston WK, Lim LP, Burge CB, Bartel DP: The widespread impact of mammalian MicroRNAs on mRNA repression and evolution. Science. 2005, 310: 1817-1821. 10.1126/science.1121158.

    Article  CAS  PubMed  Google Scholar 

  14. Kim SK, Nam JW, Rhee JK, Lee WJ, Zhang BT: mi-Target: microRNA target gene prediction using a support vector machine. BMC Bioinform. 2006, 7: 411-10.1186/1471-2105-7-411.

    Article  Google Scholar 

  15. Yousef M, Jung S, Kossenkov AV, Showe LC, Showe MK: Naïve Bayes for microRNA target predictions-machine learning for microRNA targets. Bioinform. 2007, 23: 2987-2992. 10.1093/bioinformatics/btm484.

    Article  CAS  Google Scholar 

  16. Robins H, Li Y, Padgett RW: Incorporating structure to predict microRNA targets. Proc Natl Acad Sci USA. 2005, 102: 4006-4009. 10.1073/pnas.0500775102.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  17. Kertesz M, Iovino N, Unnerstall U, Gaul U, Segal E: The role of site accessibility in microRNA target recognition. Nat Genet. 2007, 39: 1278-1284. 10.1038/ng2135.

    Article  CAS  PubMed  Google Scholar 

  18. Wang X, El Naqa IM: Prediction of both conserved and nonconserved microRNA targets in animals. Bioinform. 2008, 24: 325-332. 10.1093/bioinformatics/btm595.

    Article  Google Scholar 

  19. Gennarino VA, Sardiello M, Avellino R, Meola N, Maselli V, Anand S, Cutillo L, Ballabio A, Banfi S: MicroRNA target prediction by expression analysis of host genes. Genome Res. 2009, 19: 481-490.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  20. O'Donnell KA, Wentzel EA, Zeller KI, Dang CV, Mendell JT: c-Myc-regulated microRNAs modulate E2F1 expression. Nature. 2005, 435: 839-843. 10.1038/nature03677.

    Article  PubMed  Google Scholar 

  21. Marco A, Konikoff C, Karr TL, Kumar S: Relationship between gene co-expression and sharing of transcription factor binding sites in Drosophila melanogaster. Bioinform. 2009, 25: 2473-2477. 10.1093/bioinformatics/btp462.

    Article  CAS  Google Scholar 

  22. TarBase. [http://www.microrna.gr/tarbase]

  23. DBTSS home. [http://dbtss.hgc.jp/]

  24. The UCSC Genome Browser database. [http://genome.ucsc.edu/]

  25. Sethupathy P, Megraw M, Barrasa MI, Hatzigeorgiou AG: Computational Identification of Regulatory Factors Involved in MicroRNA transcription. Lecture Notes in Computer Science. 2005, 3746: 457-468. 10.1007/11573036_43.

    Article  Google Scholar 

  26. Rodriguez A, Griffiths-Jones S, Ashurst JL, Bradley A: Identification of mammalian microRNA host genes and transcription units. Genome Res. 2004, 14: 1902-1910. 10.1101/gr.2722704.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  27. Lee Y, Kim M, Han J, Yeom KH, Lee S, Baek SH, Kim VN: MicroRNA genes are transcribed by RNA polymerase II. EMBO J. 2004, 23: 4051-4060. 10.1038/sj.emboj.7600385.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  28. Lee Y, Jeon K, Lee JT, Kim S, Kim VN: MicroRNA maturation: stepwise processing and subcellular localization. EMBO J. 2002, 21: 4663-4670. 10.1093/emboj/cdf476.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  29. The JASPAR database. [http://jaspar.genereg.net/]

  30. EMBOSS homepage. [http://emboss.sourceforge.net/]

  31. Kanji GK: 100 Statistical Tests. 2006, London: SAGE Publications

    Google Scholar 

  32. John B, Enright AJ, Aravin A, Tuschl T, Sander C, Marks DS: Human MicroRNA targets. PLoS Biol. 2004, 2: e363-10.1371/journal.pbio.0020363.

    Article  PubMed Central  PubMed  Google Scholar 

  33. Rehmsmeier M, Steffen P, Hochsmann M, Giegerich R: Fast and effective prediction of microRNA/target duplexes. RNA. 2004, 10: 1507-1517. 10.1261/rna.5248604.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  34. The R project for statistical computing. [http://www.r-project.org/]

  35. The Gene Ontology. [http://www.geneontology.org/]

  36. UniProt. [http://www.uniprot.org/]

  37. NCBI Reference Sequence (RefSeq). [http://www.ncbi.nlm.nih.gov/RefSeq/]

  38. Miller RGJ: Simultaneous Statistical Inference. 1981, New York: Springer Verlag

    Book  Google Scholar 

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Declarations

The publication costs for this article were funded by the above grants.

This article has been published as part of BMC Genomics Volume 14 Supplement 2, 2013: Selected articles from ISCB-Asia 2012. The full contents of the supplement are available online at http://www.biomedcentral.com/bmcgenomics/supplements/14/S2.

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Correspondence to Tetsushi Yada.

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Authors' contributions

The study was originally conceived and was designed by TY. TF prepared the data, implemented the method, and carried out the experiments. TF interpreted the results of the experiments, and wrote the initial draft of the manuscript. All authors revised and approved the final manuscript.

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Fujiwara, T., Yada, T. miRNA-target prediction based on transcriptional regulation. BMC Genomics 14 (Suppl 2), S3 (2013). https://doi.org/10.1186/1471-2164-14-S2-S3

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