Issue 5, 2022

Identification of novel candidates for inhibition of LasR, a quorum-sensing receptor of multidrug resistant Pseudomonas aeruginosa, through a specialized multi-level in silico approach

Abstract

The emergence of multi-drug resistant bacteria in the past decades has become one of the major public health issues of our time. One of the main mechanisms of resistance and persistence of bacteria is their ability to form biofilms. Quorum-sensing (QS) is one of the main mechanisms of biofilm formation. Interfering with the QS cascade constitutes a non-antibiotic strategy to reduce biofilm formation and affect bacterial resistance. In Pseudomonas aeruginosa, QS takes place by four different systems, which start with the activation of transcriptional receptor LasR. This receptor is stabilized by C12-HSL. In this work, we have optimized and employed a multi-level in silico protocol to identify promising LasR inhibitors, combining different computer aided drug design techniques such as molecular docking, virtual screening, molecular dynamics and free energy calculations. The protocol was optimized using all 21 available LasR X-ray structures, 7 docking scoring functions, and a library of 90 active and 4500 inactive compounds. The optimized protocol was used to scan 294 498 chemically distinct compounds from 5 different databases, of which 30 compounds were further studied by molecular dynamics and free energy calculations and resulted in 8 possible QS inhibitors with promising ADME properties and binding affinity.

Graphical abstract: Identification of novel candidates for inhibition of LasR, a quorum-sensing receptor of multidrug resistant Pseudomonas aeruginosa, through a specialized multi-level in silico approach

Supplementary files

Article information

Article type
Paper
Submitted
20 Қаң. 2022
Accepted
16 Ақп. 2022
First published
16 Ақп. 2022

Mol. Syst. Des. Eng., 2022,7, 434-446

Identification of novel candidates for inhibition of LasR, a quorum-sensing receptor of multidrug resistant Pseudomonas aeruginosa, through a specialized multi-level in silico approach

R. P. Magalhães, T. F. Vieira, A. Melo and S. F. Sousa, Mol. Syst. Des. Eng., 2022, 7, 434 DOI: 10.1039/D2ME00009A

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