| Literature DB >> 23268561 |
Zhen Wang1, Kan He, Qishan Wang, Yumei Yang, Yuchun Pan.
Abstract
BACKGROUND: MicroRNAs (miRNAs) are a class of small non-coding RNAs that regulate gene expression by targeting mRNAs for translation repression or mRNA degradation. Although many miRNAs have been discovered and studied in human and mouse, few studies focused on porcine miRNAs, especially in genome wide.Entities:
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Year: 2012 PMID: 23268561 PMCID: PMC3545972 DOI: 10.1186/1471-2164-13-729
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Performance of the pre-miRNAs classifier on test sets.
| Real | 40 | 100% | |
| Pseudo | 1000 | 91.20% |
Test set represents positive and negative set used to test the power of the pre-miRNAs classifier. Type represents the classification of the test set. Size is the number of the real or pseudo pre-miRNAs contained in test set. Accuracy is the percentage of the real or pseudo correctly recognized by pre-miRNAs classifier.
Figure 1ROC curve for the pre-miRNAs classifier on the test set. The curve with more areas has better performance of the classifier. It showed the classifier reached a well performance.
Figure 2Flowchart of the porcine pre-miRNA prediction procedure.
Figure 3The composition of each set including the training set (TR-S), testing set (TE-S1 and TE-S2) and predictive set (PR-S). 184 real and pseudo porcine pre-miRNAs are randomly extracted from positive set (224 known real porcine pre-miRNAs) and negative set (5677 porcine CDS), respectively, and then they form into the training set. The remaining 40 real porcine pre-miRNAs compose the test set 1 (TE-S1). 1000 pseudo pre-miRNAs from the remaining negative set are randomly selected as test set 2 (TE-S2). Both TE-S1 and TE-S2 are used to test the performance of the SVM-based pre-miRNAs classifier. The predicting set (PR-S) is constructed by the porcine genome sequence fragments passed the pre-filter parameters of secondary structure features.