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定量微生物组谱分析可厘清 PSC/IBD 诊断中与炎症和胆管阻塞相关的微生物群改变。

Quantitative microbiome profiling disentangles inflammation- and bile duct obstruction-associated microbiota alterations across PSC/IBD diagnoses.

机构信息

Laboratory of Molecular Bacteriology, Department of Microbiology and Immunology, Rega Institute, KU Leuven, Leuven, Belgium.

Center for Microbiology, VIB, Leuven, Belgium.

出版信息

Nat Microbiol. 2019 Nov;4(11):1826-1831. doi: 10.1038/s41564-019-0483-9. Epub 2019 Jun 17.

Abstract

Recent work has highlighted the importance of confounder control in microbiome association studies. For instance, multiple pathologies previously linked to gut ecosystem dysbiosis display concomitant changes in stool consistency, a major covariate of microbiome variation. In those cases, observed microbiota alterations could largely reflect variation in faecal water content. Moreover, stool moisture variation has been linked to fluctuations in faecal microbial load, inducing artefacts in relative abundance profile analyses. Hence, the identification of associations between the gut microbiota and specific disease manifestations in pathologies with complex aetiologies requires a deconfounded, quantitative assessment of microbiome variation. Here, we revisit a disease association microbiome data set comprising 106 patients with primary sclerosing cholangitis (PSC) and/or inflammatory bowel disease. Assessing quantitative taxon abundances, we study microbiome alterations beyond symptomatic stool moisture variation. We observe an increased prevalence of a low cell count Bacteroides 2 enterotype across the pathologies studied, with microbial loads correlating inversely with intestinal and systemic inflammation markers. Quantitative analyses allow us to differentiate between taxa associated with either intestinal inflammation severity (Fusobacterium) or cholangitis/biliary obstruction (Enterococcus) among previously suggested PSC marker genera. We identify and validate a near-exclusion pattern between the inflammation-associated Fusobacterium and Veillonella genera, with Fusobacterium detection being restricted to Crohn's disease and patients with PSC-Crohn's disease. Overall, through absolute quantification and confounder control, we single out clear-cut microbiome markers associated with pathophysiological manifestations and disease diagnosis.

摘要

最近的研究强调了在微生物组关联研究中控制混杂因素的重要性。例如,先前与肠道生态失调相关的多种病理学表现出粪便一致性的同时变化,而粪便一致性是微生物组变异的主要协变量。在这些情况下,观察到的微生物组变化在很大程度上可能反映了粪便含水量的变化。此外,粪便水分的变化与粪便微生物负荷的波动有关,这会导致相对丰度分析中的人为假象。因此,在病因复杂的病理学中,要确定肠道微生物组与特定疾病表现之间的关联,需要对微生物组变异进行去混杂、定量评估。在这里,我们重新研究了一个包含 106 名原发性硬化性胆管炎 (PSC) 和/或炎症性肠病患者的疾病关联微生物组数据集。通过评估定量分类群丰度,我们研究了超出症状性粪便水分变化的微生物组变化。我们观察到在研究的病理学中,低细胞计数拟杆菌 2 肠型的患病率增加,微生物负荷与肠道和全身炎症标志物呈负相关。定量分析使我们能够区分与肠道炎症严重程度相关的分类群(梭菌)或与胆管炎/胆道阻塞相关的分类群(肠球菌),这是先前提出的 PSC 标志物属中的分类群。我们确定并验证了与炎症相关的梭菌属和韦荣球菌属之间的近乎排除模式,梭菌属的检测仅限于克罗恩病和 PSC-克罗恩病患者。总体而言,通过绝对定量和混杂因素控制,我们确定了与病理生理表现和疾病诊断相关的明确微生物组标志物。

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