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Chemical biology-whole genome engineering datasets predict new antibacterial combinations

Trimethoprim and sulfamethoxazole are used commonly together as cotrimoxazole for the treatment of urinary tract and other infections. The evolution of resistance to these and other antibacterials threatens therapeutic options for clinicians. We generated and analysed a chemical-biology-whole-genome...

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Autores principales: Turner, Arthur K., Yasir, Muhammad, Bastkowski, Sarah, Telatin, Andrea, Page, Andrew, Webber, Mark, Charles, Ian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Microbiology Society 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8767339/
https://www.ncbi.nlm.nih.gov/pubmed/34874820
http://dx.doi.org/10.1099/mgen.0.000718
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author Turner, Arthur K.
Yasir, Muhammad
Bastkowski, Sarah
Telatin, Andrea
Page, Andrew
Webber, Mark
Charles, Ian
author_facet Turner, Arthur K.
Yasir, Muhammad
Bastkowski, Sarah
Telatin, Andrea
Page, Andrew
Webber, Mark
Charles, Ian
author_sort Turner, Arthur K.
collection PubMed
description Trimethoprim and sulfamethoxazole are used commonly together as cotrimoxazole for the treatment of urinary tract and other infections. The evolution of resistance to these and other antibacterials threatens therapeutic options for clinicians. We generated and analysed a chemical-biology-whole-genome data set to predict new targets for antibacterial combinations with trimethoprim and sulfamethoxazole. For this we used a large transposon mutant library in Escherichia coli BW25113 where an outward-transcribing inducible promoter was engineered into one end of the transposon. This approach allows regulated expression of adjacent genes in addition to gene inactivation at transposon insertion sites, a methodology that has been called TraDIS-Xpress. These chemical genomic data sets identified mechanisms for both reduced and increased susceptibility to trimethoprim and sulfamethoxazole. The data identified that over-expression of FolA reduced trimethoprim susceptibility, a known mechanism for reduced susceptibility. In addition, transposon insertions into the genes tdk, deoR, ybbC, hha, ldcA, wbbK and waaS increased susceptibility to trimethoprim and likewise for rsmH, fadR, ddlB, nlpI and prc with sulfamethoxazole, while insertions in ispD, uspC, minC, minD, yebK, truD and umpG increased susceptibility to both these antibiotics. Two of these genes’ products, Tdk and IspD, are inhibited by AZT and fosmidomycin respectively, antibiotics that are known to synergise with trimethoprim. Thus, the data identified two known targets and several new target candidates for the development of co-drugs that synergise with trimethoprim, sulfamethoxazole or cotrimoxazole. We demonstrate that the TraDIS-Xpress technology can be used to generate information-rich chemical-genomic data sets that can be used for antibacterial development.
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spelling pubmed-87673392022-01-19 Chemical biology-whole genome engineering datasets predict new antibacterial combinations Turner, Arthur K. Yasir, Muhammad Bastkowski, Sarah Telatin, Andrea Page, Andrew Webber, Mark Charles, Ian Microb Genom Research Articles Trimethoprim and sulfamethoxazole are used commonly together as cotrimoxazole for the treatment of urinary tract and other infections. The evolution of resistance to these and other antibacterials threatens therapeutic options for clinicians. We generated and analysed a chemical-biology-whole-genome data set to predict new targets for antibacterial combinations with trimethoprim and sulfamethoxazole. For this we used a large transposon mutant library in Escherichia coli BW25113 where an outward-transcribing inducible promoter was engineered into one end of the transposon. This approach allows regulated expression of adjacent genes in addition to gene inactivation at transposon insertion sites, a methodology that has been called TraDIS-Xpress. These chemical genomic data sets identified mechanisms for both reduced and increased susceptibility to trimethoprim and sulfamethoxazole. The data identified that over-expression of FolA reduced trimethoprim susceptibility, a known mechanism for reduced susceptibility. In addition, transposon insertions into the genes tdk, deoR, ybbC, hha, ldcA, wbbK and waaS increased susceptibility to trimethoprim and likewise for rsmH, fadR, ddlB, nlpI and prc with sulfamethoxazole, while insertions in ispD, uspC, minC, minD, yebK, truD and umpG increased susceptibility to both these antibiotics. Two of these genes’ products, Tdk and IspD, are inhibited by AZT and fosmidomycin respectively, antibiotics that are known to synergise with trimethoprim. Thus, the data identified two known targets and several new target candidates for the development of co-drugs that synergise with trimethoprim, sulfamethoxazole or cotrimoxazole. We demonstrate that the TraDIS-Xpress technology can be used to generate information-rich chemical-genomic data sets that can be used for antibacterial development. Microbiology Society 2021-12-07 /pmc/articles/PMC8767339/ /pubmed/34874820 http://dx.doi.org/10.1099/mgen.0.000718 Text en © 2021 The Authors https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License.
spellingShingle Research Articles
Turner, Arthur K.
Yasir, Muhammad
Bastkowski, Sarah
Telatin, Andrea
Page, Andrew
Webber, Mark
Charles, Ian
Chemical biology-whole genome engineering datasets predict new antibacterial combinations
title Chemical biology-whole genome engineering datasets predict new antibacterial combinations
title_full Chemical biology-whole genome engineering datasets predict new antibacterial combinations
title_fullStr Chemical biology-whole genome engineering datasets predict new antibacterial combinations
title_full_unstemmed Chemical biology-whole genome engineering datasets predict new antibacterial combinations
title_short Chemical biology-whole genome engineering datasets predict new antibacterial combinations
title_sort chemical biology-whole genome engineering datasets predict new antibacterial combinations
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8767339/
https://www.ncbi.nlm.nih.gov/pubmed/34874820
http://dx.doi.org/10.1099/mgen.0.000718
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