Publication: Antibiotic resistance and metabolic profiles as functional biomarkers that accurately predict the geographic origin of city metagenomics samples.
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Identifiers
Date
2019-08-20
Authors
Casimiro-Soriguer, Carlos S
Loucera, Carlos
Perez Florido, Javier
López-López, Daniel
Dopazo, Joaquin
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Abstract
The availability of hundreds of city microbiome profiles allows the development of increasingly accurate predictors of the origin of a sample based on its microbiota composition. Typical microbiome studies involve the analysis of bacterial abundance profiles. Here we use a transformation of the conventional bacterial strain or gene abundance profiles to functional profiles that account for bacterial metabolism and other cell functionalities. These profiles are used as features for city classification in a machine learning algorithm that allows the extraction of the most relevant features for the classification. We demonstrate here that the use of functional profiles not only predict accurately the most likely origin of a sample but also to provide an interesting functional point of view of the biogeography of the microbiota. Interestingly, we show how cities can be classified based on the observed profile of antibiotic resistances. Open peer review: Reviewed by Jin Zhuang Dou, Jing Zhou, Torsten Semmler and Eran Elhaik.
Description
MeSH Terms
Biomarkers
Cities
Drug Resistance, Microbial
Machine Learning
Metabolome
Metagenome
Metagenomics
Microbiota
Cities
Drug Resistance, Microbial
Machine Learning
Metabolome
Metagenome
Metagenomics
Microbiota
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Keywords
Antibiotic resistance, Classification, Functional profiling, Machine learning, Metagenomics, Whole genome sequencing