Literature DB >> 29508448

SPIN2: Predicting sequence profiles from protein structures using deep neural networks.

James O'Connell1, Zhixiu Li2,3, Jack Hanson1, Rhys Heffernan1, James Lyons1, Kuldip Paliwal1, Abdollah Dehzangi1,4, Yuedong Yang2,5, Yaoqi Zhou2.   

Abstract

Designing protein sequences that can fold into a given structure is a well-known inverse protein-folding problem. One important characteristic to attain for a protein design program is the ability to recover wild-type sequences given their native backbone structures. The highest average sequence identity accuracy achieved by current protein-design programs in this problem is around 30%, achieved by our previous system, SPIN. SPIN is a program that predicts sequences compatible with a provided structure using a neural network with fragment-based local and energy-based nonlocal profiles. Our new model, SPIN2, uses a deep neural network and additional structural features to improve on SPIN. SPIN2 achieves over 34% in sequence recovery in 10-fold cross-validation and independent tests, a 4% improvement over the previous version. The sequence profiles generated from SPIN2 are expected to be useful for improving existing fold recognition and protein design techniques. SPIN2 is available at http://sparks-lab.org.
© 2018 Wiley Periodicals, Inc.

Entities:  

Keywords:  bioinformatics; deep learning; fold recognition; neural networks; structure prediction

Mesh:

Substances:

Year:  2018        PMID: 29508448     DOI: 10.1002/prot.25489

Source DB:  PubMed          Journal:  Proteins        ISSN: 0887-3585


  12 in total

Review 1.  Structure-based protein design with deep learning.

Authors:  Sergey Ovchinnikov; Po-Ssu Huang
Journal:  Curr Opin Chem Biol       Date:  2021-09-20       Impact factor: 8.822

2.  Protein Science Meets Artificial Intelligence: A Systematic Review and a Biochemical Meta-Analysis of an Inter-Field.

Authors:  Jalil Villalobos-Alva; Luis Ochoa-Toledo; Mario Javier Villalobos-Alva; Atocha Aliseda; Fernando Pérez-Escamirosa; Nelly F Altamirano-Bustamante; Francine Ochoa-Fernández; Ricardo Zamora-Solís; Sebastián Villalobos-Alva; Cristina Revilla-Monsalve; Nicolás Kemper-Valverde; Myriam M Altamirano-Bustamante
Journal:  Front Bioeng Biotechnol       Date:  2022-07-07

3.  Fold2Seq: A Joint Sequence(1D)-Fold(3D) Embedding-based Generative Model for Protein Design.

Authors:  Yue Cao; Payel Das; Vijil Chenthamarakshan; Pin-Yu Chen; Igor Melnyk; Yang Shen
Journal:  Proc Mach Learn Res       Date:  2021-07

4.  ProDCoNN: Protein design using a convolutional neural network.

Authors:  Yuan Zhang; Yang Chen; Chenran Wang; Chun-Chao Lo; Xiuwen Liu; Wei Wu; Jinfeng Zhang
Journal:  Proteins       Date:  2020-01-06

Review 5.  Data-driven computational protein design.

Authors:  Vincent Frappier; Amy E Keating
Journal:  Curr Opin Struct Biol       Date:  2021-04-25       Impact factor: 7.786

Review 6.  Deep learning techniques have significantly impacted protein structure prediction and protein design.

Authors:  Robin Pearce; Yang Zhang
Journal:  Curr Opin Struct Biol       Date:  2021-02-24       Impact factor: 7.786

Review 7.  Protein Design with Deep Learning.

Authors:  Marianne Defresne; Sophie Barbe; Thomas Schiex
Journal:  Int J Mol Sci       Date:  2021-10-29       Impact factor: 5.923

8.  Protein sequence design with a learned potential.

Authors:  Namrata Anand; Raphael Eguchi; Irimpan I Mathews; Carla P Perez; Alexander Derry; Russ B Altman; Po-Ssu Huang
Journal:  Nat Commun       Date:  2022-02-08       Impact factor: 14.919

Review 9.  Protein design via deep learning.

Authors:  Wenze Ding; Kenta Nakai; Haipeng Gong
Journal:  Brief Bioinform       Date:  2022-05-13       Impact factor: 13.994

10.  Artificial intelligence in the lab: ask not what your computer can do for you.

Authors:  Dick de Ridder
Journal:  Microb Biotechnol       Date:  2018-09-24       Impact factor: 5.813

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