A scoping review on deep learning for next-generation RNA-Seq. data analysis

被引:0
|
作者
Diksha Pandey
P. Onkara Perumal
机构
[1] National Institute of Technology,Department of Biotechnology
来源
关键词
Deep learning; Machine learning; NGS; Data analysis; Functional genomics; Omics;
D O I
暂无
中图分类号
学科分类号
摘要
In the last decade, transcriptome research adopting next-generation sequencing (NGS) technologies has gathered incredible momentum amongst functional genomics scientists, particularly amongst clinical/biomedical research groups. The progressive enfoldment/adoption of NGS technologies has incited an abundance of next-generation transcriptomic data harbouring an opulence of new knowledge in public databases. Nevertheless, knowledge discovery from these next-generation RNA-Seq. data analysis necessitates extensive bioinformatics know-how besides elaborate data analysis software packages consistent with the type and context of data analysis. Several reliability and reproducibility concerns continue to impede RNA-Seq. data analysis. Characteristic challenges comprise of data quality, hardware and networking provisions, selection and prioritisation of data analysis tools, and yet significantly implementing of robust machine learning algorithms for maximised exploitation of these experimental transcriptomic data. Over the years, numerous machine learning algorithms have been implemented for improved transcriptomic data analysis executing predominantly shallow learning approaches. More recently, deep learning algorithms are becoming more mainstream, and enactment for next-generation RNA-Seq. data analysis could be revolutionary in the coming years in the biomedical domain. In this scoping review, we attempt to determine the existing literature’s size and potential nature in deep learning and NGS RNA-Seq. data analysis. An analysis of the contemporary topics of next-generation RNA-Seq. data analysis based on deep learning algorithms is critically reviewed, emphasising open-source resources.
引用
收藏
相关论文
共 50 条
  • [1] A scoping review on deep learning for next-generation RNA-Seq. data analysis
    Pandey, Diksha
    Perumal, P. Onkara
    FUNCTIONAL & INTEGRATIVE GENOMICS, 2023, 23 (02)
  • [2] A Review on The Processing and Analysis of Next-generation RNA-seq Data
    Wang Xi
    Wang Xiao-Wo
    Wang Li-Kun
    Feng Zhi-Xing
    Zhang Xue-Gong
    PROGRESS IN BIOCHEMISTRY AND BIOPHYSICS, 2010, 37 (08) : 834 - 846
  • [3] A review of deep learning applications in human genomics using next-generation sequencing data
    Wardah S. Alharbi
    Mamoon Rashid
    Human Genomics, 16
  • [4] A review of deep learning applications in human genomics using next-generation sequencing data
    Alharbi, Wardah S.
    Rashid, Mamoon
    HUMAN GENOMICS, 2022, 16 (01)
  • [5] Next-generation deep learning based on simulators and synthetic data
    de Melo, Celso M.
    Torralba, Antonio
    Guibas, Leonidas
    DiCarlo, James
    Chellappa, Rama
    Hodgins, Jessica
    TRENDS IN COGNITIVE SCIENCES, 2022, 26 (02) : 174 - 187
  • [6] Deep learning in next-generation sequencing
    Schmidt, Bertil
    Hildebrandt, Andreas
    DRUG DISCOVERY TODAY, 2020, 26 (01) : 173 - 180
  • [7] Analysis of error profiles in deep next-generation sequencing data
    Ma, Xiaotu
    Shao, Ying
    Tian, Liqing
    Flasch, Diane A.
    Mulder, Heather L.
    Edmonson, Michael N.
    Liu, Yu
    Chen, Xiang
    Newman, Scott
    Nakitandwe, Joy
    Li, Yongjin
    Li, Benshang
    Shen, Shuhong
    Wang, Zhaoming
    Shurtleff, Sheila
    Robison, Leslie L.
    Levy, Shawn
    Easton, John
    Zhang, Jinghui
    GENOME BIOLOGY, 2019, 20 (1)
  • [8] Analysis of error profiles in deep next-generation sequencing data
    Xiaotu Ma
    Ying Shao
    Liqing Tian
    Diane A. Flasch
    Heather L. Mulder
    Michael N. Edmonson
    Yu Liu
    Xiang Chen
    Scott Newman
    Joy Nakitandwe
    Yongjin Li
    Benshang Li
    Shuhong Shen
    Zhaoming Wang
    Sheila Shurtleff
    Leslie L. Robison
    Shawn Levy
    John Easton
    Jinghui Zhang
    Genome Biology, 20
  • [9] Analysis of error profiles in deep next-generation sequencing data
    Ma, Xiaotu
    Zhang, Jinghui
    CANCER RESEARCH, 2019, 79 (13)
  • [10] Big data analysis and distributed deep learning for next-generation intrusion detection system optimization
    Al Jallad, Khloud
    Aljnidi, Mohamad
    Desouki, Mohammad Said
    JOURNAL OF BIG DATA, 2019, 6 (01)