Abstract

BackgroundMicroRNAs (miRNAs), short ~21-nucleotide RNA molecules, play an important role in post-transcriptional regulation of gene expression. The number of known miRNA hairpins registered in the miRBase database is rapidly increasing, but recent reports suggest that many miRNAs with restricted temporal or tissue-specific expression remain undiscovered. Various strategies for in silico miRNA identification have been proposed to facilitate miRNA discovery. Notably support vector machine (SVM) methods have recently gained popularity. However, a drawback of these methods is that they do not provide insight into the biological properties of miRNA sequences.ResultsWe here propose a new strategy for miRNA hairpin prediction in which the likelihood that a genomic hairpin is a true miRNA hairpin is evaluated based on statistical distributions of observed biological variation of properties (descriptors) of known miRNA hairpins. These distributions are transformed into a single and continuous outcome classifier called the L score. Using a dataset of known miRNA hairpins from the miRBase database and an exhaustive set of genomic hairpins identified in the genome of Caenorhabditis elegans, a subset of 18 most informative descriptors was selected after detailed analysis of correlation among and discriminative power of individual descriptors. We show that the majority of previously identified miRNA hairpins have high L scores, that the method outperforms miRNA prediction by threshold filtering and that it is more transparent than SVM classifiers.ConclusionThe L score is applicable as a prediction classifier with high sensitivity for novel miRNA hairpins. The L-score approach can be used to rank and select interesting miRNA hairpin candidates for downstream experimental analysis when coupled to a genome-wide set of in silico-identified hairpins or to facilitate the analysis of large sets of putative miRNA hairpin loci obtained in deep-sequencing efforts of small RNAs. Moreover, the in-depth analyses of miRNA hairpins descriptors preceding and determining the L score outcome could be used as an extension to miRBase entries to help increase the reliability and biological relevance of the miRNA registry.

Highlights

  • MicroRNAs, short ~21-nucleotide RNA molecules, play an important role in post-transcriptional regulation of gene expression

  • The performance of the strategy was assessed by retrieval of known miRNAs from hairpin structures identified in the genome of C. elegans

  • The data presented for the filtering protocols "Clustered" and "Similar" (Table 5) show that combined filtering on L score, genomic context and threshold filtering allows for compilation of a priority list of candidate miRNAs that is amenable to manual inspection and experimental verification

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Summary

Introduction

MicroRNAs (miRNAs), short ~21-nucleotide RNA molecules, play an important role in post-transcriptional regulation of gene expression. MicroRNAs (miRNAs) are ~21-nucleotide (nt) short, single stranded RNA molecules involved in post-transcriptional regulation of gene expression [1]. They are present in higher eukaryotes and some viral genomes [2]. Experimental identification of miRNAs was achieved through direct cloning and sequencing of small RNAs [5,6] Such relatively low-throughput screenings were biased towards abundantly or ubiquitously expressed miRNAs [6] and missed many miRNAs with restricted temporal or tissue-specific expression patterns [1]. This contributes to the functional diversification of miRNA genes for a considerable fraction of the known miRNA loci [17,18]

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