Research articles
ScienceAsia 49 (2023): 169-176 |doi:
10.2306/scienceasia1513-1874.2022.152
Prediction of substrate binding on mobile colistin resistance
using in silico approach
Chonnikan Hanpaiboola, Phornphimon Maitaradb, Thanyada Rungrotmongkola,c,*
ABSTRACT: Colistin, an antibiotic, has become a last-resort therapy for serious infections caused by Antimicrobial
Resistance (AMR) diseases during the last decade. The positively charged colistin coupled to the negatively charged lipid
A can rupture the outer cell membrane of Gram-negative bacteria. However, the presence of a mobile colistin resistance
gene (mcr gene) in Enterobacteriaceae has resulted in colistin resistance. MCR function transfers phosphoethanolamine
(PEA) of phosphatidylethanolamine (PE) to lipid A, neutralizing its negative charge and preventing the binding of
positively charged colistin. Currently, mcr isoforms varied from mcr-1 to mcr-10 have been discovered in environmental
and clinical isolates, but only the three-dimensional structures of the catalytic portion of two MCR proteins, MCR-1 and
MCR-2, were crystallized. Full-length MCR protein structures may be necessary for understanding MCR function and
developing inhibitors; therefore, the structures of MCR-1 to 10 proteins were predicted by novel accurate protein
prediction utilizing Deep Learning (RoseTTAFold). Based on multiple-sequence alignment and superposition on all
MCR protein structures, there are six conserved residues at the active site, HIS1
, HIS2
, HIS3
, ASP, GLU, and THR.
Tunnel analysis was utilized to determine the possible routes for substrate PE entering into MCR proteins. Among the
four substrate-binding paths to the MCR active site (tunnels 1?4), PE preferentially binds at the active site via tunnel 1.
This discovery not only anticipates PE as a substrate-binding to MCR protein, but it might also be beneficial for guiding
MCR inhibitors.
Download PDF
293 Downloads 1584 Views
a |
Center of Excellence in Biocatalyst and Sustainable Biotechnology, Department of Biochemistry, Faculty of Science,
Chulalongkorn University, Bangkok 10330 Thailand |
b |
Research Center of Nano Science and Technology, Department of Chemistry, College of Science,
Shanghai University, Shanghai 200444 China |
c |
Program in Bioinformatics and Computational Biology, Graduate School, Chulalongkorn University,
Bangkok 10330 Thailand |
* Corresponding author, E-mail: thanyada.r@chula.ac.th
Received 22 May 2022, Accepted 11 Oct 2022
|