Rivett Damian W, Hatfield Lauren R, Gavillet Helen, Hardman Michelle, van der Gast Christopher
Department of Natural Sciences, Manchester Metropolitan University, Manchester, United Kingdom.
Department of Life Sciences, Manchester Metropolitan University, Manchester, United Kingdom.
mBio. 2025 Jan 8;16(1):e0145624. doi: 10.1128/mbio.01456-24. Epub 2024 Nov 22.
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 , , , and ) 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 models of polymicrobial infections.
Research 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.
慢性肺部感染是囊性纤维化(CF)发病和早期死亡的主要原因,因此一直是大量研究的主题。随后,它们成为了多重微生物感染的关键范例之一。然而,传统文献一直聚焦于病原体的单独存在或单一变量指标(如物种数量)来预测肺功能下降,而忽略了大量数据。在此,我们认为观察通过16S rRNA基因测序鉴定出的物种之间的相互作用,而非单个物种,可能会阐明这些复杂感染迄今未知的特性。为证实这一点,我们使用了实验室进行的研究中汇集的样本,这些样本使用相同流程进行测序,以评估微生物组与肺功能的全基因组关联。我们发现物种之间的致病相互作用仅限于最丰富的物种,这些物种由典型的CF病原体(包括 、 、 和 )以及共生菌组成。这一观察结果对于更好地理解多重微生物感染和治疗这些疾病至关重要,同时为将这项研究扩展到其他疾病状态提供了一个简单框架。将生态学原理应用于感染科学可以为慢性病患者提供更好的理解和治疗选择。这里提出的统计生态学方法能够从观察数据中得出清晰的假设,这些假设可以通过后续的操纵性实验研究得到验证。此外,它还可用于支持临床相关的多重微生物感染模型的设计和构建。
研究反复表明,囊性纤维化中的慢性肺部感染是多重微生物感染,因此不符合基于单一微生物的科赫法则。尽管有大量证据,但其中各分类群的作用在很大程度上仍不明确。在此,我们展示了从生态学建模角度研究肺部感染微生物群如何梳理出可能改变疾病进展的潜在相互作用。使用类似于全基因组关联研究的技术,我们展示并验证了22个分类群,它们存在于与囊性纤维化相关的慢性呼吸道疾病中,具有与患者肺功能呈负相关的显著相互作用关系,其中大多数是“非致病性”生物体。这项工作强调了理解微生物组的相互作用格局对于全面认识复杂性和治疗慢性肺部感染的必要性。此外,这为模型系统中的操纵性实验提出了可检验的假设,以阐明驱动疾病进展的关键机制。