» Articles » PMID: 36913083

Computational Approaches for the Structure-Based Identification of Novel Inhibitors Targeting Nucleoid-Associated Proteins in Mycobacterium Tuberculosis

Overview
Journal Mol Biotechnol
Publisher Springer
Date 2023 Mar 13
PMID 36913083
Authors
Affiliations
Soon will be listed here.
Abstract

Implementation of computational tools in the identification of novel drug targets for Tuberculosis (TB) has been a promising area of research. TB has been a chronic infectious disease caused by Mycobacterium tuberculosis (Mtb) localized primarily on the lungs and it has been one of the most successful pathogen in the history of mankind. Extensively arising drug resistivity in TB has made it a global challenge and need for new drugs has become utmost important.The involvement of Nucleoid-Associated Proteins (NAPs) in maintaining the structure of the genomic material and regulating various cellular processes like transcription, DNA replication, repair and recombination makes significant, has opened a new arena to find the drugs targeting Mtb. The current study aims to identify potential inhibitors of NAPs through a computational approach. In the present work we worked on the eight NAPs of Mtb, namely, Lsr2, EspR, HupB, HNS, NapA, mIHF and NapM. The structural modelling and analysis of these NAPs were carried out. Moreover, molecular interaction were checked and binding energy was identified for 2500 FDA-approved drugs that were selected for antagonist analysis to choose novel inhibitors targeting NAPs of Mtb. Drugs including Amikacin, streptomycin, kanamycin, and isoniazid along with eight FDA-approved molecules that were found to be potential novel targets for these mycobacterial NAPs and have an impact on their functions. The potentiality of several anti-tubercular drugs as therapeutic agents identified through computational modelling and simulation unlocks a new gateway for accomplishing the goal to treat TB.

References
1.
Singhvi N, Gupta V, Gaur M, Sharma V, Puri A, Singh Y . Interplay of Human Gut Microbiome in Health and Wellness. Indian J Microbiol. 2020; 60(1):26-36. PMC: 7000599. DOI: 10.1007/s12088-019-00825-x. View

2.
Mohammadzadeh R, Ghazvini K, Farsiani H, Soleimanpour S . extracellular vesicles: exploitation for vaccine technology and diagnostic methods. Crit Rev Microbiol. 2020; 47(1):13-33. DOI: 10.1080/1040841X.2020.1830749. View

3.
Bhargava A, Bhargava M, Juneja A . Social determinants of tuberculosis: context, framework, and the way forward to ending TB in India. Expert Rev Respir Med. 2020; 15(7):867-883. DOI: 10.1080/17476348.2021.1832469. View

4.
Sudbury E, Clifford V, Messina N, Song R, Curtis N . Mycobacterium tuberculosis-specific cytokine biomarkers to differentiate active TB and LTBI: A systematic review. J Infect. 2020; 81(6):873-881. DOI: 10.1016/j.jinf.2020.09.032. View

5.
Rowneki M, Aronson N, Du P, Sachs P, Blakemore R, Chakravorty S . Detection of drug resistant Mycobacterium tuberculosis by high-throughput sequencing of DNA isolated from acid fast bacilli smears. PLoS One. 2020; 15(5):e0232343. PMC: 7209238. DOI: 10.1371/journal.pone.0232343. View