Literature DB >> 32906141

A Comparative Analysis of Allergen Proteins between Plants and Animals Using Several Computational Tools and Chou's PseAAC Concept.

Mandana Behbahani1, Parisa Rabiei1, Hassan Mohabatkar2.   

Abstract

BACKGROUND: A large number of allergens are derived from plant and animal proteins. A major challenge for researchers is to study the possible allergenic properties of proteins. The aim of this study was in silico analysis and comparison of several physiochemical and structural features of plant- and animal-derived allergen proteins, as well as classifying these proteins based on Chou's pseudo-amino acid composition (PseAAC) concept combined with bioinformatics algorithms.
METHODS: The physiochemical properties and secondary structure of plant and animal allergens were studied. The classification of the sequences was done using the PseAAC concept incorporated with the deep learning algorithm. Conserved motifs of plant and animal proteins were discovered using the MEME tool. B-cell and T-cell epitopes of the proteins were predicted in conserved motifs. Allergenicity and amino acid composition of epitopes were also analyzed via bioinformatics servers.
RESULTS: In comparison of physiochemical features of animal and plant allergens, extinction coefficient was different significantly. Secondary structure prediction showed more random coiled structure in plant allergen proteins compared with animal proteins. Classification of proteins based on PseAAC achieved 88.24% accuracy. The amino acid composition study of predicted B- and T-cell epitopes revealed more aliphatic index in plant-derived epitopes.
CONCLUSIONS: The results indicated that bioinformatics-based studies could be useful in comparing plant and animal allergens.
© 2020 S. Karger AG, Basel.

Keywords:  Allergen; Epitope prediction; Physiochemical properties; PseAAC; Secondary structure

Year:  2020        PMID: 32906141     DOI: 10.1159/000509084

Source DB:  PubMed          Journal:  Int Arch Allergy Immunol        ISSN: 1018-2438            Impact factor:   2.749


  2 in total

1.  A Comparative Analysis of Novel Deep Learning and Ensemble Learning Models to Predict the Allergenicity of Food Proteins.

Authors:  Liyang Wang; Dantong Niu; Xinjie Zhao; Xiaoya Wang; Mengzhen Hao; Huilian Che
Journal:  Foods       Date:  2021-04-09

2.  Computational Study on Temperature Driven Structure-Function Relationship of Polysaccharide Producing Bacterial Glycosyl Transferase Enzyme.

Authors:  Patricio González-Faune; Ignacio Sánchez-Arévalo; Shrabana Sarkar; Krishnendu Majhi; Rajib Bandopadhyay; Gustavo Cabrera-Barjas; Aleydis Gómez; Aparna Banerjee
Journal:  Polymers (Basel)       Date:  2021-05-28       Impact factor: 4.329

  2 in total

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