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Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting

BACKGROUND: Africa has one of the highest incidences of gonorrhea. Neisseria gonorrhoeae is gaining resistance to most of the available antibiotics, compromising treatment across the world. Whole-genome sequencing (WGS) is an efficient way of predicting AMR determinants and their spread in the popul...

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Autores principales: Juma, Meshack, Sankaradoss, Arun, Ndombi, Redcliff, Mwaura, Patrick, Damodar, Tina, Nazir, Junaid, Pandit, Awadhesh, Khurana, Rupsy, Masika, Moses, Chirchir, Ruth, Gachie, John, Krishna, Sudhir, Sowdhamini, Ramanathan, Anzala, Omu, Meenakshi, Iyer S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8353456/
https://www.ncbi.nlm.nih.gov/pubmed/34385981
http://dx.doi.org/10.3389/fmicb.2021.647565
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author Juma, Meshack
Sankaradoss, Arun
Ndombi, Redcliff
Mwaura, Patrick
Damodar, Tina
Nazir, Junaid
Pandit, Awadhesh
Khurana, Rupsy
Masika, Moses
Chirchir, Ruth
Gachie, John
Krishna, Sudhir
Sowdhamini, Ramanathan
Anzala, Omu
Meenakshi, Iyer S.
author_facet Juma, Meshack
Sankaradoss, Arun
Ndombi, Redcliff
Mwaura, Patrick
Damodar, Tina
Nazir, Junaid
Pandit, Awadhesh
Khurana, Rupsy
Masika, Moses
Chirchir, Ruth
Gachie, John
Krishna, Sudhir
Sowdhamini, Ramanathan
Anzala, Omu
Meenakshi, Iyer S.
author_sort Juma, Meshack
collection PubMed
description BACKGROUND: Africa has one of the highest incidences of gonorrhea. Neisseria gonorrhoeae is gaining resistance to most of the available antibiotics, compromising treatment across the world. Whole-genome sequencing (WGS) is an efficient way of predicting AMR determinants and their spread in the population. Recent advances in next-generation sequencing technologies like Oxford Nanopore Technology (ONT) have helped in the generation of longer reads of DNA in a shorter duration with lower cost. Increasing accuracy of base-calling algorithms, high throughput, error-correction strategies, and ease of using the mobile sequencer MinION in remote areas lead to its adoption for routine microbial genome sequencing. To investigate whether MinION-only sequencing is sufficient for WGS and downstream analysis in resource-limited settings, we sequenced the genomes of 14 suspected N. gonorrhoeae isolates from Nairobi, Kenya. METHODS: Using WGS, the isolates were confirmed to be cases of N. gonorrhoeae (n = 9), and there were three co-occurrences of N. gonorrhoeae with Moraxella osloensis and N. meningitidis (n = 2). N. meningitidis has been implicated in sexually transmitted infections in recent years. The near-complete N. gonorrhoeae genomes (n = 10) were analyzed further for mutations/factors causing AMR using an in-house database of mutations curated from the literature. RESULTS: We observe that ciprofloxacin resistance is associated with multiple mutations in both gyrA and parC. Mutations conferring tetracycline (rpsJ) and sulfonamide (folP) resistance and plasmids encoding beta-lactamase were seen in all the strains, and tet(M)-containing plasmids were identified in nine strains. Phylogenetic analysis clustered the 10 isolates into clades containing previously sequenced genomes from Kenya and countries across the world. Based on homology modeling of AMR targets, we see that the mutations in GyrA and ParC disrupt the hydrogen bonding with quinolone drugs and mutations in FolP may affect interaction with the antibiotic. CONCLUSION: Here, we demonstrate the utility of mobile DNA sequencing technology in producing a consensus genome for sequence typing and detection of genetic determinants of AMR. The workflow followed in the study, including AMR mutation dataset creation and the genome identification, assembly, and analysis, can be used for any clinical isolate. Further studies are required to determine the utility of real-time sequencing in outbreak investigations, diagnosis, and management of infections, especially in resource-limited settings.
