Literature DB >> 31390220

Getting to Know Your Neighbor: Protein Structure Prediction Comes of Age with Contextual Machine Learning.

Jack Hanson1, Kuldip K Paliwal1, Thomas Litfin2, Yuedong Yang3, Yaoqi Zhou2.   

Abstract

The folding of a protein structure is a process governed by both local and nonlocal interactions. While incorporating local dependencies into a machine learning algorithm for protein structure prediction is simple and has been exploited for some time, the modeling of long-range dependences which result from structurally-neighboring residues has only recently begun to be addressed. Structural properties designed to localize the prediction space from direct tertiary structure prediction, such as secondary structure, contact maps, and intrinsic disorder, among others, have begun to greatly benefit from machine learning models capable of modeling a widened, potentially global protein context. This has led to a direct enhancement of the quality of predicted tertiary structures through both the optimization of structural constraints and improved reliability of alignments to structural templates. These improvements have stemmed from the application of recurrent and convolutional neural network architectures effective not only at innate sequential context propagation but also deep feature extraction due to novel skip connections and normalization techniques allowing for greatly enhanced error back-propagation. The recent results from independent blind testing in Critical Assessment of protein Structure Prediction 13 have signaled the beginning of a new generation of protein structure prediction through the utilization of these contextual techniques. The ripples from advancements in the determination of one-dimensional and two-dimensional structural properties have us moving ever closer to the solution of the protein structure prediction problem.

Entities:  

Keywords:  contextual learning; machine learning; neural networks; protein structure prediction

Mesh:

Substances:

Year:  2019        PMID: 31390220     DOI: 10.1089/cmb.2019.0193

Source DB:  PubMed          Journal:  J Comput Biol        ISSN: 1066-5277            Impact factor:   1.479


  6 in total

1.  Improved 3-D Protein Structure Predictions using Deep ResNet Model.

Authors:  S Geethu; E R Vimina
Journal:  Protein J       Date:  2021-09-12       Impact factor: 2.371

Review 2.  Artificial Intelligence in Drug Discovery: A Comprehensive Review of Data-driven and Machine Learning Approaches.

Authors:  Hyunho Kim; Eunyoung Kim; Ingoo Lee; Bongsung Bae; Minsu Park; Hojung Nam
Journal:  Biotechnol Bioprocess Eng       Date:  2021-01-07       Impact factor: 3.386

3.  Accurate Machine Learning Prediction of Protein Circular Dichroism Spectra with Embedded Density Descriptors.

Authors:  Luyuan Zhao; Jinxiao Zhang; Yaolong Zhang; Sheng Ye; Guozhen Zhang; Xin Chen; Bin Jiang; Jun Jiang
Journal:  JACS Au       Date:  2021-11-25

4.  Sequence-based prediction of protein binding regions and drug-target interactions.

Authors:  Ingoo Lee; Hojung Nam
Journal:  J Cheminform       Date:  2022-02-08       Impact factor: 5.514

5.  ProteinUnet-An efficient alternative to SPIDER3-single for sequence-based prediction of protein secondary structures.

Authors:  Krzysztof Kotowski; Tomasz Smolarczyk; Irena Roterman-Konieczna; Katarzyna Stapor
Journal:  J Comput Chem       Date:  2020-10-15       Impact factor: 3.376

6.  SPOT-Contact-LM: Improving Single-Sequence-Based Prediction of Protein Contact Map using a Transformer Language Model.

Authors:  Jaspreet Singh; Thomas Litfin; Jaswinder Singh; Kuldip Paliwal; Yaoqi Zhou
Journal:  Bioinformatics       Date:  2022-02-01       Impact factor: 6.931

  6 in total

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