Title of article :
Centrality Analysis of Protein-Protein Interaction Networks and Molecular Docking Prioritize Potential Drug-Targets in Type 1 Diabetes
Author/Authors :
Soofi, Asma Department of Physical Chemistry - School of Chemistry - College of Sciences - University of Tehran, Tehran, Iran , Taghizadeh, Mohammad Bioinformatics Department - Institute of Biochemistry and Biophysics - Tehran University, Tehran, Iran , Tabatabaei, Mohammad Medical Informatics Department - School of Medicine - Mashhad University of Medical Sciences, Mashhad, Iran , Rezaei Taviranid, Mostafa Medical Informatics Department - School of Medicine - Mashhad University of Medical Sciences, Mashhad, Iran , Shakib, Heeva Proteomics Research Center - Department of Basic Science - Faculty of Paramedical Sciences - Shahid Beheshti University of Medical Sciences, Tehran, Iran , Namakif, Saeed Immunology Department - Faculty of Medical Sciences - Shahid Beheshti University of Medical Sciences, Tehran, Iran , Safari Alighiarlo, Nahid Endocrine Research Center - Institute of Endocrinology and Metabolism - Iran University of Medical Sciences, Tehran, Iran
Abstract :
Type 1 diabetes (T1D) occurs as a consequence of an autoimmune attack against pancreatic
β- cells. Due to a lack of a clear understanding of the T1D pathogenesis, the identification of
effective therapies for T1D is the active area in the research. The study purpose was to prioritize
potential drugs and targets in T1D via systems biology approach. Gene expression data of
peripheral blood mononuclear cells (PBMCs) and pancreatic β-cells in T1D were analyzed
and differential expressed genes were integrated with protein-protein interactions (PPI) data.
Multiple topological centrality parameters of extracted query-query PPI (QQPPI) networks were
calculated and the interaction of more central proteins with drugs was investigated. Molecular
docking was performed to further predict the interactions between drugs and the binding sites
of targets. Central proteins were identified by the analysis of PBMC (MYC, ERBB2, PSMA1,
ABL1 and HSP90AA1) and pancreatic β-cells (HSP90AB1, ESR1, RELA, RAC1, NFKB1,
NFKB2, IKBKE, ARRB2 and SRC) QQPPI networks. Thirteen drugs which targeted eight
central proteins were identified by further analysis of drug-target interactions. Some drugs
which investigated for diabetes treatment in the experimental models of T1D were prioritized
by literature verification, including melatonin, resveratrol, lapatinib, geldanamycin, eugenol and
fostaminib. Finally, according on molecular docking analysis, lapatinib-ERBB2 and eugenol-
ESR1 exhibited highest and lowest binding energy, respectively. This study presented promising
results for the prioritization of potential drug-targets which might facilitate T1D targeted therapy
and its drug discovery process more effectively.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Type 1 diabetes , Systems biology approach , Protein-protein interaction network , Topological centrality , Molecular docking
Journal title :
Iranian Journal of Pharmaceutical Research(IJPR)