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Antimicrobial activity of compounds identified by artificial intelligence discovery engine targeting enzymes involved in Neisseria gonorrhoeae peptidoglycan metabolism

Antimicrobial activity of compounds identified by artificial intelligence discovery engine targeting enzymes involved in Neisseria gonorrhoeae peptidoglycan metabolism
Antimicrobial activity of compounds identified by artificial intelligence discovery engine targeting enzymes involved in Neisseria gonorrhoeae peptidoglycan metabolism

Background: Neisseria gonorrhoeae (Ng) causes the sexually transmitted disease gonorrhoea. There are no vaccines and infections are treated principally with antibiotics. However, gonococci rapidly develop resistance to every antibiotic class used and there is a need for developing new antimicrobial treatments. In this study we focused on two gonococcal enzymes as potential antimicrobial targets, namely the serine protease L,D-carboxypeptidase LdcA (NgO1274/NEIS1546) and the lytic transglycosylase LtgD (NgO0626/NEIS1212). To identify compounds that could interact with these enzymes as potential antimicrobials, we used the AtomNet virtual high-throughput screening technology. We then did a computational modelling study to examine the interactions of the most bioactive compounds with their target enzymes. The identified compounds were tested against gonococci to determine minimum inhibitory and bactericidal concentrations (MIC/MBC), specificity, and compound toxicity in vitro.

Results: AtomNet identified 74 compounds that could potentially interact with Ng-LdcA and 84 compounds that could potentially interact with Ng-LtgD. Through MIC and MBC assays, we selected the three best performing compounds for both enzymes. Compound 16 was the most active against Ng-LdcA, with a MIC50 value < 1.56 µM and MBC50/90 values between 0.195 and 0.39 µM. In general, the Ng-LdcA compounds showed higher activity than the compounds directed against Ng-LtgD, of which compound 45 had MIC50 values of 1.56-3.125 µM and MBC50/90 values between 3.125 and 6.25 µM. The compounds were specific for gonococci and did not kill other bacteria. They were also non-toxic for human conjunctival epithelial cells as judged by a resazurin assay. To support our biological data, in-depth computational modelling study detailed the interactions of the compounds with their target enzymes. Protein models were generated in silico and validated, the active binding sites and amino acids involved elucidated, and the interactions of the compounds interacting with the enzymes visualised through molecular docking and Molecular Dynamics Simulations for 50 ns and Molecular Mechanics Poisson-Boltzmann Surface Area (MM-PBSA).

Conclusions: we have identified bioactive compounds that appear to target the N. gonorrhoeae LdcA and LtgD enzymes. By using a reductionist approach involving biological and computational data, we propose that compound Ng-LdcA-16 and Ng-LtgD-45 are promising anti-gonococcal compounds for further development.

Neisseria gonorrhoeae/drug effects, Microbial Sensitivity Tests, Anti-Bacterial Agents/pharmacology, Artificial Intelligence, Peptidoglycan/metabolism, Humans, High-Throughput Screening Assays/methods
0716-9760
Kant, Ravi
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Tilford, Hannah
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Freitas, Camila S.
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Ferreira, Dayana A. Santos
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Ng, James
ac7684d5-aa95-4827-8172-b2a8209d670c
Rucinski, Gwennan
d88c06d4-fabd-443d-a42b-6fc75545060d
Watkins, Joshua
fbff57ad-0cc1-4dd8-8166-95c54c7645e6
Pemberton, Ryan
988cd219-c7ab-4d46-bd96-f71ea038c74a
Abramyan, Tigran M
ef693e95-e1f8-46e2-9b58-dede9aede926
Contreras, Stephanie C.
086250a3-eac7-4ebe-b6e6-bfa39ba68133
Vera, Alejandra
d33b6a40-e97e-4227-9142-fa42a77e619e
Christodoulides, Myron
eba99148-620c-452a-a334-c1a52ba94078
Kant, Ravi
7701bda0-8d8b-4c7b-b988-75f6da612e2a
Tilford, Hannah
c6b86ecd-b8a2-4b52-9b19-3dca6bab6335
Freitas, Camila S.
de050131-f325-4793-920c-db2bc3b13c5d
Ferreira, Dayana A. Santos
12885d99-cdf9-4d95-88a6-14150e9e9a01
Ng, James
ac7684d5-aa95-4827-8172-b2a8209d670c
Rucinski, Gwennan
d88c06d4-fabd-443d-a42b-6fc75545060d
Watkins, Joshua
fbff57ad-0cc1-4dd8-8166-95c54c7645e6
Pemberton, Ryan
988cd219-c7ab-4d46-bd96-f71ea038c74a
Abramyan, Tigran M
ef693e95-e1f8-46e2-9b58-dede9aede926
Contreras, Stephanie C.
086250a3-eac7-4ebe-b6e6-bfa39ba68133
Vera, Alejandra
d33b6a40-e97e-4227-9142-fa42a77e619e
Christodoulides, Myron
eba99148-620c-452a-a334-c1a52ba94078

