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Microbiome networks and change-point analysis reveal key community changes associated with cystic fibrosis pulmonary exacerbations

机译:微生物组网络和变化点分析揭示了与囊性纤维化相关的主要社区变化

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摘要

Over 90% of cystic fibrosis (CF) patients die due to chronic lung infections leading to respiratory failure. The decline in CF lung function is greatly accelerated by intermittent and progressively severe acute pulmonary exacerbations (PEs). Despite their clinical impact, surprisingly few microbiological signals associated with PEs have been identified. Here we introduce an unsupervised, systems-oriented approach to identify key members of the microbiota. We used two CF sputum microbiome data sets that were longitudinally collected through periods spanning baseline health and PEs. Key taxa were defined based on three strategies: overall relative abundance, prevalence, and co-occurrence network interconnectedness. We measured the association between changes in the abundance of the key taxa and changes in patient clinical status over time via change-point detection, and found that taxa with the highest level of network interconnectedness tracked changes in patient health significantly better than taxa with the highest abundance or prevalence. We also cross-sectionally stratified all samples into the clinical states and identified key taxa associated with each state. We found that network interconnectedness most strongly delineated the taxa among clinical states, and that anaerobic bacteria were over-represented during PEs. Many of these anaerobes are oropharyngeal bacteria that have been previously isolated from the respiratory tract, and/or have been studied for their role in CF. The observed shift in community structure, and the association of anaerobic taxa and PEs lends further support to the growing consensus that anoxic conditions and the subsequent growth of anaerobic microbes are important predictors of PEs.
机译:超过90%的囊性纤维化(CF)患者由于慢性肺部感染导致呼吸衰竭而死亡。间歇性和渐进性严重急性肺病发作(PEs)大大加速了CF肺功能的下降。尽管它们具有临床影响,但令人惊讶的是,很少发现与PE相关的微生物信号。在这里,我们介绍了一种无监督,面向系统的方法来识别微生物群的关键成员。我们使用了两个CF痰微生物组数据集,这些数据是在跨越基线健康和PE的时期内纵向收集的。关键分类单元是根据以下三种策略定义的:总体相对丰度,患病率和共现网络互连性。我们通过变化点检测来测量关键分类单元的变化与患者临床状况随时间变化之间的关联,发现具有最高网络互连性的分类单元对患者健康的变化明显优于具有最高网络分类单元的分类单元丰富或盛行。我们还将所有样本横切分为临床状态,并确定与每个状态相关的关键分类单元。我们发现,网络互连最能描绘出临床状态中的分类群,而在PE中厌氧菌的含量过高。这些厌氧菌中有许多是口咽细菌,它们先前已从呼吸道中分离出来,并且/或者已经对其在CF中的作用进行了研究。观察到的群落结构的变化以及厌氧生物分类群与PE的关联进一步支持了日益增长的共识,即缺氧条件和随后的厌氧微生物的生长是PE的重要预测因子。

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