Literature DB >> 26748145

pRNAm-PC: Predicting N(6)-methyladenosine sites in RNA sequences via physical-chemical properties.

Zi Liu1, Xuan Xiao2, Dong-Jun Yu3, Jianhua Jia4, Wang-Ren Qiu4, Kuo-Chen Chou5.   

Abstract

Just like PTM or PTLM (post-translational modification) in proteins, PTCM (post-transcriptional modification) in RNA plays very important roles in biological processes. Occurring at adenine (A) with the genetic code motif (GAC), N(6)-methyldenosine (m(6)A) is one of the most common and abundant PTCMs in RNA found in viruses and most eukaryotes. Given an uncharacterized RNA sequence containing many GAC motifs, which of them can be methylated, and which cannot? It is important for both basic research and drug development to address this problem. Particularly with the avalanche of RNA sequences generated in the postgenomic age, it is highly demanded to develop computational methods for timely identifying the N(6)-methyldenosine sites in RNA. Here we propose a new predictor called pRNAm-PC, in which RNA sequence samples are expressed by a novel mode of pseudo dinucleotide composition (PseDNC) whose components were derived from a physical-chemical matrix via a series of auto-covariance and cross covariance transformations. It was observed via a rigorous jackknife test that, in comparison with the existing predictor for the same purpose, pRNAm-PC achieved remarkably higher success rates in both overall accuracy and stability, indicating that the new predictor will become a useful high-throughput tool for identifying methylation sites in RNA, and that the novel approach can also be used to study many other RNA-related problems and conduct genome analysis. A user-friendly Web server for pRNAm-PC has been established at http://www.jci-bioinfo.cn/pRNAm-PC, by which users can easily get their desired results without needing to go through the mathematical details.
Copyright © 2015 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Auto-covariance; Cross covariance; N(6)-Methyldenosine sites; Pseudo dinucleotide composition; pRNAm-PC

Mesh:

Substances:

Year:  2015        PMID: 26748145     DOI: 10.1016/j.ab.2015.12.017

Source DB:  PubMed          Journal:  Anal Biochem        ISSN: 0003-2697            Impact factor:   3.365


  63 in total

1.  iN6-methylat (5-step): identifying DNA N6-methyladenine sites in rice genome using continuous bag of nucleobases via Chou's 5-step rule.

Authors:  Nguyen Quoc Khanh Le
Journal:  Mol Genet Genomics       Date:  2019-05-04       Impact factor: 3.291

2.  iPhosY-PseAAC: identify phosphotyrosine sites by incorporating sequence statistical moments into PseAAC.

Authors:  Yaser Daanial Khan; Nouman Rasool; Waqar Hussain; Sher Afzal Khan; Kuo-Chen Chou
Journal:  Mol Biol Rep       Date:  2018-10-11       Impact factor: 2.316

Review 3.  Structural Variability in the RLR-MAVS Pathway and Sensitive Detection of Viral RNAs.

Authors:  Qiu-Xing Jiang
Journal:  Med Chem       Date:  2019       Impact factor: 2.745

4.  Evolutionary mechanism and biological functions of 8-mers containing CG dinucleotide in yeast.

Authors:  Yan Zheng; Hong Li; Yue Wang; Hu Meng; Qiang Zhang; Xiaoqing Zhao
Journal:  Chromosome Res       Date:  2017-02-09       Impact factor: 5.239

5.  Predicting sites of epitranscriptome modifications using unsupervised representation learning based on generative adversarial networks.

Authors:  Sirajul Salekin; Milad Mostavi; Yu-Chiao Chiu; Yidong Chen; Jianqiu Michelle Zhang; Yufei Huang
Journal:  Front Phys       Date:  2020-06-19

6.  WHISTLE: a high-accuracy map of the human N6-methyladenosine (m6A) epitranscriptome predicted using a machine learning approach.

Authors:  Kunqi Chen; Zhen Wei; Qing Zhang; Xiangyu Wu; Rong Rong; Zhiliang Lu; Jionglong Su; João Pedro de Magalhães; Daniel J Rigden; Jia Meng
Journal:  Nucleic Acids Res       Date:  2019-04-23       Impact factor: 16.971

7.  Imbalanced multi-label learning for identifying antimicrobial peptides and their functional types.

Authors:  Weizhong Lin; Dong Xu
Journal:  Bioinformatics       Date:  2016-08-26       Impact factor: 6.937

8.  m6ASNP: a tool for annotating genetic variants by m6A function.

Authors:  Shuai Jiang; Yubin Xie; Zhihao He; Ya Zhang; Yuli Zhao; Li Chen; Yueyuan Zheng; Yanyan Miao; Zhixiang Zuo; Jian Ren
Journal:  Gigascience       Date:  2018-05-01       Impact factor: 6.524

9.  HLMethy: a machine learning-based model to identify the hidden labels of m6A candidates.

Authors:  Ze Liu; Wei Dong; WenJie Luo; Wei Jiang; QuanWu Li; ZiLi He
Journal:  Plant Mol Biol       Date:  2019-11-13       Impact factor: 4.076

10.  RFAthM6A: a new tool for predicting m6A sites in Arabidopsis thaliana.

Authors:  Xiaofeng Wang; Renxiang Yan
Journal:  Plant Mol Biol       Date:  2018-01-16       Impact factor: 4.076

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