Abstract

BackgroundMicroRNAs (miRNAs) are short non-coding RNA molecules participating in post-transcriptional regulation of gene expression. There have been many efforts to discover miRNA precursors (pre-miRNAs) over the years. Recently, ab initio approaches obtain more attention because that they can discover species-specific pre-miRNAs. Most ab initio approaches proposed novel features to characterize RNA molecules. However, there were fewer discussions on the associated classification mechanism in a miRNA predictor.ResultsThis study focuses on the classification algorithm for miRNA prediction. We develop a novel ab initio method, miR-KDE, in which most of the features are collected from previous works. The classification mechanism in miR-KDE is the relaxed variable kernel density estimator (RVKDE) that we have recently proposed. When compared to the famous support vector machine (SVM), RVKDE exploits more local information of the training dataset. MiR-KDE is evaluated using a training set consisted of only human pre-miRNAs to predict a benchmark collected from 40 species. The experimental results show that miR-KDE delivers favorable performance in predicting human pre-miRNAs and has advantages for pre-miRNAs from the genera taxonomically distant to humans.ConclusionWe use a novel classifier of which the characteristic of exploiting local information is particularly suitable to predict species-specific pre-miRNAs. This study also provides a comprehensive analysis from the view of classification mechanism. The good performance of miR-KDE encourages more efforts on the classification methodology as well as the feature extraction in miRNA prediction.

Highlights

  • MicroRNAs are short non-coding RNA molecules participating in posttranscriptional regulation of gene expression

  • Most of the five measures are superior to triplet-support vector machine (SVM) and miPred, except that miPred delivers a higher %SP

  • Contribution of the classification mechanism We investigate the effect of using relaxed variable kernel density estimator (RVKDE) by separating two differences of miR-KDE to miPred: 1) introducing the four stem-loop features and 2) using RVKDE instead of SVM

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Summary

Introduction

MicroRNAs (miRNAs) are short non-coding RNA molecules participating in posttranscriptional regulation of gene expression. Ab initio approaches obtain more attention because that they can discover species-specific pre-miRNAs. Most ab initio approaches proposed novel features to characterize RNA molecules. One of the most extensively developed computational methods for miRNA detection is the comparative approach. The most straightforward method is to align unknown RNA sequences to known pre-miRNAs through NCBI BlastN [8]. Cross-species evolutionary conservation has been widely used to eliminate these false positives [11,12,13,14,15,16,17,18,19] Another well known method to identify novel pre-miRNAs is using conservation patterns based on a set of homology sequences [20,21,22]

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