Cargando…

Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis

Type 2 diabetes (T2D) is a chronic metabolic disease defined by insulin insensitivity corresponding to impaired insulin sensitivity, decreased insulin production, and eventually failure of beta cells in the pancreas. There is a 30–40 percent higher risk of developing T2D in active smokers. Moreover,...

Descripción completa

Detalles Bibliográficos
Autores principales: Ripon Rouf, Abu Sayeed Md., Amin, Md. Al, Islam, Md. Khairul, Haque, Farzana, Ahmed, Kazi Rejvee, Rahman, Md. Ataur, Islam, Md. Zahidul, Kim, Bonglee
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9323276/
https://www.ncbi.nlm.nih.gov/pubmed/35889263
http://dx.doi.org/10.3390/molecules27144390
_version_ 1784756510559043584
author Ripon Rouf, Abu Sayeed Md.
Amin, Md. Al
Islam, Md. Khairul
Haque, Farzana
Ahmed, Kazi Rejvee
Rahman, Md. Ataur
Islam, Md. Zahidul
Kim, Bonglee
author_facet Ripon Rouf, Abu Sayeed Md.
Amin, Md. Al
Islam, Md. Khairul
Haque, Farzana
Ahmed, Kazi Rejvee
Rahman, Md. Ataur
Islam, Md. Zahidul
Kim, Bonglee
author_sort Ripon Rouf, Abu Sayeed Md.
collection PubMed
description Type 2 diabetes (T2D) is a chronic metabolic disease defined by insulin insensitivity corresponding to impaired insulin sensitivity, decreased insulin production, and eventually failure of beta cells in the pancreas. There is a 30–40 percent higher risk of developing T2D in active smokers. Moreover, T2D patients with active smoking may gradually develop many complications. However, there is still no significant research conducted to solve the issue. Hence, we have proposed a highthroughput network-based quantitative pipeline employing statistical methods. Transcriptomic and GWAS data were analysed and obtained from type 2 diabetes patients and active smokers. Differentially Expressed Genes (DEGs) resulted by comparing T2D patients’ and smokers’ tissue samples to those of healthy controls of gene expression transcriptomic datasets. We have found 55 dysregulated genes shared in people with type 2 diabetes and those who smoked, 27 of which were upregulated and 28 of which were downregulated. These identified DEGs were functionally annotated to reveal the involvement of cell-associated molecular pathways and GO terms. Moreover, protein–protein interaction analysis was conducted to discover hub proteins in the pathways. We have also identified transcriptional and post-transcriptional regulators associated with T2D and smoking. Moreover, we have analysed GWAS data and found 57 common biomarker genes between T2D and smokers. Then, Transcriptomic and GWAS analyses are compared for more robust outcomes and identified 1 significant common gene, 19 shared significant pathways and 12 shared significant GOs. Finally, we have discovered protein–drug interactions for our identified biomarkers.
format Online
Article
Text
id pubmed-9323276
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-93232762022-07-27 Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis Ripon Rouf, Abu Sayeed Md. Amin, Md. Al Islam, Md. Khairul Haque, Farzana Ahmed, Kazi Rejvee Rahman, Md. Ataur Islam, Md. Zahidul Kim, Bonglee Molecules Article Type 2 diabetes (T2D) is a chronic metabolic disease defined by insulin insensitivity corresponding to impaired insulin sensitivity, decreased insulin production, and eventually failure of beta cells in the pancreas. There is a 30–40 percent higher risk of developing T2D in active smokers. Moreover, T2D patients with active smoking may gradually develop many complications. However, there is still no significant research conducted to solve the issue. Hence, we have proposed a highthroughput network-based quantitative pipeline employing statistical methods. Transcriptomic and GWAS data were analysed and obtained from type 2 diabetes patients and active smokers. Differentially Expressed Genes (DEGs) resulted by comparing T2D patients’ and smokers’ tissue samples to those of healthy controls of gene expression transcriptomic datasets. We have found 55 dysregulated genes shared in people with type 2 diabetes and those who smoked, 27 of which were upregulated and 28 of which were downregulated. These identified DEGs were functionally annotated to reveal the involvement of cell-associated molecular pathways and GO terms. Moreover, protein–protein interaction analysis was conducted to discover hub proteins in the pathways. We have also identified transcriptional and post-transcriptional regulators associated with T2D and smoking. Moreover, we have analysed GWAS data and found 57 common biomarker genes between T2D and smokers. Then, Transcriptomic and GWAS analyses are compared for more robust outcomes and identified 1 significant common gene, 19 shared significant pathways and 12 shared significant GOs. Finally, we have discovered protein–drug interactions for our identified biomarkers. MDPI 2022-07-08 /pmc/articles/PMC9323276/ /pubmed/35889263 http://dx.doi.org/10.3390/molecules27144390 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ripon Rouf, Abu Sayeed Md.
Amin, Md. Al
Islam, Md. Khairul
Haque, Farzana
Ahmed, Kazi Rejvee
Rahman, Md. Ataur
Islam, Md. Zahidul
Kim, Bonglee
Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis
title Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis
title_full Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis
title_fullStr Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis
title_full_unstemmed Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis
title_short Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis
title_sort statistical bioinformatics to uncover the underlying biological mechanisms that linked smoking with type 2 diabetes patients using transcritpomic and gwas analysis
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9323276/
https://www.ncbi.nlm.nih.gov/pubmed/35889263
http://dx.doi.org/10.3390/molecules27144390
work_keys_str_mv AT riponroufabusayeedmd statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis
AT aminmdal statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis
AT islammdkhairul statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis
AT haquefarzana statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis
AT ahmedkazirejvee statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis
AT rahmanmdataur statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis
AT islammdzahidul statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis
AT kimbonglee statisticalbioinformaticstouncovertheunderlyingbiologicalmechanismsthatlinkedsmokingwithtype2diabetespatientsusingtranscritpomicandgwasanalysis