Literature DB >> 33006667

Recent advances on the machine learning methods in predicting ncRNA-protein interactions.

Lin Zhong1, Meiqin Zhen2, Jianqiang Sun3, Qi Zhao4.   

Abstract

Recent transcriptomics and bioinformatics studies have shown that ncRNAs can affect chromosome structure and gene transcription, participate in the epigenetic regulation, and take part in diseases such as tumorigenesis. Biologists have found that most ncRNAs usually work by interacting with the corresponding RNA-binding proteins. Therefore, ncRNA-protein interaction is a very popular study in both the biological and medical fields. However, due to the limitations of manual experiments in the laboratory, machine-learning methods for predicting ncRNA-protein interactions are increasingly favored by the researchers. In this review, we summarize several machine learning predictive models of ncRNA-protein interactions over the past few years, and briefly describe the characteristics of these machine learning models. In order to optimize the performance of machine learning models to better predict ncRNA-protein interactions, we give some promising future computational directions at the end.

Entities:  

Keywords:  Machine learning methods; Predictive models; Protein; ncRNA; ncRNA-protein interaction

Year:  2020        PMID: 33006667     DOI: 10.1007/s00438-020-01727-0

Source DB:  PubMed          Journal:  Mol Genet Genomics        ISSN: 1617-4623            Impact factor:   3.291


  43 in total

1.  The Protein Data Bank.

Authors:  H M Berman; J Westbrook; Z Feng; G Gilliland; T N Bhat; H Weissig; I N Shindyalov; P E Bourne
Journal:  Nucleic Acids Res       Date:  2000-01-01       Impact factor: 16.971

2.  Directional Clustering Through Matrix Factorization.

Authors:  Thomas Blumensath
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2016-01-07       Impact factor: 10.451

Review 3.  Introduction to machine learning.

Authors:  Yalin Baştanlar; Mustafa Ozuysal
Journal:  Methods Mol Biol       Date:  2014

4.  Non-coding RNA: More uses for genomic junk.

Authors:  Karen Adelman; Emily Egan
Journal:  Nature       Date:  2017-03-08       Impact factor: 49.962

5.  Predicting miRNA-disease association based on inductive matrix completion.

Authors:  Xing Chen; Lei Wang; Jia Qu; Na-Na Guan; Jian-Qiang Li
Journal:  Bioinformatics       Date:  2018-12-15       Impact factor: 6.937

6.  Automatic design of decision-tree algorithms with evolutionary algorithms.

Authors:  Rodrigo C Barros; Márcio P Basgalupp; André C P L F de Carvalho; Alex A Freitas
Journal:  Evol Comput       Date:  2013-08-08       Impact factor: 3.277

Review 7.  Non-coding RNA networks in cancer.

Authors:  Eleni Anastasiadou; Leni S Jacob; Frank J Slack
Journal:  Nat Rev Cancer       Date:  2017-11-24       Impact factor: 60.716

Review 8.  Deep Learning: A Primer for Radiologists.

Authors:  Gabriel Chartrand; Phillip M Cheng; Eugene Vorontsov; Michal Drozdzal; Simon Turcotte; Christopher J Pal; Samuel Kadoury; An Tang
Journal:  Radiographics       Date:  2017 Nov-Dec       Impact factor: 5.333

Review 9.  Long non-coding RNAs and complex diseases: from experimental results to computational models.

Authors:  Xing Chen; Chenggang Clarence Yan; Xu Zhang; Zhu-Hong You
Journal:  Brief Bioinform       Date:  2017-07-01       Impact factor: 11.622

10.  MDHGI: Matrix Decomposition and Heterogeneous Graph Inference for miRNA-disease association prediction.

Authors:  Xing Chen; Jun Yin; Jia Qu; Li Huang
Journal:  PLoS Comput Biol       Date:  2018-08-24       Impact factor: 4.475

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