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Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes

Prematurity is the foremost cause of death in children under 5 years of age. Genetics contributes to 25–40% of all preterm births (PTB) yet we still need to identify specific targets for intervention based on genetic pathways. This study involved the effect of region-specific non-synonymous variatio...

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Autores principales: Azmi, Muhammad Bilal, Khan, Waqasuddin, Azim, M. Kamran, Nisar, Muhammad Imran, Jehan, Fyezah
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9990928/
https://www.ncbi.nlm.nih.gov/pubmed/36881567
http://dx.doi.org/10.1371/journal.pone.0280305
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author Azmi, Muhammad Bilal
Khan, Waqasuddin
Azim, M. Kamran
Nisar, Muhammad Imran
Jehan, Fyezah
author_facet Azmi, Muhammad Bilal
Khan, Waqasuddin
Azim, M. Kamran
Nisar, Muhammad Imran
Jehan, Fyezah
author_sort Azmi, Muhammad Bilal
collection PubMed
description Prematurity is the foremost cause of death in children under 5 years of age. Genetics contributes to 25–40% of all preterm births (PTB) yet we still need to identify specific targets for intervention based on genetic pathways. This study involved the effect of region-specific non-synonymous variations and their transcript level mutational impact on protein functioning and stability by various in-silico tools. This investigation identifies potential therapeutic targets to manage the challenge of PTB, corresponding protein cavities and explores their binding interactions with intervening compounds. We searched 20 genes coding 55 PTB proteins from NCBI. Single Nucleotide Polymorphisms (SNPs) of concerned genes were extracted from ENSEMBL, and filtration of exonic variants (non-synonymous) was performed. Several in-silico downstream protein functional effect prediction tools were used to identify damaging variants. Rare coding variants were selected with an allele frequency of ≤1% in 1KGD, further supported by South Asian ALFA frequencies and GTEx gene/tissue expression database. CNN1, COL24A1, IQGAP2 and SLIT2 were identified with 7 rare pathogenic variants found in 17 transcript sequences. The functional impact analyses of rs532147352 (R>H) of CNN1 computed through PhD-SNP, PROVEAN, SNP&GO, PMut and MutPred2 algorithms showed impending deleterious effects, and the presence of this pathogenic mutation in CNN1 resulted in large decrease in protein structural stability (ΔΔG (kcal/mol). After structural protein identification, homology modelling of CNN1, which has been previously reported as a biomarker for the prediction of PTB, was performed, followed by the stereochemical quality checks of the 3D model. Blind docking approach were used to search the binding cavities and molecular interactions with progesterone, ranked with energetic estimations. Molecular interactions of CNN1 with progesterone were investigated through LigPlot 2D. Further, molecular docking experimentation of CNN1 showed the significant interactions at S102, L105, A106, K123, Y124 with five selected PTB-drugs, Allylestrenol (-7.56 kcal/mol), Hydroxyprogesterone caproate (-8.19 kcal/mol), Retosiban (-9.43 kcal/mol), Ritodrine (-7.39 kcal/mol) and Terbutaline (-6.87 kcal/mol). Calponin-1 gene and its molecular interaction analysis could serve as an intervention target for the prevention of PTB.
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spelling pubmed-99909282023-03-08 Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes Azmi, Muhammad Bilal Khan, Waqasuddin Azim, M. Kamran Nisar, Muhammad Imran Jehan, Fyezah PLoS One Research Article Prematurity is the foremost cause of death in children under 5 years of age. Genetics contributes to 25–40% of all preterm births (PTB) yet we still need to identify specific targets for intervention based on genetic pathways. This study involved the effect of region-specific non-synonymous variations and their transcript level mutational impact on protein functioning and stability by various in-silico tools. This investigation identifies potential therapeutic targets to manage the challenge of PTB, corresponding protein cavities and explores their binding interactions with intervening compounds. We searched 20 genes coding 55 PTB proteins from NCBI. Single Nucleotide Polymorphisms (SNPs) of concerned genes were extracted from ENSEMBL, and filtration of exonic variants (non-synonymous) was performed. Several in-silico downstream protein functional effect prediction tools were used to identify damaging variants. Rare coding variants were selected with an allele frequency of ≤1% in 1KGD, further supported by South Asian ALFA frequencies and GTEx gene/tissue expression database. CNN1, COL24A1, IQGAP2 and SLIT2 were identified with 7 rare pathogenic variants found in 17 transcript sequences. The functional impact analyses of rs532147352 (R>H) of CNN1 computed through PhD-SNP, PROVEAN, SNP&GO, PMut and MutPred2 algorithms showed impending deleterious effects, and the presence of this pathogenic mutation in CNN1 resulted in large decrease in protein structural stability (ΔΔG (kcal/mol). After structural protein identification, homology modelling of CNN1, which has been previously reported as a biomarker for the prediction of PTB, was performed, followed by the stereochemical quality checks of the 3D model. Blind docking approach were used to search the binding cavities and molecular interactions with progesterone, ranked with energetic estimations. Molecular interactions of CNN1 with progesterone were investigated through LigPlot 2D. Further, molecular docking experimentation of CNN1 showed the significant interactions at S102, L105, A106, K123, Y124 with five selected PTB-drugs, Allylestrenol (-7.56 kcal/mol), Hydroxyprogesterone caproate (-8.19 kcal/mol), Retosiban (-9.43 kcal/mol), Ritodrine (-7.39 kcal/mol) and Terbutaline (-6.87 kcal/mol). Calponin-1 gene and its molecular interaction analysis could serve as an intervention target for the prevention of PTB. Public Library of Science 2023-03-07 /pmc/articles/PMC9990928/ /pubmed/36881567 http://dx.doi.org/10.1371/journal.pone.0280305 Text en © 2023 Azmi et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Azmi, Muhammad Bilal
Khan, Waqasuddin
Azim, M. Kamran
Nisar, Muhammad Imran
Jehan, Fyezah
Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes
title Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes
title_full Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes
title_fullStr Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes
title_full_unstemmed Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes
title_short Identification of potential therapeutic intervening targets by in-silico analysis of nsSNPs in preterm birth-related genes
title_sort identification of potential therapeutic intervening targets by in-silico analysis of nssnps in preterm birth-related genes
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9990928/
https://www.ncbi.nlm.nih.gov/pubmed/36881567
http://dx.doi.org/10.1371/journal.pone.0280305
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