4.7 Article

tRFTars: predicting the targets of tRNA-derived fragments

Journal

JOURNAL OF TRANSLATIONAL MEDICINE
Volume 19, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12967-021-02731-7

Keywords

tRNA derived fragments; Crosslinking; ligation and sequencing of hybrids; Features of tRF targeting; Support vector machine; The first tRF target predicting tool

Funding

  1. National Key R&D Program of China [MOST-2017YFC0908300, MOST-2016YFC1303200]
  2. Major Scientific and Technological Special Project of Liaoning Province of China [2019020176-JH1/103, 2019JH1/10300007]
  3. National Natural Science Foundation of China [82002599]
  4. Natural Science Foundation of Liaoning Province of China [2019-MS-390]
  5. China Postdoctoral Science Foundation [2018M641746]
  6. Natural Science Foundation Medical and Health Joint Fund Project of Liaoning Province [20180530006]

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tRFs are small non-coding RNAs derived from specific tRNA cleavage events with key regulatory functions. Through identifying tRF-mRNA pairs and analyzing key features, a prediction model was constructed using genetic algorithm and support vector machine, which showed high accuracy in predicting tRF target genes. The user-friendly prediction tool, tRFTars, is available online for researchers to predict tRF targets in humans.
BackgroundtRNA-derived fragments (tRFs) are 14-40-nucleotide-long, small non-coding RNAs derived from specific tRNA cleavage events with key regulatory functions in many biological processes. Many studies have shown that tRFs are associated with Argonaute (AGO) complexes and inhibit gene expression in the same manner as miRNAs. However, there are currently no tools for accurately predicting tRF target genes.MethodsWe used tRF-mRNA pairs identified by crosslinking, ligation, and sequencing of hybrids (CLASH) and covalent ligation of endogenous AGO-bound RNAs (CLEAR)-CLIP to assess features that may participate in tRF targeting, including the sequence context of each site and tRF-mRNA interactions. We applied genetic algorithm (GA) to select key features and support vector machine (SVM) to construct tRF prediction models.ResultsWe first identified features that globally influenced tRF targeting. Among these features, the most significant were the minimum free folding energy (MFE), position 8 match, number of bases paired in the tRF-mRNA duplex, and length of the tRF, which were consistent with previous findings. Our constructed model yielded an area under the receiver operating characteristic (ROC) curve (AUC)=0.980 (0.977-0.983) in the training process and an AUC=0.847 (0.83-0.861) in the test process. The model was applied to all the sites with perfect Watson-Crick complementarity to the seed in the 3 untranslated region (3 ' -UTR) of the human genome. Seven of nine target/nontarget genes of tRFs confirmed by reporter assay were predicted. We also validated the predictions via quantitative real-time PCR (qRT-PCR). Thirteen potential target genes from the top of the predictions were significantly down-regulated at the mRNA levels by overexpression of the tRFs (tRF-3001a, tRF-3003a or tRF-3009a).Conclusions Predictions can be obtained online, tRFTars, freely available at http://trftars.cmuzhenninglab.org:3838/tar/, which is the first tool to predict targets of tRFs in humans with a user-friendly interface.

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