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      Improving the prediction of human microRNA target genes by using ensemble algorithm.

      Febs Letters
      Algorithms, Artificial Intelligence, Base Sequence, Gene Expression Regulation, Humans, MicroRNAs, chemistry, genetics, Nucleic Acid Conformation

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          Abstract

          MicroRNAs are a class of small endogenous noncoding RNAs which play important regulatory roles mainly by post-transcriptional depression. Finding miRNA target genes will help a lot to understand their biological functions. We developed an ensemble machine learning algorithm which helps to improve the prediction of miRNA targets. The performance was evaluated in the training set and in FMRP associated mRNAs. Moreover, using human mir-9 as a test case, our classification was validated in 9 of 15 transcripts tested. Finally, we applied our algorithm on the whole prediction data set provided by miRanda website. The results are available at http://www.biosino.org/~kanghu/mRTP/mRTP.html.

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          Author and article information

          Journal
          17379214
          10.1016/j.febslet.2007.03.022

          Chemistry
          Algorithms,Artificial Intelligence,Base Sequence,Gene Expression Regulation,Humans,MicroRNAs,chemistry,genetics,Nucleic Acid Conformation

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