Recognizing the power of machine learning and other computational methods to accelerate progress in small molecule targeting of RNA

被引:9
作者
Bagnolini, Greta [1 ]
Luu, TinTin B. [1 ]
Hargrove, Amanda E. [1 ,2 ]
机构
[1] Duke Univ, Dept Chem, Durham, NC 27708 USA
[2] Duke Univ, Sch Med, Dept Biochem, Durham, NC 27710 USA
基金
美国国家科学基金会;
关键词
machine learning; small molecule; RNA; cheminformatics; pattern recognition; quantitative structure activity relationships; COMPUTER-AIDED-DESIGN; FORCE-FIELD; DIPHENYLFURAN DERIVATIVES; NUCLEIC-ACIDS; BINDING; DISCOVERY; DOCKING; SIMULATIONS; PREDICTION; DYNAMICS;
D O I
10.1261/rna.079497.122
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
RNA structures regulate a wide range of processes in biology and disease, yet small molecule chemical probes or drugs that can modulate these functions are rare. Machine learning and other computational methods are well poised to fill gaps in knowledge and overcome the inherent challenges in RNA targeting, such as the dynamic nature of RNA and the difficulty of obtaining RNA high-resolution structures. Successful tools to date include principal component analysis, linear discriminate analysis, k-nearest neighbor, artificial neural networks, multiple linear regression, and many others. Employment of these tools has revealed critical factors for selective recognition in RNA:small molecule complexes, predictable differences in RNA- and protein-binding ligands, and quantitative structure activity relationships that allow the rational design of small molecules for a given RNA target. Herein we present our perspective on the value of using machine learning and other computation methods to advance RNA:small molecule targeting, including select examples and their validation as well as necessary and promising future directions that will be key to accelerate discoveries in this important field.
引用
收藏
页码:473 / 488
页数:16
相关论文
共 110 条
  • [51] Roseoflavin is a natural antibacterial compound that binds to FMN riboswitches and regulates gene expression
    Lee, Elaine R.
    Blount, Kenneth F.
    Breaker, Ronald R.
    [J]. RNA BIOLOGY, 2009, 6 (02) : 187 - 194
  • [52] Noncoding RNAs in disease
    Lekka, Evangelia
    Hall, Jonathan
    [J]. FEBS LETTERS, 2018, 592 (17): : 2884 - 2900
  • [53] Polarizable force field for RNA based on the classical drude oscillator
    Lemkul, Justin A.
    MacKerell, Alexander D., Jr.
    [J]. JOURNAL OF COMPUTATIONAL CHEMISTRY, 2018, 39 (32) : 2624 - 2646
  • [54] Machine learning applications in genetics and genomics
    Libbrecht, Maxwell W.
    Noble, William Stafford
    [J]. NATURE REVIEWS GENETICS, 2015, 16 (06) : 321 - 332
  • [55] Cryo-EM advances in RNA structure determination
    Ma, Haiyun
    Jia, Xinyu
    Zhang, Kaiming
    Su, Zhaoming
    [J]. SIGNAL TRANSDUCTION AND TARGETED THERAPY, 2022, 7 (01)
  • [56] Advances with support vector machines for novel drug discovery
    Maltarollo, Vinicius Goncalves
    Kronenberger, Thales
    Espinoza, Gabriel Zarzana
    Oliveira, Patricia Rufino
    Honorio, Kathia Maria
    [J]. EXPERT OPINION ON DRUG DISCOVERY, 2019, 14 (01) : 23 - 33
  • [57] Computer-aided design of RNA-targeted small molecules: A growing need in drug discovery
    Manigrasso, Jacopo
    Marcia, Marco
    De Vivo, Marco
    [J]. CHEM, 2021, 7 (11): : 2965 - 2988
  • [58] Risdiplam: an investigational survival motor neuron 2 (SMN2) splicing modifier for spinal muscular atrophy (SMA)
    Markati, Theodora
    Fisher, Gemma
    Ramdas, Sithara
    Servais, Laurent
    [J]. EXPERT OPINION ON INVESTIGATIONAL DRUGS, 2022, 31 (05) : 451 - 461
  • [59] McKnight Kevin L., 2003, Antiviral Chemistry & Chemotherapy, V14, P61
  • [60] Molecular Dynamics Simulations Reveal an Interplay between SHAPE Reagent Binding and RNA Flexibility
    Mlynsky, Vojtech
    Bussi, Giovanni
    [J]. JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2018, 9 (02): : 313 - 318