Liu Jinfeng, Gough Julian, Rost Burkhard
Columbia University Bioinformatics Center, Department of Biochemistry and Molecular Biophysics, Columbia University, New York, New York, United States of America.
PLoS Genet. 2006 Apr;2(4):e29. doi: 10.1371/journal.pgen.0020029. Epub 2006 Apr 28.
RIKEN's FANTOM project has revealed many previously unknown coding sequences, as well as an unexpected degree of variation in transcripts resulting from alternative promoter usage and splicing. Ever more transcripts that do not code for proteins have been identified by transcriptome studies, in general. Increasing evidence points to the important cellular roles of such non-coding RNAs (ncRNAs). The distinction of protein-coding RNA transcripts from ncRNA transcripts is therefore an important problem in understanding the transcriptome and carrying out its annotation. Very few in silico methods have specifically addressed this problem. Here, we introduce CONC (for "coding or non-coding"), a novel method based on support vector machines that classifies transcripts according to features they would have if they were coding for proteins. These features include peptide length, amino acid composition, predicted secondary structure content, predicted percentage of exposed residues, compositional entropy, number of homologs from database searches, and alignment entropy. Nucleotide frequencies are also incorporated into the method. Confirmed coding cDNAs for eukaryotic proteins from the Swiss-Prot database constituted the set of true positives, ncRNAs from RNAdb and NONCODE the true negatives. Ten-fold cross-validation suggested that CONC distinguished coding RNAs from ncRNAs at about 97% specificity and 98% sensitivity. Applied to 102,801 mouse cDNAs from the FANTOM3 dataset, our method reliably identified over 14,000 ncRNAs and estimated the total number of ncRNAs to be about 28,000.
日本理化学研究所的FANTOM项目揭示了许多以前未知的编码序列,以及因启动子使用和剪接方式不同而产生的转录本中意想不到的变异程度。总体而言,转录组研究发现了越来越多不编码蛋白质的转录本。越来越多的证据表明这类非编码RNA(ncRNA)在细胞中发挥着重要作用。因此,区分蛋白质编码RNA转录本和ncRNA转录本是理解转录组并对其进行注释的一个重要问题。很少有计算机方法专门解决这个问题。在这里,我们介绍了CONC(“编码或非编码”之意),这是一种基于支持向量机的新方法,它根据转录本如果编码蛋白质时所具有的特征对转录本进行分类。这些特征包括肽长度、氨基酸组成、预测的二级结构含量、预测的暴露残基百分比、组成熵、数据库搜索中的同源物数量以及比对熵。核苷酸频率也被纳入该方法。来自Swiss-Prot数据库的真核生物蛋白质的已确认编码cDNA构成了真阳性集,来自RNAdb和NONCODE的ncRNA构成了真阴性集。十折交叉验证表明,CONC区分编码RNA和ncRNA的特异性约为97%,灵敏度约为98%。将我们的方法应用于来自FANTOM3数据集的102,801个小鼠cDNA,可靠地识别出了超过14,000个ncRNA,并估计ncRNA的总数约为28,000个。