Predicting DNA structure using a deep learning method

被引:0
|
作者
Jinsen Li
Tsu-Pei Chiu
Remo Rohs
机构
[1] University of Southern California,Department of Quantitative and Computational Biology
[2] University of Southern California,Department of Chemistry
[3] University of Southern California,Department of Physics and Astronomy
[4] University of Southern California,Thomas Lord Department of Computer Science
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Understanding the mechanisms of protein-DNA binding is critical in comprehending gene regulation. Three-dimensional DNA structure, also described as DNA shape, plays a key role in these mechanisms. In this study, we present a deep learning-based method, Deep DNAshape, that fundamentally changes the current k-mer based high-throughput prediction of DNA shape features by accurately accounting for the influence of extended flanking regions, without the need for extensive molecular simulations or structural biology experiments. By using the Deep DNAshape method, DNA structural features can be predicted for any length and number of DNA sequences in a high-throughput manner, providing an understanding of the effects of flanking regions on DNA structure in a target region of a sequence. The Deep DNAshape method provides access to the influence of distant flanking regions on a region of interest. Our findings reveal that DNA shape readout mechanisms of a core target are quantitatively affected by flanking regions, including extended flanking regions, providing valuable insights into the detailed structural readout mechanisms of protein-DNA binding. Furthermore, when incorporated in machine learning models, the features generated by Deep DNAshape improve the model prediction accuracy. Collectively, Deep DNAshape can serve as versatile and powerful tool for diverse DNA structure-related studies.
引用
收藏
相关论文
共 50 条
  • [21] Predicting keratoconus progression using deep learning
    Kato, Naoko
    Masumoto, Hiroki
    Tanabe, Mao
    Sakai, Chikako
    Negishi, Kazuno
    Torii, Hidemasa
    Tabuchi, Hitoshi
    Tsubota, Kazuo
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2021, 62 (08)
  • [22] PREDICTING THE OCEAN CURRENTS USING DEEP LEARNING
    Bayindir, C.
    TWMS JOURNAL OF APPLIED AND ENGINEERING MATHEMATICS, 2023, 13 (01): : 373 - 385
  • [23] Predicting process behaviour using deep learning
    Evermann, Joerg
    Rehse, Jana-Rebecca
    Fettke, Peter
    DECISION SUPPORT SYSTEMS, 2017, 100 : 129 - 140
  • [24] Predicting Binding Affinity using Deep Learning
    Olson, Daniel
    Colligan, Thomas
    Roy, Amitava
    Venkatraman, Vishwesh
    Wheeler, Travis J.
    PROTEIN SCIENCE, 2021, 30 : 133 - 133
  • [25] Predicting Next Whereabouts Using Deep Learning
    Galarreta, Ana-Paula
    Alatrista-Salas, Hugo
    Nunez-del-Prado, Miguel
    MODELING DECISIONS FOR ARTIFICIAL INTELLIGENCE, MDAI 2023, 2023, 13890 : 214 - 225
  • [26] Predicting the Secondary Structure of Proteins: A Deep Learning Approach
    Kathuria, Charu
    Mehrotra, Deepti
    Misra, Navnit Kumar
    CURRENT PROTEOMICS, 2022, 19 (05) : 400 - 411
  • [27] Predicting protein network topology clusters from chemical structure using deep learning
    Akshai P. Sreenivasan
    Philip J Harrison
    Wesley Schaal
    Damian J. Matuszewski
    Kim Kultima
    Ola Spjuth
    Journal of Cheminformatics, 14
  • [28] Predicting protein network topology clusters from chemical structure using deep learning
    Sreenivasan, Akshai P.
    Harrison, Philip J.
    Schaal, Wesley
    Matuszewski, Damian J.
    Kultima, Kim
    Spjuth, Ola
    JOURNAL OF CHEMINFORMATICS, 2022, 14 (01)
  • [29] Simulating and predicting entangled DNA contours via deep learning
    Serag, Maged F.
    Habuchi, Satoshi
    EMERGING TOPICS IN ARTIFICIAL INTELLIGENCE, ETAI 2024, 2024, 13118
  • [30] Predicting combustion behavior in rotating detonation engines using an interpretable deep learning method
    Shen, Dawen
    Sheng, Zhaohua
    Zhang, Yunzhen
    Rong, Guangyao
    Wu, Kevin
    Wang, Jianping
    PHYSICS OF FLUIDS, 2023, 35 (07)