Abstract

BackgroundConfident identification of microRNA-target interactions is significant for studying the function of microRNA (miRNA). Although some computational miRNA target prediction methods have been proposed for plants, results of various methods tend to be inconsistent and usually lead to more false positive. To address these issues, we developed an integrated model for identifying plant miRNA–target interactions.ResultsThree online miRNA target prediction toolkits and machine learning algorithms were integrated to identify and analyze Arabidopsis thaliana miRNA-target interactions. Principle component analysis (PCA) feature extraction and self-training technology were introduced to improve the performance. Results showed that the proposed model outperformed the previously existing methods. The results were validated by using degradome sequencing supported Arabidopsis thaliana miRNA-target interactions. The proposed model constructed on Arabidopsis thaliana was run over Oryza sativa and Vitis vinifera to demonstrate that our model is effective for other plant species.ConclusionsThe integrated model of online predictors and local PCA-SVM classifier gained credible and high quality miRNA-target interactions. The supervised learning algorithm of PCA-SVM classifier was employed in plant miRNA target identification for the first time. Its performance can be substantially improved if more experimentally proved training samples are provided.

Highlights

  • MicroRNAs are a large family of small endogenous noncoding RNAs with a length of 20–24 nucleotides

  • A same number of negatives are randomly picked from the result sets supported by the three single predictors, which represent less credible ones gained by only one predictor

  • 99 experimentally validated miRNA-target interactions are employed as reference set to evaluate the performance of online predictor

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Summary

Introduction

MicroRNAs (miRNAs) are a large family of small endogenous noncoding RNAs with a length of 20–24 nucleotides (nt) They have significant regulatory functions in plants and animals [1]. Pre-miRNAs are processed from the stem-loop transcripts mainly by RNase III endonucleases enzyme Drosha or Dicer-like 1 (DCL1) [3,4]. Some computational miRNA target prediction methods have been proposed for plants, results of various methods tend to be inconsistent and usually lead to more false positive. To address these issues, we developed an integrated model for identifying plant miRNA–target interactions

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