Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infections

ABSTRACT Chronic lung infections are the primary cause of morbidity and early mortality in cystic fibrosis (CF) and, as such, have been the subject of a great deal of research. Subsequently, they have become one of the key paradigms for polymicrobial infections. The literature, however, has traditio...

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Main Authors: Damian W. Rivett, Lauren R. Hatfield, Helen Gavillet, Michelle Hardman, Christopher van der Gast
Format: Article
Language:English
Published: American Society for Microbiology 2025-01-01
Series:mBio
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Online Access:https://journals.asm.org/doi/10.1128/mbio.01456-24
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author Damian W. Rivett
Lauren R. Hatfield
Helen Gavillet
Michelle Hardman
Christopher van der Gast
author_facet Damian W. Rivett
Lauren R. Hatfield
Helen Gavillet
Michelle Hardman
Christopher van der Gast
author_sort Damian W. Rivett
collection DOAJ
description ABSTRACT Chronic lung infections are the primary cause of morbidity and early mortality in cystic fibrosis (CF) and, as such, have been the subject of a great deal of research. Subsequently, they have become one of the key paradigms for polymicrobial infections. The literature, however, has traditionally focused on the presence of pathogens in isolation or univariate measures like number of species to predict decline of lung function and ignores large swathes of data. Here, we suggest that looking at the interactions between species identified by 16S rRNA gene sequencing, rather than at species singularly, could elucidate hitherto unknown properties of these complicated infections. To confirm this, pooled samples from studies conducted by our laboratory, sequenced using the same pipeline, were used to assess microbiome-wide associations to lung function. We found pathogenic interactions between species were limited to the most abundant species, which were composed of canonical CF pathogens (including Pseudomonas, Staphylococcus, Stenotrophomonas, and Achromobacter) and commensals. This observation is crucial for better understanding of polymicrobial infections and treatment of these conditions while providing a simple framework for expanding this research into other disease states. The adoption of ecological principles into infection science can provide better understanding and options to those suffering from chronic conditions. The statistical ecology approach presented here enables clear hypotheses from observational data that can be ratified through subsequent manipulative experimental studies. Moreover, it can also be used to support the design and construction of clinically relevant in vitro models of polymicrobial infections.IMPORTANCEResearch studies have repeatedly demonstrated that chronic lung infection in cystic fibrosis is polymicrobial and consequently does not adhere to the single microbe-based Koch’s postulates. Despite the plethora of evidence, the role of the constituent taxa present is largely unknown. Here we demonstrate how an ecological modeling perspective on lung infection microbiota can tease out potential interactions that alter progression of disease. Using techniques akin to genome-wide association studies, we show and validate 22 taxa, present in the chronic respiratory disease associated with cystic fibrosis, which have significant interactions that are negatively associated with patient lung function, the majority of which are “non-pathogenic” organisms. This work highlights the need to understand the interactive landscapes of the microbiomes to fully appreciate the complexity and treat chronic lung infections. Furthermore, this presents testable hypotheses for manipulative experiments in model systems to elucidate key mechanisms to driving disease progression.
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spelling doaj-art-be635a99270b4fb48e8cbf17f95bcfdc2025-08-20T02:43:47ZengAmerican Society for MicrobiologymBio2150-75112025-01-0116110.1128/mbio.01456-24Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infectionsDamian W. Rivett0Lauren R. Hatfield1Helen Gavillet2Michelle Hardman3Christopher van der Gast4Department of Natural Sciences, Manchester Metropolitan University, Manchester, United KingdomDepartment of Life Sciences, Manchester Metropolitan University, Manchester, United KingdomDepartment of Applied Sciences, Northumbria University, Newcastle, United KingdomDepartment of Life Sciences, Manchester Metropolitan University, Manchester, United KingdomDepartment of Applied Sciences, Northumbria University, Newcastle, United KingdomABSTRACT Chronic lung infections are the primary cause of morbidity and early mortality in cystic fibrosis (CF) and, as such, have been the subject of a great deal of research. Subsequently, they have become one of the key paradigms for polymicrobial infections. The literature, however, has traditionally focused on the presence of pathogens in isolation or univariate measures like number of species to predict decline of lung function and ignores large swathes of data. Here, we suggest that looking at the interactions between species identified by 16S rRNA gene sequencing, rather than at species singularly, could elucidate hitherto unknown properties of these complicated infections. To confirm this, pooled samples from studies conducted by our laboratory, sequenced using the same pipeline, were used to assess microbiome-wide associations to lung function. We found pathogenic interactions between species were limited to the most abundant species, which were composed of canonical CF pathogens (including Pseudomonas, Staphylococcus, Stenotrophomonas, and Achromobacter) and commensals. This observation is crucial for better understanding of polymicrobial infections and treatment of these conditions while providing a simple framework for expanding this research into other disease states. The adoption of ecological principles into infection science can provide better understanding and options to those suffering from chronic conditions. The statistical ecology approach presented here enables clear hypotheses from observational data that can be ratified through subsequent manipulative experimental studies. Moreover, it can also be used to support the design and construction of clinically relevant in vitro models of polymicrobial infections.IMPORTANCEResearch studies have repeatedly demonstrated that chronic lung infection in cystic fibrosis is polymicrobial and consequently does not adhere to the single microbe-based Koch’s postulates. Despite the plethora of evidence, the role of the constituent taxa present is largely unknown. Here we demonstrate how an ecological modeling perspective on lung infection microbiota can tease out potential interactions that alter progression of disease. Using techniques akin to genome-wide association studies, we show and validate 22 taxa, present in the chronic respiratory disease associated with cystic fibrosis, which have significant interactions that are negatively associated with patient lung function, the majority of which are “non-pathogenic” organisms. This work highlights the need to understand the interactive landscapes of the microbiomes to fully appreciate the complexity and treat chronic lung infections. Furthermore, this presents testable hypotheses for manipulative experiments in model systems to elucidate key mechanisms to driving disease progression.https://journals.asm.org/doi/10.1128/mbio.01456-24polymicrobial infectioncystic fibrosismicrobiomepathogenic interactionsrespiratory infection
spellingShingle Damian W. Rivett
Lauren R. Hatfield
Helen Gavillet
Michelle Hardman
Christopher van der Gast
Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infections
mBio
polymicrobial infection
cystic fibrosis
microbiome
pathogenic interactions
respiratory infection
title Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infections
title_full Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infections
title_fullStr Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infections
title_full_unstemmed Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infections
title_short Bacterial interactions underpin worsening lung function in cystic fibrosis-associated infections
title_sort bacterial interactions underpin worsening lung function in cystic fibrosis associated infections
topic polymicrobial infection
cystic fibrosis
microbiome
pathogenic interactions
respiratory infection
url https://journals.asm.org/doi/10.1128/mbio.01456-24
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AT michellehardman bacterialinteractionsunderpinworseninglungfunctionincysticfibrosisassociatedinfections
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