Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk Protein

Bioinformatic analysis methods are an auxiliary tool in the preliminary stage of research into biocatalytic conversion of proteins with predicted release of biologically active peptides. However, there are a number of factors ignored in current strategies for designing biologically active peptides,...

Full description

Saved in:
Bibliographic Details
Main Authors: Alexandr G. Kruchinin, Ekaterina I. Bolshakova
Format: Article
Language:English
Published: Kemerovo State University 2022-04-01
Series:Техника и технология пищевых производств
Subjects:
Online Access:https://fptt.ru/en/issues/20192/20136/
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1846093083904573440
author Alexandr G. Kruchinin
Ekaterina I. Bolshakova
author_facet Alexandr G. Kruchinin
Ekaterina I. Bolshakova
author_sort Alexandr G. Kruchinin
collection DOAJ
description Bioinformatic analysis methods are an auxiliary tool in the preliminary stage of research into biocatalytic conversion of proteins with predicted release of biologically active peptides. However, there are a number of factors ignored in current strategies for designing biologically active peptides, which prevents the complete prediction of their biological properties. This determines the relevance of the research objective, i.e. developing a hybrid strategy for bioinformatic modeling to study biologically active peptides of milk protein. The new strategy ranks key criteria based on high-performance algorithms of proteomic database. The research featured the scientific publications on in silico methods applied to biologically active peptides. Modern taxonometric methods of information retrieval were applied using the RSCI, Scopus and Web of Science databases. The article introduces and describes step by step the optimal in silico hybrid strategy algorithm for studying biologically active milk protein peptides. The algorithm takes into account the safety assessment of all hydrolysis products, their physicochemical and technological properties. The strategy algorithm relies on analytical data on the protein profile, the amino acid sequence of proteins that make up the raw material, taking into account their polymorphism, and the subsequent identification of bioactive amino acid sites in the protein structure. The algorithm selects optimal enzyme preparations, as well as models the hydrolysis and assesses the peptide bioactivity using proteomic databases. At the preliminary stage of protein hydrolysis, the new in silico strategy scientifically predicts the targeted release of stable peptide complexes of biologically active peptides with proven bioactivity, safety and sensory characteristics. The hybrid algorithm contributes to accumulation of the necessary primary data so as to reduce the time and cost of laboratory experiments.
format Article
id doaj-art-6d3d4fe95e01446f942f755e366318f3
institution Kabale University
issn 2074-9414
2313-1748
language English
publishDate 2022-04-01
publisher Kemerovo State University
record_format Article
series Техника и технология пищевых производств
spelling doaj-art-6d3d4fe95e01446f942f755e366318f32025-01-02T19:16:35ZengKemerovo State UniversityТехника и технология пищевых производств2074-94142313-17482022-04-01521465710.21603/2074-9414-2022-1-46-57Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk ProteinAlexandr G. Kruchinin0https://orcid.org/0000-0002-3227-8133Ekaterina I. Bolshakova1https://orcid.org/0000-0002-8427-0387All-Russian Dairy Research Institute, Moscow, RussiaAll-Russian Dairy Research Institute, Moscow, RussiaBioinformatic analysis methods are an auxiliary tool in the preliminary stage of research into biocatalytic conversion of proteins with predicted release of biologically active peptides. However, there are a number of factors ignored in current strategies for designing biologically active peptides, which prevents the complete prediction of their biological properties. This determines the relevance of the research objective, i.e. developing a hybrid strategy for bioinformatic modeling to study biologically active peptides of milk protein. The new strategy ranks key criteria based on high-performance algorithms of proteomic database. The research featured the scientific publications on in silico methods applied to biologically active peptides. Modern taxonometric methods of information retrieval were applied using the RSCI, Scopus and Web of Science databases. The article introduces and describes step by step the optimal in silico hybrid strategy algorithm for studying biologically active milk protein peptides. The algorithm takes into account the safety assessment of all hydrolysis products, their physicochemical and technological properties. The strategy algorithm relies on analytical data on the protein profile, the amino acid sequence of proteins that make up the raw material, taking into account their polymorphism, and the subsequent identification of bioactive amino acid sites in the protein structure. The algorithm selects optimal enzyme preparations, as well as models the hydrolysis and assesses the peptide bioactivity using proteomic databases. At the preliminary stage of protein hydrolysis, the new in silico strategy scientifically predicts the targeted release of stable peptide complexes of biologically active peptides with proven bioactivity, safety and sensory characteristics. The hybrid algorithm contributes to accumulation of the necessary primary data so as to reduce the time and cost of laboratory experiments.https://fptt.ru/en/issues/20192/20136/milk proteinspeptidesdatabasebioinformaticsin silico
spellingShingle Alexandr G. Kruchinin
Ekaterina I. Bolshakova
Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk Protein
Техника и технология пищевых производств
milk proteins
peptides
database
bioinformatics
in silico
title Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk Protein
title_full Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk Protein
title_fullStr Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk Protein
title_full_unstemmed Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk Protein
title_short Hybrid Strategy of Bioinformatics Modeling (in silico): Biologically Active Peptides of Milk Protein
title_sort hybrid strategy of bioinformatics modeling in silico biologically active peptides of milk protein
topic milk proteins
peptides
database
bioinformatics
in silico
url https://fptt.ru/en/issues/20192/20136/
work_keys_str_mv AT alexandrgkruchinin hybridstrategyofbioinformaticsmodelinginsilicobiologicallyactivepeptidesofmilkprotein
AT ekaterinaibolshakova hybridstrategyofbioinformaticsmodelinginsilicobiologicallyactivepeptidesofmilkprotein