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SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach

Gut microbiomes of fish species consist of thousands of bacterial taxa that interact among each other, their environment, and the host. These complex networks of interactions are regulated by a diverse range of factors, yet little is known about the hierarchy of these interactions. Here, we introduc...

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Autores principales: Soriano, Beatriz, Hafez, Ahmed Ibrahem, Naya-Català, Fernando, Moroni, Federico, Moldovan, Roxana Andreea, Toxqui-Rodríguez, Socorro, Piazzon, María Carla, Arnau, Vicente, Llorens, Carlos, Pérez-Sánchez, Jaume
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10454057/
https://www.ncbi.nlm.nih.gov/pubmed/37628701
http://dx.doi.org/10.3390/genes14081650
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author Soriano, Beatriz
Hafez, Ahmed Ibrahem
Naya-Català, Fernando
Moroni, Federico
Moldovan, Roxana Andreea
Toxqui-Rodríguez, Socorro
Piazzon, María Carla
Arnau, Vicente
Llorens, Carlos
Pérez-Sánchez, Jaume
author_facet Soriano, Beatriz
Hafez, Ahmed Ibrahem
Naya-Català, Fernando
Moroni, Federico
Moldovan, Roxana Andreea
Toxqui-Rodríguez, Socorro
Piazzon, María Carla
Arnau, Vicente
Llorens, Carlos
Pérez-Sánchez, Jaume
author_sort Soriano, Beatriz
collection PubMed
description Gut microbiomes of fish species consist of thousands of bacterial taxa that interact among each other, their environment, and the host. These complex networks of interactions are regulated by a diverse range of factors, yet little is known about the hierarchy of these interactions. Here, we introduce SAMBA (Structure-Learning of Aquaculture Microbiomes using a Bayesian Approach), a computational tool that uses a unified Bayesian network approach to model the network structure of fish gut microbiomes and their interactions with biotic and abiotic variables associated with typical aquaculture systems. SAMBA accepts input data on microbial abundance from 16S rRNA amplicons as well as continuous and categorical information from distinct farming conditions. From this, SAMBA can create and train a network model scenario that can be used to (i) infer information of how specific farming conditions influence the diversity of the gut microbiome or pan-microbiome, and (ii) predict how the diversity and functional profile of that microbiome would change under other variable conditions. SAMBA also allows the user to visualize, manage, edit, and export the acyclic graph of the modelled network. Our study presents examples and test results of Bayesian network scenarios created by SAMBA using data from a microbial synthetic community, and the pan-microbiome of gilthead sea bream (Sparus aurata) in different feeding trials. It is worth noting that the usage of SAMBA is not limited to aquaculture systems as it can be used for modelling microbiome–host network relationships of any vertebrate organism, including humans, in any system and/or ecosystem.
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spelling pubmed-104540572023-08-26 SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach Soriano, Beatriz Hafez, Ahmed Ibrahem Naya-Català, Fernando Moroni, Federico Moldovan, Roxana Andreea Toxqui-Rodríguez, Socorro Piazzon, María Carla Arnau, Vicente Llorens, Carlos Pérez-Sánchez, Jaume Genes (Basel) Article Gut microbiomes of fish species consist of thousands of bacterial taxa that interact among each other, their environment, and the host. These complex networks of interactions are regulated by a diverse range of factors, yet little is known about the hierarchy of these interactions. Here, we introduce SAMBA (Structure-Learning of Aquaculture Microbiomes using a Bayesian Approach), a computational tool that uses a unified Bayesian network approach to model the network structure of fish gut microbiomes and their interactions with biotic and abiotic variables associated with typical aquaculture systems. SAMBA accepts input data on microbial abundance from 16S rRNA amplicons as well as continuous and categorical information from distinct farming conditions. From this, SAMBA can create and train a network model scenario that can be used to (i) infer information of how specific farming conditions influence the diversity of the gut microbiome or pan-microbiome, and (ii) predict how the diversity and functional profile of that microbiome would change under other variable conditions. SAMBA also allows the user to visualize, manage, edit, and export the acyclic graph of the modelled network. Our study presents examples and test results of Bayesian network scenarios created by SAMBA using data from a microbial synthetic community, and the pan-microbiome of gilthead sea bream (Sparus aurata) in different feeding trials. It is worth noting that the usage of SAMBA is not limited to aquaculture systems as it can be used for modelling microbiome–host network relationships of any vertebrate organism, including humans, in any system and/or ecosystem. MDPI 2023-08-19 /pmc/articles/PMC10454057/ /pubmed/37628701 http://dx.doi.org/10.3390/genes14081650 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Soriano, Beatriz
Hafez, Ahmed Ibrahem
Naya-Català, Fernando
Moroni, Federico
Moldovan, Roxana Andreea
Toxqui-Rodríguez, Socorro
Piazzon, María Carla
Arnau, Vicente
Llorens, Carlos
Pérez-Sánchez, Jaume
SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach
title SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach
title_full SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach
title_fullStr SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach
title_full_unstemmed SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach
title_short SAMBA: Structure-Learning of Aquaculture Microbiomes Using a Bayesian Approach
title_sort samba: structure-learning of aquaculture microbiomes using a bayesian approach
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10454057/
https://www.ncbi.nlm.nih.gov/pubmed/37628701
http://dx.doi.org/10.3390/genes14081650
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