TY - JOUR
T1 - Towards facilitated interpretation of shotgun metagenomics long-read sequencing data analyzed with KMA for the detection of bacterial pathogens and their antimicrobial resistance genes
AU - Gand, Mathieu
AU - Navickaite, Indre
AU - Bartsch, Lee Julia
AU - Grützke, Josephine
AU - Overballe-Petersen, Søren
AU - Rasmussen, Astrid
AU - Otani, Saria
AU - Michelacci, Valeria
AU - Matamoros, Bosco Rodríguez
AU - González-Zorn, Bruno
AU - Brouwer, Michael S.M.
AU - Di Marcantonio, Lisa
AU - Bloemen, Bram
AU - Vanneste, Kevin
AU - Roosens, Nancy H.C.J.
AU - AbuOun, Manal
AU - De Keersmaecker, Sigrid C.J.
N1 - Publisher Copyright:
Copyright © 2024 Gand, Navickaite, Bartsch, Grützke, Overballe-Petersen, Rasmussen, Otani, Michelacci, Matamoros, González-Zorn, Brouwer, Di Marcantonio, Bloemen, Vanneste, Roosens, AbuOun and De Keersmaecker.
PY - 2024
Y1 - 2024
N2 - Metagenomic sequencing is a promising method that has the potential to revolutionize the world of pathogen detection and antimicrobial resistance (AMR) surveillance in food-producing environments. However, the analysis of the huge amount of data obtained requires performant bioinformatics tools and databases, with intuitive and straightforward interpretation. In this study, based on long-read metagenomics data of chicken fecal samples with a spike-in mock community, we proposed confidence levels for taxonomic identification and AMR gene detection, with interpretation guidelines, to help with the analysis of the output data generated by KMA, a popular k-mer read alignment tool. Additionally, we demonstrated that the completeness and diversity of the genomes present in the reference databases are key parameters for accurate and easy interpretation of the sequencing data. Finally, we explored whether KMA, in a two-step procedure, can be used to link the detected AMR genes to their bacterial host chromosome, both detected within the same long-reads. The confidence levels were successfully tested on 28 metagenomics datasets which were obtained with sequencing of real and spiked samples from fecal (chicken, pig, and buffalo) or food (minced beef and food enzyme products) origin. The methodology proposed in this study will facilitate the analysis of metagenomics sequencing datasets for KMA users. Ultimately, this will contribute to improvements in the rapid diagnosis and surveillance of pathogens and AMR genes in food-producing environments, as prioritized by the EU.
AB - Metagenomic sequencing is a promising method that has the potential to revolutionize the world of pathogen detection and antimicrobial resistance (AMR) surveillance in food-producing environments. However, the analysis of the huge amount of data obtained requires performant bioinformatics tools and databases, with intuitive and straightforward interpretation. In this study, based on long-read metagenomics data of chicken fecal samples with a spike-in mock community, we proposed confidence levels for taxonomic identification and AMR gene detection, with interpretation guidelines, to help with the analysis of the output data generated by KMA, a popular k-mer read alignment tool. Additionally, we demonstrated that the completeness and diversity of the genomes present in the reference databases are key parameters for accurate and easy interpretation of the sequencing data. Finally, we explored whether KMA, in a two-step procedure, can be used to link the detected AMR genes to their bacterial host chromosome, both detected within the same long-reads. The confidence levels were successfully tested on 28 metagenomics datasets which were obtained with sequencing of real and spiked samples from fecal (chicken, pig, and buffalo) or food (minced beef and food enzyme products) origin. The methodology proposed in this study will facilitate the analysis of metagenomics sequencing datasets for KMA users. Ultimately, this will contribute to improvements in the rapid diagnosis and surveillance of pathogens and AMR genes in food-producing environments, as prioritized by the EU.
KW - Metagenomics
KW - ONT
KW - Bioinformatics
KW - Pathogens
KW - Antimicrobial resistance
KW - KMA
KW - Database
KW - Results interpretation
U2 - 10.3389/fmicb.2024.1336532
DO - 10.3389/fmicb.2024.1336532
M3 - Journal article
C2 - 38659981
AN - SCOPUS:85191159549
SN - 1664-302X
VL - 15
JO - Frontiers in Microbiology
JF - Frontiers in Microbiology
M1 - 1336532
ER -