Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor

Collagen-derived cryptic peptides (cryptides) are biologically active peptides derived from the proteolytic digestion of collagen protein. These cryptides possess a multitude of activities, including antihypertensive, antiproliferative, and antibacterial. The latter, however, has not been extensivel...

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Main Authors: Ahmad Al-Khdhairawi,, Siti Mariani Mhd-Marzuki,, Tan, Zi-Shen, Narin Shan,, Danish Sanuri,, Akbar, Rahmad, Su, Datt Lam, Fareed Sairi,
Format: Article
Language:English
Published: Penerbit Universiti Kebangsaan Malaysia 2022
Online Access:http://journalarticle.ukm.my/21694/1/ML%206.pdf
http://journalarticle.ukm.my/21694/
https://jms.mabjournal.com/index.php/mab/index
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spelling my-ukm.journal.216942023-06-12T07:46:01Z http://journalarticle.ukm.my/21694/ Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor Ahmad Al-Khdhairawi, Siti Mariani Mhd-Marzuki, Tan, Zi-Shen Narin Shan, Danish Sanuri, Akbar, Rahmad Su, Datt Lam Fareed Sairi, Collagen-derived cryptic peptides (cryptides) are biologically active peptides derived from the proteolytic digestion of collagen protein. These cryptides possess a multitude of activities, including antihypertensive, antiproliferative, and antibacterial. The latter, however, has not been extensively studied. The cryptides are mainly obtained from the protein hydrolysate, followed by characterizations to elucidate the function, limiting the number of cryptides investigated within a short period. The recent threat of antimicrobial resistance microorganisms (AMR) to global health requires the rapid development of new therapeutic drugs. The current study aims to predict antimicrobial peptides (AMP) from collagen-derived cryptides, followed by elucidating their potential to inhibit biofilm-related precursors in Klebsiella pneumoniae using in silico approach. Therefore, cryptides derived from collagen amino acid sequences of various types and species were subjected to online machine-learning platforms (i.e., CAMPr3, DBAASP, dPABBs, Hemopred, and ToxinPred). The peptide-protein interaction was elucidated using molecular docking, molecular dynamics, and MM-PBSA analysis against MrkH, a K. pneumoniae’s transcriptional regulator of type 3 fimbriae that promote biofilm formation. As a result, six potential antibiofilm inhibitory cryptides were screened and docked against MrkH. All six peptides bind stronger than the MrkH ligand (c-di-GMP; C2E). Penerbit Universiti Kebangsaan Malaysia 2022 Article PeerReviewed application/pdf en http://journalarticle.ukm.my/21694/1/ML%206.pdf Ahmad Al-Khdhairawi, and Siti Mariani Mhd-Marzuki, and Tan, Zi-Shen and Narin Shan, and Danish Sanuri, and Akbar, Rahmad and Su, Datt Lam and Fareed Sairi, (2022) Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor. Malaysian Applied Biology, 51 (5). pp. 59-75. ISSN 0126-8643 https://jms.mabjournal.com/index.php/mab/index
institution Universiti Kebangsaan Malaysia
building Tun Sri Lanang Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Kebangsaan Malaysia
content_source UKM Journal Article Repository
url_provider http://journalarticle.ukm.my/
language English
description Collagen-derived cryptic peptides (cryptides) are biologically active peptides derived from the proteolytic digestion of collagen protein. These cryptides possess a multitude of activities, including antihypertensive, antiproliferative, and antibacterial. The latter, however, has not been extensively studied. The cryptides are mainly obtained from the protein hydrolysate, followed by characterizations to elucidate the function, limiting the number of cryptides investigated within a short period. The recent threat of antimicrobial resistance microorganisms (AMR) to global health requires the rapid development of new therapeutic drugs. The current study aims to predict antimicrobial peptides (AMP) from collagen-derived cryptides, followed by elucidating their potential to inhibit biofilm-related precursors in Klebsiella pneumoniae using in silico approach. Therefore, cryptides derived from collagen amino acid sequences of various types and species were subjected to online machine-learning platforms (i.e., CAMPr3, DBAASP, dPABBs, Hemopred, and ToxinPred). The peptide-protein interaction was elucidated using molecular docking, molecular dynamics, and MM-PBSA analysis against MrkH, a K. pneumoniae’s transcriptional regulator of type 3 fimbriae that promote biofilm formation. As a result, six potential antibiofilm inhibitory cryptides were screened and docked against MrkH. All six peptides bind stronger than the MrkH ligand (c-di-GMP; C2E).
format Article
author Ahmad Al-Khdhairawi,
Siti Mariani Mhd-Marzuki,
Tan, Zi-Shen
Narin Shan,
Danish Sanuri,
Akbar, Rahmad
Su, Datt Lam
Fareed Sairi,
spellingShingle Ahmad Al-Khdhairawi,
Siti Mariani Mhd-Marzuki,
Tan, Zi-Shen
Narin Shan,
Danish Sanuri,
Akbar, Rahmad
Su, Datt Lam
Fareed Sairi,
Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor
author_facet Ahmad Al-Khdhairawi,
Siti Mariani Mhd-Marzuki,
Tan, Zi-Shen
Narin Shan,
Danish Sanuri,
Akbar, Rahmad
Su, Datt Lam
Fareed Sairi,
author_sort Ahmad Al-Khdhairawi,
title Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor
title_short Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor
title_full Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor
title_fullStr Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor
title_full_unstemmed Collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against Klebsiella pneumoniae biofilm synthesis precursor
title_sort collagen-derived cryptides : machine-learning prediction and molecular dynamic interaction against klebsiella pneumoniae biofilm synthesis precursor
publisher Penerbit Universiti Kebangsaan Malaysia
publishDate 2022
url http://journalarticle.ukm.my/21694/1/ML%206.pdf
http://journalarticle.ukm.my/21694/
https://jms.mabjournal.com/index.php/mab/index
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score 13.211869