| Literature DB >> 18377655 |
Simon Moxon1, Vincent Moulton, Jan T Kim.
Abstract
BACKGROUND: Experimental identification of microRNA (miRNA) targets is a difficult and time consuming process. As a consequence several computational prediction methods have been devised in order to predict targets for follow up experimental validation. Current computational target prediction methods use only the miRNA sequence as input. With an increasing number of experimentally validated targets becoming available, utilising this additional information in the search for further targets may help to improve the specificity of computational methods for target site prediction.Entities:
Year: 2008 PMID: 18377655 PMCID: PMC2365947 DOI: 10.1186/1748-7188-3-3
Source DB: PubMed Journal: Algorithms Mol Biol ISSN: 1748-7188 Impact factor: 1.405
Figure 1Alignment of the Drosophila melanogaster let-7 miRNA to a cognate target site in the 3' UTR of the ab gene adapted from [21, Fig. 1].
Summary of UTR datasets
| 12,172 | UTR | 2,724,326 | |
| 11,277 | UTR | 4,612,168 | |
| 20,271 | UTR | 20,009,781 | |
| 27,685 | UTR | 30,673,888 | |
| 31,527 | cDNA | 46,447,255 |
"No. sequences" gives total number of unique sequences in this dataset; "Sequence type" gives the sequence type used (UTR or cDNA); "No. nucleotides" gives total number of nucleotides in the UTR set.
SBM scan summary obtained using a score threshold of 1
| 2 | 2 | 0 | ||
| 15 | 15 | 1708 | ||
| 7 | 7 | 123 | ||
| 4 | 4 | 0 | ||
| 4 | 4 | 0 | ||
| 8 | 8 | 23 | ||
| 15 | 15 | 28 | ||
| 3 | 3 | 0 | ||
| 3 | 3 | 0 | ||
| 4 | 4 | 0 | ||
| 3 | 3 | 0 | ||
| 5 | 5 | 0 | ||
| 6 | 6 | 0 | ||
| 1 | 1 | 0 | ||
| 2 | 2 | 0 | ||
| 2 | 3 | 1 |
"miRNA" gives miRBase miRNA identifier; "Validated targets" gives number of unique validated targets present in the starting alignment; "Recovered targets" gives number of validated targets in the input alignment that were recovered; "Predicted novel targets" gives number of candidate target sequences (other than the validated targets) predicted by the SBM method.
Leave one out analysis
| ⩾ | ||
| CG12487.3/223–241 | 0.946 | 94 |
| CG5185.3/279–297 | 1.000 | 34 |
| CG3096.3/152–170 | 1.000 | 34 |
| CG12487.3/250–268 | 1.000 | 34 |
| CG3166.3/1100–1118 | 0.951 | 76 |
| CG6096.3/103–121 | 1.000 | 34 |
| CG8346.3/78–96 | 0.966 | 58 |
| CG5185.3/334–352 | 1.000 | 34 |
| CG6494.3/447–465 | 0.919 | 155 |
| CG6096.3/24–42 | 1.000 | 34 |
| CG6096.3/68–86 | 0.961 | 65 |
| CG8328.3/63–81 | 0.773 | 2015 |
| CG3166.3/1586–1602 | 0.855 | 393 |
| CG3166.3/29–46 | 0.845 | 513 |
| CG3166.3/1294–1312 | 0.861 | 521 |
| ⩾ | ||
| ZK792.6/247–264 | 0.959 | 3561 |
| F38A6.1a/271–288 | 1.000 | 1708 |
| C18D1.1.1/526–542 | 0.906 | 10458 |
| ZK792.6/666–683 | 0.959 | 3522 |
| ZK792.6/458–475 | 0.929 | 7311 |
| F38A6.1a/133–150 | 0.874 | 19177 |
| C01G8.9a/21–38 | 0.850 | 23906 |
| ZK792.6/132–148 | 0.859 | 20570 |
| C01G8.9a/159–175 | 0.813 | 30895 |
| ZK792.6/190–207 | 0.807 | 41812 |
| C12C8.3a/693–709 | 0.791 | 39369 |
| C12C8.3a/742–757 | 1.000 | 1499 |
| ZK792.6/484–499 | 0.898 | 10232 |
| F11A1.3a/1007–1021 | 0.948 | 4658 |
| ZK792.6/343–361 | 0.955 | 4352 |
| ⩾ | ||
| CG6096.3/135–154 | 0.755 | 3118 |
| CG8328.3/27–45 | 1.000 | 8 |
| CG3096.3/33–52 | 0.929 | 161 |
| CG3096.3/138–157 | 0.877 | 473 |
| CG5185.3/46–65 | 0.960 | 64 |
| CG12487.3/188–208 | 0.820 | 1298 |
| CG12487.3/62–82 | 0.871 | 627 |
| CG6096.3/210–230 | 0.908 | 207 |
| ⩾ | ||
| ZK792.6/126–148 | 0.804 | 4970 |
| ZK792.6/187–207 | 0.552 | 132626 |
| ZK792.6/249–264 | 0.947 | 355 |
| ZK792.6/342–361 | 0.761 | 12552 |
| ZK792.6/460–475 | 0.858 | 2012 |
| ZK792.6/479–499 | 0.739 | 18375 |
| ZK792.6/665–683 | 0.726 | 15846 |
"target" gives validated target sequence accession/start-end; "miRNA" gives miRNA targeting that region; "⩾ LOO score" gives mean number of regions scoring equal to or greater than the left out sequence.
Leave several out analysis
| Mean score | 1.000 | 0.903 | 0.851 | 0.810 |
| Mean number returned | 1708 | 14869 | 18032 | 17225 |
| Mean score | 1.000 | 0.938 | 0.908 | 0.890 |
| Mean number returned | 28 | 273 | 509 | 138 |
Shows mean scores and mean number of regions scoring above maximal consistent threshold for alignments containing 15, 14, 8 and 7 validated targets.
Summary of results for the leave one out analysis
| ⩾ | ⩾ | ⩾ | ⩾ | ||||
| cel-let-7 | 0.903 | 14869 | 119 | 92332 | -15.46 | 60266 | 23992 |
| cel-miR-84 | 0.770 | 26677 | 106 | 190693 | -10.19 | 150137 | 48538 |
| dme-miR-7 | 0.938 | 273 | 159 | 8868 | -21.69 | 7227 | 2129 |
| dme-miR-4 | 0.890 | 745 | 131 | 11488 | -8.51 | 184134 | 5325 |
"miRNA" gives miRBase accession of the miRNA sequence; "LOO score" gives mean score of the targets left out of the SBM; "⩾ LOO score" gives mean number of regions scoring equal to or greater than the left out sequence; "miRanda(s)" gives raw score of the miRanda hit of lowest scoring target region; "⩾ miRanda(s)" gives number of regions with returned using the maximal consistent score threshold; "miRanda(e)" gives minimum free energy (MFE) of the miRanda hit of the least stable target region; "⩾ miRanda(e)" gives number of regions with returned using the maximal consistent MFE threshold; "⩾ miRanda(se)" gives number of regions with returned using the maximal consistent combined score and MFE threshold.