Can Machine Learning Revolutionize Directed Evolution of Selective Enzymes?

被引:94
|
作者
Li, Guangyue [1 ]
Dong, Yijie [1 ]
Reetz, Manfred T. [2 ,3 ]
机构
[1] Chinese Acad Agr Sci, State Key Lab Biol Plant Dis & Insect Pests, Key Lab Control Biol Hazard Factors Plant Origin, Minist Agr,Inst Plant Protect, Beijing 100081, Peoples R China
[2] Max Planck Inst Kohlenforsch, Kaiser Wilhelm Pl 1, D-45470 Mulheim, Germany
[3] Philipps Univ, Fachbereich Chem, Hans Meerwein Str, D-35032 Marburg, Germany
基金
中国国家自然科学基金;
关键词
directed evolution; enzymes; machine learning; saturation mutagenesis; stereoselectivity; PROTEIN STABILITY CHANGES; ORGANIC-CHEMISTRY; ENANTIOSELECTIVITY; SEQUENCE; MUTATIONS; LIBRARIES; BIOCATALYSIS; PREDICTION; EFFICIENCY;
D O I
10.1002/adsc.201900149
中图分类号
O69 [应用化学];
学科分类号
081704 ;
摘要
Machine learning as a form of artificial intelligence consists of algorithms and statistical models for improving computer performance for different tasks. Training data are utilized for making decisions and predictions. Since directed evolution of enzymes produces huge amounts of potential training data, machine learning seems to be ideally suited to support this protein engineering technique. Machine learning has been used in protein science for a long time with different purposes. This mini-review focuses on the utility of machine learning as an aid in the directed evolution of selective enzymes. Recent studies have shown that the algorithms ASRA and Innov'SAR are well suited as guides when performing saturation mutagenesis at sites lining the binding pocket for enhancing stereoselectivity and activity.
引用
收藏
页码:2377 / 2386
页数:10
相关论文
共 50 条
  • [41] Directed evolution of enzymes for biocatalytic applications
    Bornscheuer, UT
    BIOCATALYSIS AND BIOTRANSFORMATION, 2001, 19 (02) : 85 - 97
  • [42] Directed evolution of microbial oxidative enzymes
    Cherry, JR
    CURRENT OPINION IN BIOTECHNOLOGY, 2000, 11 (03) : 250 - 254
  • [43] Strategy and success for the directed evolution of enzymes
    Dalby, Paul A.
    CURRENT OPINION IN STRUCTURAL BIOLOGY, 2011, 21 (04) : 473 - 480
  • [44] Differential evolution based selective ensemble of extreme learning machine
    Zhang, Yong
    Liu, Bo
    Yang, Fan
    2016 IEEE TRUSTCOM/BIGDATASE/ISPA, 2016, : 1327 - 1333
  • [45] Machine-Learning-Guided Library Design Cycle for Directed Evolution of Enzymes: The Effects of Training Data Composition on Sequence Space Exploration
    Saito, Yutaka
    Oikawa, Misaki
    Sato, Takumi
    Nakazawa, Hikaru
    Ito, Tomoyuki
    Kameda, Tomoshi
    Tsuda, Koji
    Umetsu, Mitsuo
    ACS CATALYSIS, 2021, 11 (23) : 14615 - 14624
  • [46] Application of Directed Evolution and Machine Learning to Enhance the Diastereoselectivity of Ketoreductase for Dihydrotetrabenazine Synthesis
    Huang, Chenming
    Zhang, Li
    Tang, Tong
    Wang, Haijiao
    Jiang, Yingqian
    Ren, Hanwen
    Zhang, Yitian
    Fang, Jiali
    Zhang, Wenhe
    Jia, Xian
    You, Song
    Qin, Bin
    JACS AU, 2024, 4 (07): : 2547 - 2556
  • [47] Should I be satisfied by my directed evolution experiment? A machine learning approach
    Nemoto, T.
    Ocari, T.
    Zin, E. A.
    Tekinsoy, M.
    Dalkara, D.
    Ferrari, U.
    HUMAN GENE THERAPY, 2022, 33 (23-24) : A33 - A33
  • [48] Directed evolution of enzymes for biocatalysis and the life sciences
    G. J. Williams
    A. S. Nelson
    A. Berry
    Cellular and Molecular Life Sciences CMLS, 2004, 61 : 3034 - 3046
  • [49] Directed evolution of enzymes and pathways by DNA shuffling
    Stemmer, WPC
    FASEB JOURNAL, 1999, 13 (07): : A1431 - A1431
  • [50] Directed evolution -: Enzymes enter the new economy
    Fairley, P
    CHEMICAL WEEK, 2000, 162 (14) : 29 - +