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MicroRNA identification using linear dimensionality reduction with explicit feature mapping

机译:使用线性降维和显式特征图谱进行MicroRNA鉴定

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Background microRNAs are a class of small RNAs, about 20 nt long, which regulate cellular processes in animals and plants. Identifying microRNAs is one of the most important tasks in gene regulation studies. The main features used for identifying these tiny molecules are those in hairpin secondary structures of pre-microRNA. Results A new classifier is employed to identify precursor microRNAs from both pseudo hairpins and other non-coding RNAs. This classifier achieves a geometric mean G m = 92.20% with just three features and 92.91% with seven features. Conclusion This study shows that linear dimensionality reduction combined with explicit feature mapping , namely miLDR-EM, achieves high performance in classification of microRNAs from other sequences. Also, explicitly mapping data onto a high dimensional space could be a useful alternative to kernel-based methods for large datasets with a small number of features. Moreover, we demonstrate that microRNAs can be accurately identified by just using three properties that involve minimum free energy.
机译:背景微RNA是一类小RNA,约20 nt长,可调节动植物的细胞过程。鉴定microRNA是基因调控研究中最重要的任务之一。用于鉴定这些微小分子的主要特征是前microRNA的发夹二级结构中的那些特征。结果采用一种新的分类器从假发夹和其他非编码RNA中鉴定前体microRNA。该分类器仅具有三个特征就可以达到几何平均值G m = 92.20%,具有七个特征就可以达到92.91%。结论这项研究表明,线性维数减少与显式特征映射(即miLDR-EM)相结合,在分类其他序列的microRNA方面具有很高的性能。此外,对于具有少量特征的大型数据集,将数据显式映射到高维空间可能是基于内核的方法的有用替代方法。此外,我们证明了仅通过使用涉及最小自由能的三个属性就可以准确识别microRNA。

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