期刊文献+

机器学习助力酶定向进化 被引量:20

Machine learning-assisted enzyme directed evolution
在线阅读 下载PDF
导出
摘要 酶定向进化技术在生物催化、生物医药、生物技术等领域扮演重要角色。得益于计算速度的大幅提升以及海量数据集的出现,当前人工智能技术发展如火如荼。近年来机器学习等人工智能方法也被应用于蛋白质工程,在复杂酶结构预测、稳定性/选择性/可溶性、指导酶设计等问题中表现出独特的优势,为酶分子设计提供了新的可能。综述了当前机器学习算法及描述符助力酶设计改造方面的应用与进展。 Directed evolution plays a central role in the fields of biocatalysis,biomedicine and biotechnology,etc.Taking advantages of increasingly computer performance and numerous datasets,artificial intelligence has rapidly developed.Recently,machine learning algorithms have also been applied to protein engineering,especially in helping prediction of protein structures,improving enzyme stability/selectivity/solubility,and guiding rational protein design as well as other functions.This paper reviews the state of the art in algorithms and descriptors used in enzyme engineering.
作者 蒋迎迎 曲戈 孙周通 JIANG Ying-ying;QU Ge;SUN Zhou-tong(Tianjin Institute of Industrial Biotechnology,Chinese Academy of Sciences,Tianjin 300308,China)
出处 《生物学杂志》 CAS CSCD 北大核心 2020年第4期1-11,共11页 Journal of Biology
基金 国家重点专项(2019YFA0905100) 国家自然科学基金(No.31870779,31900909) 天津市自然科学基金(No.18JCYBJC24600,19JCQNJC09100)。
关键词 人工智能 蛋白质工程 定向进化 机器学习 artificial intelligence protein engineering directed evolution machine learning
  • 相关文献

参考文献5

二级参考文献40

  • 1王琦,操晓春.中国计算机学会通讯[J].2015,P60-62.
  • 2WarrenS McCulloch and Walter Pitts. A logical calculus of the ideas immanentin nervous activity. The bulletin of mathematical biophysics, 1943,5 (4) :115 -133.
  • 3Hopfield J J. Neural Networks and Physical Sys- tems with Emergent Collective Computational Abil- ities, Proc Natl Aead Sci. USA, 1982, (79) : 2254 - 2558.
  • 4E Rumelhart, G E Hinton, R J Williams. Learn- ng internal representations by error propagation. ature , 1986,323 (99) :533 - 536.
  • 5http://deepleaming, stanford, edu/wiki/index. php/UFLDL_Tutorial.
  • 6http://blog, csdn. net/datoubo/article/details/ 8577366.
  • 7Geoffery E Hinton, Salakhutdinov RR. Reducing the dimensionality of data with neural networks. Science, 2006,313 (5786) :504 - 7.
  • 8http://www, ccf. org. cn/sites/ccf/xhdtnry, jsp? contentId = 2873667830199.
  • 9http://tech. 163. com/16/0229/07/BGVMTL- GA000915BF. html.
  • 10http://nkonst, corn/machine - learning - ex- plained - simple - words/.

共引文献228

同被引文献142

引证文献20

二级引证文献68

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部