Back to Search
Start Over
Methods for Identifying Microbial Natural Product Compounds that Target Kinetoplastid RNA Structural Motifs by Homology and De Novo Modeled 18S rRNA
- Source :
- International Journal of Molecular Sciences, International Journal of Molecular Sciences, Vol 22, Iss 4493, p 4493 (2021), Volume 22, Issue 9
- Publication Year :
- 2021
- Publisher :
- MDPI, 2021.
-
Abstract
- The development of novel anti-infectives against Kinetoplastids pathogens targeting proteins is a big problem occasioned by the antigenic variation in these parasites. This is also a global concern due to the zoonosis of these parasites, as they infect both humans and animals. Therefore, we need not only to create novel antibiotics, but also to speed up the development pipeline for these antibiotics. This may be achieved by using novel drug targets for Kinetoplastids drug discovery. In this study, we focused our attention on motifs of rRNA molecules that have been created using homology modeling. The RNA is the most ambiguous biopolymer in the kinetoplatid, which carries many different functions. For instance, tRNAs, rRNAs, and mRNAs are essential for gene expression both in the pro-and eukaryotes. However, all these types of RNAs have sequences with unique 3D structures that are specific for kinetoplastids only and can be used to shut down essential biochemical processes in kinetoplastids only. All these features make RNA very potent targets for antibacterial drug development. Here, we combine in silico methods combined with both computational biology and structure prediction tools to address our hypothesis. In this study, we outline a systematic approach for identifying kinetoplastid rRNA-ligand interactions and, more specifically, techniques that can be used to identify small molecules that target particular RNA. The high-resolution optimized model structures of these kineoplastids were generated using RNA 123, where all the stereochemical conflicts were solved and energies minimized to attain the best biological qualities. The high-resolution optimized model’s structures of these kinetoplastids were generated using RNA 123 where all the stereochemical conflicts were solved and energies minimized to attain the best biological qualities. These models were further analyzed to give their docking assessment reliability. Docking strategies, virtual screening, and fishing approaches successfully recognized novel and myriad macromolecular targets for the myxobacterial natural products with high binding affinities to exploit the unmet therapeutic needs. We demonstrate a sensible exploitation of virtual screening strategies to 18S rRNA using natural products interfaced with classical maximization of their efficacy in phamacognosy strategies that are well established. Integration of these virtual screening strategies in natural products chemistry and biochemistry research will spur the development of potential interventions to these tropical neglected diseases.
- Subjects :
- 0301 basic medicine
Computer science
natural products
Genes, Protozoan
Protozoan Proteins
Ligands
01 natural sciences
Drug Discovery
Protein Interaction Mapping
Biology (General)
Kinetoplastida
Leishmaniasis
Spectroscopy
Drug discovery
General Medicine
Computer Science Applications
Molecular Docking Simulation
Chemistry
18S rRNA
homology and de novo modeling
Natural Products Chemistry
QH301-705.5
In silico
Computational biology
Molecular Dynamics Simulation
010402 general chemistry
Catalysis
Article
Inorganic Chemistry
03 medical and health sciences
Trypanosomiasis
RNA, Ribosomal, 18S
Animals
Humans
Chagas Disease
Homology modeling
Physical and Theoretical Chemistry
Molecular Biology
QD1-999
Virtual screening
Biological Products
Organic Chemistry
RNA
Computational Biology
molecular docking
Ribosomal RNA
virtual screening
0104 chemical sciences
kinetoplastids
030104 developmental biology
Docking (molecular)
RNA, Ribosomal
Subjects
Details
- Language :
- English
- ISSN :
- 14220067
- Volume :
- 22
- Issue :
- 9
- Database :
- OpenAIRE
- Journal :
- International Journal of Molecular Sciences
- Accession number :
- edsair.doi.dedup.....9c82fa2754b7225b0b8a53a5f9c2ca59