Literature DB >> 31388850

PaleAle 5.0: prediction of protein relative solvent accessibility by deep learning.

Manaz Kaleel1, Mirko Torrisi1, Catherine Mooney1, Gianluca Pollastri2.   

Abstract

Predicting the three-dimensional structure of proteins is a long-standing challenge of computational biology, as the structure (or lack of a rigid structure) is well known to determine a protein's function. Predicting relative solvent accessibility (RSA) of amino acids within a protein is a significant step towards resolving the protein structure prediction challenge especially in cases in which structural information about a protein is not available by homology transfer. Today, arguably the core of the most powerful prediction methods for predicting RSA and other structural features of proteins is some form of deep learning, and all the state-of-the-art protein structure prediction tools rely on some machine learning algorithm. In this article we present a deep neural network architecture composed of stacks of bidirectional recurrent neural networks and convolutional layers which is capable of mining information from long-range interactions within a protein sequence and apply it to the prediction of protein RSA using a novel encoding method that we shall call "clipped". The final system we present, PaleAle 5.0, which is available as a public server, predicts RSA into two, three and four classes at an accuracy exceeding 80% in two classes, surpassing the performances of all the other predictors we have benchmarked.

Entities:  

Keywords:  Deep learning; Evolutionary information; More; Protein structure prediction; Solvent accessibility

Mesh:

Substances:

Year:  2019        PMID: 31388850     DOI: 10.1007/s00726-019-02767-6

Source DB:  PubMed          Journal:  Amino Acids        ISSN: 0939-4451            Impact factor:   3.520


  7 in total

1.  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

2.  End-to-End Deep Learning Model to Predict and Design Secondary Structure Content of Structural Proteins.

Authors:  Chi-Hua Yu; Wei Chen; Yu-Hsuan Chiang; Kai Guo; Zaira Martin Moldes; David L Kaplan; Markus J Buehler
Journal:  ACS Biomater Sci Eng       Date:  2022-02-07

3.  BIAPSS: A Comprehensive Physicochemical Analyzer of Proteins Undergoing Liquid-Liquid Phase Separation.

Authors:  Aleksandra E Badaczewska-Dawid; Vladimir N Uversky; Davit A Potoyan
Journal:  Int J Mol Sci       Date:  2022-05-31       Impact factor: 6.208

Review 4.  Deep learning methods in protein structure prediction.

Authors:  Mirko Torrisi; Gianluca Pollastri; Quan Le
Journal:  Comput Struct Biotechnol J       Date:  2020-01-22       Impact factor: 7.271

5.  Solvent Accessibility of Residues Undergoing Pathogenic Variations in Humans: From Protein Structures to Protein Sequences.

Authors:  Castrense Savojardo; Matteo Manfredi; Pier Luigi Martelli; Rita Casadio
Journal:  Front Mol Biosci       Date:  2021-01-07

Review 6.  Recent Applications of Deep Learning Methods on Evolution- and Contact-Based Protein Structure Prediction.

Authors:  Donghyuk Suh; Jai Woo Lee; Sun Choi; Yoonji Lee
Journal:  Int J Mol Sci       Date:  2021-06-02       Impact factor: 5.923

7.  iEnhancer-GAN: A Deep Learning Framework in Combination with Word Embedding and Sequence Generative Adversarial Net to Identify Enhancers and Their Strength.

Authors:  Runtao Yang; Feng Wu; Chengjin Zhang; Lina Zhang
Journal:  Int J Mol Sci       Date:  2021-03-30       Impact factor: 5.923

  7 in total

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