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spelling pubmed-83534562021-08-11 Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting Juma, Meshack Sankaradoss, Arun Ndombi, Redcliff Mwaura, Patrick Damodar, Tina Nazir, Junaid Pandit, Awadhesh Khurana, Rupsy Masika, Moses Chirchir, Ruth Gachie, John Krishna, Sudhir Sowdhamini, Ramanathan Anzala, Omu Meenakshi, Iyer S. Front Microbiol Microbiology BACKGROUND: Africa has one of the highest incidences of gonorrhea. Neisseria gonorrhoeae is gaining resistance to most of the available antibiotics, compromising treatment across the world. Whole-genome sequencing (WGS) is an efficient way of predicting AMR determinants and their spread in the population. Recent advances in next-generation sequencing technologies like Oxford Nanopore Technology (ONT) have helped in the generation of longer reads of DNA in a shorter duration with lower cost. Increasing accuracy of base-calling algorithms, high throughput, error-correction strategies, and ease of using the mobile sequencer MinION in remote areas lead to its adoption for routine microbial genome sequencing. To investigate whether MinION-only sequencing is sufficient for WGS and downstream analysis in resource-limited settings, we sequenced the genomes of 14 suspected N. gonorrhoeae isolates from Nairobi, Kenya. METHODS: Using WGS, the isolates were confirmed to be cases of N. gonorrhoeae (n = 9), and there were three co-occurrences of N. gonorrhoeae with Moraxella osloensis and N. meningitidis (n = 2). N. meningitidis has been implicated in sexually transmitted infections in recent years. The near-complete N. gonorrhoeae genomes (n = 10) were analyzed further for mutations/factors causing AMR using an in-house database of mutations curated from the literature. RESULTS: We observe that ciprofloxacin resistance is associated with multiple mutations in both gyrA and parC. Mutations conferring tetracycline (rpsJ) and sulfonamide (folP) resistance and plasmids encoding beta-lactamase were seen in all the strains, and tet(M)-containing plasmids were identified in nine strains. Phylogenetic analysis clustered the 10 isolates into clades containing previously sequenced genomes from Kenya and countries across the world. Based on homology modeling of AMR targets, we see that the mutations in GyrA and ParC disrupt the hydrogen bonding with quinolone drugs and mutations in FolP may affect interaction with the antibiotic. CONCLUSION: Here, we demonstrate the utility of mobile DNA sequencing technology in producing a consensus genome for sequence typing and detection of genetic determinants of AMR. The workflow followed in the study, including AMR mutation dataset creation and the genome identification, assembly, and analysis, can be used for any clinical isolate. Further studies are required to determine the utility of real-time sequencing in outbreak investigations, diagnosis, and management of infections, especially in resource-limited settings. Frontiers Media S.A. 2021-07-27 /pmc/articles/PMC8353456/ /pubmed/34385981 http://dx.doi.org/10.3389/fmicb.2021.647565 Text en Copyright © 2021 Juma, Sankaradoss, Ndombi, Mwaura, Damodar, Nazir, Pandit, Khurana, Masika, Chirchir, Gachie, Krishna, Sowdhamini, Anzala and Meenakshi. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Microbiology
Juma, Meshack
Sankaradoss, Arun
Ndombi, Redcliff
Mwaura, Patrick
Damodar, Tina
Nazir, Junaid
Pandit, Awadhesh
Khurana, Rupsy
Masika, Moses
Chirchir, Ruth
Gachie, John
Krishna, Sudhir
Sowdhamini, Ramanathan
Anzala, Omu
Meenakshi, Iyer S.
Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting
title Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting
title_full Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting
title_fullStr Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting
title_full_unstemmed Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting
title_short Antimicrobial Resistance Profiling and Phylogenetic Analysis of Neisseria gonorrhoeae Clinical Isolates From Kenya in a Resource-Limited Setting
title_sort antimicrobial resistance profiling and phylogenetic analysis of neisseria gonorrhoeae clinical isolates from kenya in a resource-limited setting
topic Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8353456/
https://www.ncbi.nlm.nih.gov/pubmed/34385981
http://dx.doi.org/10.3389/fmicb.2021.647565
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