Sebastian Bram, Aggrey Samuel E
Institute of Bioinformatics, University of Georgia, Athens, GA.
Bioinform Biol Insights. 2013 Apr 2;7:133-42. doi: 10.4137/BBI.S10758. Print 2013.
MicroRNAs (miRNAs) are small noncoding RNAs that regulate gene expressions by targeting the mRNAs especially in the 3'UTR regions. The identification of miRNAs has been done by biological experiment and computational prediction. The computational prediction approach has been done using two major methods: comparative and noncomparative. The comparative method is dependent on the conservation of the miRNA sequences and secondary structure. The noncomparative method, on the other hand, does not rely on conservation. We hypothesized that each miRNA class has its own unique set of features; therefore, grouping miRNA by classes before using them as training data will improve sensitivity and specificity. The average sensitivity was 88.62% for miR-Explore, which relies on within miRNA class alignment, and 70.82% for miR-abela, which relies on global alignment. Compared with global alignment, grouping miRNA by classes yields a better sensitivity with very high specificity for pre-miRNA prediction even when a simple positional based secondary and primary structure alignment are used.
微小RNA(miRNA)是一类小的非编码RNA,通过靶向mRNA(尤其是3'非翻译区的mRNA)来调控基因表达。miRNA的鉴定可通过生物学实验和计算预测来完成。计算预测方法主要有两种:比较法和非比较法。比较法依赖于miRNA序列和二级结构的保守性。另一方面,非比较法不依赖于保守性。我们假设每个miRNA类别都有其独特的特征集;因此,在将miRNA用作训练数据之前按类别进行分组将提高敏感性和特异性。对于依赖miRNA类别内比对的miR-Explore,平均敏感性为88.62%,而依赖全局比对的miR-abela的平均敏感性为70.82%。与全局比对相比,即使使用简单的基于位置的二级和一级结构比对,按类别对miRNA进行分组在pre-miRNA预测中也能产生更高的特异性和更好的敏感性。