Literature DB >> 33829594

Identifying metal binding amino acids based on backbone geometries as a tool for metalloprotein engineering.

Hoang Nguyen1, Jesse Kleingardner2.   

Abstract

Metal cofactors within proteins perform a versatile set of essential cellular functions. In order to take advantage of the diverse functionality of metalloproteins, researchers have been working to design or modify metal binding sites in proteins to rationally tune the function or activity of the metal cofactor. This study has performed an analysis on the backbone atom geometries of metal-binding amino acids among 10 different metal binding sites within the entire protein data bank. A set of 13 geometric parameters (features) was identified that is capable of predicting the presence of a metal cofactor in the protein structure with overall accuracies of up to 97% given only the relative positions of their backbone atoms. The decision tree machine-learning algorithm used can quickly analyze an entire protein structure for the presence of sets of primary metal coordination spheres upon mutagenesis, independent of their original amino acid identities. The methodology was designed for application in the field of metalloprotein engineering. A cluster analysis using the data set was also performed and demonstrated that the features chosen are useful for identifying clusters of structurally similar metal-binding sites.
© 2021 The Protein Society.

Entities:  

Keywords:  machine learning; metal binding; metalloproteins; protein engineering

Mesh:

Substances:

Year:  2021        PMID: 33829594      PMCID: PMC8138524          DOI: 10.1002/pro.4074

Source DB:  PubMed          Journal:  Protein Sci        ISSN: 0961-8368            Impact factor:   6.993


  38 in total

1.  Construction of new ligand binding sites in proteins of known structure. I. Computer-aided modeling of sites with pre-defined geometry.

Authors:  H W Hellinga; F M Richards
Journal:  J Mol Biol       Date:  1991-12-05       Impact factor: 5.469

Review 2.  Towards the Evolution of Artificial Metalloenzymes-A Protein Engineer's Perspective.

Authors:  Ulrich Markel; Daniel F Sauer; Johannes Schiffels; Jun Okuda; Ulrich Schwaneberg
Journal:  Angew Chem Int Ed Engl       Date:  2019-02-11       Impact factor: 15.336

Review 3.  Towards the online computer-aided design of catalytic pockets.

Authors:  Laura Falivene; Zhen Cao; Andrea Petta; Luigi Serra; Albert Poater; Romina Oliva; Vittorio Scarano; Luigi Cavallo
Journal:  Nat Chem       Date:  2019-09-02       Impact factor: 24.427

4.  Nickel-Substituted Rubredoxin as a Minimal Enzyme Model for Hydrogenase.

Authors:  Jeffrey W Slater; Hannah S Shafaat
Journal:  J Phys Chem Lett       Date:  2015-09-08       Impact factor: 6.475

5.  Development of METAL-ACTIVE SITE and ZINCCLUSTER tool to predict active site pockets.

Authors:  M Ajitha; K Sundar; S Arul Mugilan; S Arumugam
Journal:  Proteins       Date:  2018-01-22

6.  Development of a Rubredoxin-Type Center Embedded in a de Dovo-Designed Three-Helix Bundle.

Authors:  Alison G Tebo; Tyler B J Pinter; Ricardo García-Serres; Amy L Speelman; Cédric Tard; Olivier Sénéque; Geneviève Blondin; Jean-Marc Latour; James Penner-Hahn; Nicolai Lehnert; Vincent L Pecoraro
Journal:  Biochemistry       Date:  2018-04-09       Impact factor: 3.162

7.  Understanding and Modulating Metalloenzymes with Unnatural Amino Acids, Non-Native Metal Ions, and Non-Native Metallocofactors.

Authors:  Evan N Mirts; Ambika Bhagi-Damodaran; Yi Lu
Journal:  Acc Chem Res       Date:  2019-03-26       Impact factor: 22.384

Review 8.  A review of mathematical representations of biomolecular data.

Authors:  Duc Duy Nguyen; Zixuan Cang; Guo-Wei Wei
Journal:  Phys Chem Chem Phys       Date:  2020-02-26       Impact factor: 3.676

Review 9.  Design of functional metalloproteins.

Authors:  Yi Lu; Natasha Yeung; Nathan Sieracki; Nicholas M Marshall
Journal:  Nature       Date:  2009-08-13       Impact factor: 49.962

10.  Hidden relationships between metalloproteins unveiled by structural comparison of their metal sites.

Authors:  Yana Valasatava; Claudia Andreini; Antonio Rosato
Journal:  Sci Rep       Date:  2015-03-30       Impact factor: 4.379

View more
  4 in total

1.  Identifying metal binding amino acids based on backbone geometries as a tool for metalloprotein engineering.

Authors:  Hoang Nguyen; Jesse Kleingardner
Journal:  Protein Sci       Date:  2021-04-20       Impact factor: 6.993

Review 2.  Machine Learning Approaches for Metalloproteins.

Authors:  Yue Yu; Ruobing Wang; Ruijie D Teo
Journal:  Molecules       Date:  2022-02-14       Impact factor: 4.411

Review 3.  A Comprehensive Review of Computation-Based Metal-Binding Prediction Approaches at the Residue Level.

Authors:  Nan Ye; Feng Zhou; Xingchen Liang; Haiting Chai; Jianwei Fan; Bo Li; Jian Zhang
Journal:  Biomed Res Int       Date:  2022-03-31       Impact factor: 3.411

Review 4.  Structural Bioinformatics and Deep Learning of Metalloproteins: Recent Advances and Applications.

Authors:  Claudia Andreini; Antonio Rosato
Journal:  Int J Mol Sci       Date:  2022-07-12       Impact factor: 6.208

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.