| Literature DB >> 28595592 |
Junichi Iwakiri1, Goro Terai2, Michiaki Hamada3,4,5,6,7.
Abstract
Long noncoding RNAs (lncRNAs) play a key role in normal tissue differentiation and cancer development through their tissue-specific expression in the human transcriptome. Recent investigations of macromolecular interactions have shown that tissue-specific lncRNAs form base-pairing interactions with various mRNAs associated with tissue-differentiation, suggesting that tissue specificity is an important factor controlling human lncRNA-mRNA interactions.Here, we report investigations of the tissue specificities of lncRNAs and mRNAs by using RNA-seq data across various human tissues as well as computational predictions of tissue-specific lncRNA-mRNA interactions inferred by integrating the tissue specificity of lncRNAs and mRNAs into our comprehensive prediction of human lncRNA-RNA interactions. Our predicted lncRNA-mRNA interactions were evaluated by comparisons with experimentally validated lncRNA-mRNA interactions (between the TINCR lncRNA and mRNAs), showing the improvement of prediction accuracy over previous prediction methods that did not account for tissue specificities of lncRNAs and mRNAs. In addition, our predictions suggest that the potential functions of TINCR lncRNA not only for epidermal differentiation but also for esophageal development through lncRNA-mRNA interactions. REVIEWERS: This article was reviewed by Dr. Weixiong Zhang and Dr. Bojan Zagrovic.Entities:
Keywords: Computational prediction; Long non-coding RNA; RNA-RNA interaction; RNA-seq; Tissue specificity
Mesh:
Substances:
Year: 2017 PMID: 28595592 PMCID: PMC5465533 DOI: 10.1186/s13062-017-0183-4
Source DB: PubMed Journal: Biol Direct ISSN: 1745-6150 Impact factor: 4.540
Fig. 1The tissue specificity of human lncRNAs and protein-coding genes. The tissue specificity of 6414 lncRNAs and 17,806 protein- coding genes analyzed using RNA-seq data from the Human Protein Atlas Project [13] (Expression Atlas ID: E-MTAB-2836). a Distributions of tissue-specificity scores [11] calculated for lncRNA and protein- coding genes. b Fraction of specifically expressed genes determined to be outliers by ROKU [12]
Fig. 2Our predictions of TINCR-mRNA interactions using skin-specific mRNAs. The skin-specific candidate mRNAs were identified from RNA-seq data derived from the Human Protein Atlas Project (Expression Atlas ID:E-MTAB-2836). A combination of two prediction (ranking) methods (MinEnergy and SumEnergy) and two candidate mRNA sets (initial and tissue specific) were used for the predictions. Experimentally validated TINCR-mRNA interactions [9] (considered as true positives) were used for evaluating the prediction results. The horizontal axis indicates the number of predicted TINCR-mRNA interactions. The vertical axis indicates the number of experimentally validated interactions (i.e., true positives)