Kant, Ravi, Tilford, Hannah, Freitas, Camila S., Ferreira, Dayana A. Santos, Ng, James, Rucinski, Gwennan, Watkins, Joshua, Pemberton, Ryan, Abramyan, Tigran M, Contreras, Stephanie C., Vera, Alejandra and Christodoulides, Myron (2024) Antimicrobial activity of compounds identified by artificial intelligence discovery engine targeting enzymes involved in Neisseria gonorrhoeae peptidoglycan metabolism. Biological Research, 57 (1). (doi:10.1186/s40659-024-00543-9).

Record type: Article

Abstract

Background: Neisseria gonorrhoeae (Ng) causes the sexually transmitted disease gonorrhoea. There are no vaccines and infections are treated principally with antibiotics. However, gonococci rapidly develop resistance to every antibiotic class used and there is a need for developing new antimicrobial treatments. In this study we focused on two gonococcal enzymes as potential antimicrobial targets, namely the serine protease L,D-carboxypeptidase LdcA (NgO1274/NEIS1546) and the lytic transglycosylase LtgD (NgO0626/NEIS1212). To identify compounds that could interact with these enzymes as potential antimicrobials, we used the AtomNet virtual high-throughput screening technology. We then did a computational modelling study to examine the interactions of the most bioactive compounds with their target enzymes. The identified compounds were tested against gonococci to determine minimum inhibitory and bactericidal concentrations (MIC/MBC), specificity, and compound toxicity in vitro.

Results: AtomNet identified 74 compounds that could potentially interact with Ng-LdcA and 84 compounds that could potentially interact with Ng-LtgD. Through MIC and MBC assays, we selected the three best performing compounds for both enzymes. Compound 16 was the most active against Ng-LdcA, with a MIC50 value < 1.56 µM and MBC50/90 values between 0.195 and 0.39 µM. In general, the Ng-LdcA compounds showed higher activity than the compounds directed against Ng-LtgD, of which compound 45 had MIC50 values of 1.56-3.125 µM and MBC50/90 values between 3.125 and 6.25 µM. The compounds were specific for gonococci and did not kill other bacteria. They were also non-toxic for human conjunctival epithelial cells as judged by a resazurin assay. To support our biological data, in-depth computational modelling study detailed the interactions of the compounds with their target enzymes. Protein models were generated in silico and validated, the active binding sites and amino acids involved elucidated, and the interactions of the compounds interacting with the enzymes visualised through molecular docking and Molecular Dynamics Simulations for 50 ns and Molecular Mechanics Poisson-Boltzmann Surface Area (MM-PBSA).

Conclusions: we have identified bioactive compounds that appear to target the N. gonorrhoeae LdcA and LtgD enzymes. By using a reductionist approach involving biological and computational data, we propose that compound Ng-LdcA-16 and Ng-LtgD-45 are promising anti-gonococcal compounds for further development.

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e-pub ahead of print date: 5 September 2024
Keywords: Neisseria gonorrhoeae/drug effects, Microbial Sensitivity Tests, Anti-Bacterial Agents/pharmacology, Artificial Intelligence, Peptidoglycan/metabolism, Humans, High-Throughput Screening Assays/methods

Identifiers

Local EPrints ID: 499725
URI: http://eprints.soton.ac.uk/id/eprint/499725
ISSN: 0716-9760
PURE UUID: c17e0ff8-39c7-48f3-ac4b-0fc868b505e8
ORCID for Ravi Kant: ORCID iD orcid.org/0009-0007-6348-4638
ORCID for Myron Christodoulides: ORCID iD orcid.org/0000-0002-9663-4731

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Date deposited: 01 Apr 2025 16:44
Last modified: 22 Aug 2025 01:34

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Contributors

Author: Ravi Kant ORCID iD
Author: Hannah Tilford
Author: Camila S. Freitas
Author: Dayana A. Santos Ferreira
Author: James Ng
Author: Gwennan Rucinski
Author: Joshua Watkins
Author: Ryan Pemberton
Author: Tigran M Abramyan
Author: Stephanie C. Contreras
Author: Alejandra Vera

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