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用于有和没有已知遗传驱动因素的结肠息肉病的基于微生物群和代谢物的预测工具。

Microbiota and metabolite-based prediction tool for colonic polyposis with and without a known genetic driver.

作者信息

Katona Bryson W, Shukla Ashutosh, Hu Weiming, Nyul Thomas, Dudzik Christina, Arvanitis Alex, Clay Daniel, Dungan Michaela, Weber Marina, Tu Vincent, Hao Fuhua, Gan Shuheng, Chau Lillian, Buchner Anna M, Falk Gary W, Jaffe David L, Ginsberg Gregory, Palmer Suzette N, Zhan Xiaowei, Patterson Andrew D, Bittinger Kyle, Ni Josephine

机构信息

Division of Gastroenterology and Hepatology, Department of Medicine, University of Pennsylvania Perelman School of Medicine, Philadelphia, PA, USA.

Division of Digestive & Liver Diseases, Department of Internal Medicine, University of Texas Southwestern Medical Center, Dallas, TX, USA.

出版信息

Gut Microbes. 2025 Dec;17(1):2474141. doi: 10.1080/19490976.2025.2474141. Epub 2025 Mar 11.

Abstract

Despite extensive investigations into the microbiome and metabolome changes associated with colon polyps and colorectal cancer (CRC), the microbiome and metabolome profiles of individuals with colonic polyposis, including those with (Gene-pos) and without (Gene-neg) a known genetic driver, remain comparatively unexplored. Using colon biopsies, polyps, and stool from patients with Gene-pos adenomatous polyposis ( = 9), Gene-neg adenomatous polyposis ( = 18), and serrated polyposis syndrome (SPS,  = 11), we demonstrated through 16S rRNA sequencing that the mucosa-associated microbiota in individuals with colonic polyposis is representative of the microbiota associated with small polyps, and that both Gene-pos and SPS cohorts exhibit differential microbiota populations relative to Gene-neg polyposis cohorts. Furthermore, we used these differential microbiota taxa to perform linear discriminant analysis to differentiate Gene-neg subjects from Gene-pos and from SPS subjects with an accuracy of 89% and 93% respectively. Stool metabolites were quantified via H NMR, revealing an increase in alanine in SPS subjects relative to non-polyposis subjects, and Partial Least Squares Discriminant Analysis (PLS-DA) analysis indicated that the proportion of leucine to tyrosine in fecal samples may be predictive of SPS. Use of these microbial and metabolomic signatures may allow for better diagnostric and risk-stratification tools for colonic polyposis patients and their families as well as promote development of microbiome-targeted approaches for polyp prevention.

摘要

尽管对与结肠息肉和结直肠癌(CRC)相关的微生物组和代谢组变化进行了广泛研究,但包括有(基因阳性)和无(基因阴性)已知遗传驱动因素的结肠息肉病患者的微生物组和代谢组特征仍相对未被探索。我们使用来自基因阳性腺瘤性息肉病患者(n = 9)、基因阴性腺瘤性息肉病患者(n = 18)和锯齿状息肉病综合征(SPS,n = 11)的结肠活检组织、息肉和粪便,通过16S rRNA测序证明,结肠息肉病患者的黏膜相关微生物群代表了与小息肉相关的微生物群,并且基因阳性和SPS队列相对于基因阴性息肉病队列均表现出不同的微生物群。此外,我们使用这些差异微生物分类群进行线性判别分析,以区分基因阴性受试者与基因阳性受试者以及SPS受试者,准确率分别为89%和93%。通过核磁共振氢谱对粪便代谢物进行定量分析,发现SPS受试者相对于非息肉病受试者的丙氨酸增加,偏最小二乘判别分析(PLS-DA)表明粪便样本中亮氨酸与酪氨酸的比例可能是SPS的预测指标。使用这些微生物和代谢组学特征可能为结肠息肉病患者及其家属提供更好的诊断和风险分层工具,并促进针对息肉预防的微生物组靶向方法的发展。

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