Kang Sang-Bum, Kim Hyeonwoo, Kim Sangsoo, Kim Jiwon, Park Soo-Kyung, Lee Chil-Woo, Kim Kyeong Ok, Seo Geom-Seog, Kim Min Suk, Cha Jae Myung, Koo Ja Seol, Park Dong-Il
Department of Internal Medicine, College of Medicine, Daejeon St. Mary's Hospital, The Catholic University of Korea, Daejeon 34943, Republic of Korea.
Department of Bioinformatics, Soongsil University, Seoul 06978, Republic of Korea.
Microorganisms. 2023 Jun 26;11(7):1665. doi: 10.3390/microorganisms11071665.
Although gut microbiome dysbiosis has been associated with inflammatory bowel disease (IBD), the relationship between the oral microbiota and IBD remains poorly understood. This study aimed to identify unique microbiome patterns in saliva from IBD patients and explore potential oral microbial markers for differentiating Crohn's disease (CD) and ulcerative colitis (UC). A prospective cohort study recruited IBD patients (UC: = 175, CD: = 127) and healthy controls (HC: = 100) to analyze their oral microbiota using 16S rRNA gene sequencing. Machine learning models (sparse partial least squares discriminant analysis (sPLS-DA)) were trained with the sequencing data to classify CD and UC. Taxonomic classification resulted in 4041 phylotypes using Kraken2 and the SILVA reference database. After quality filtering, 398 samples (UC: = 175, CD: = 124, HC: = 99) and 2711 phylotypes were included. Alpha diversity analysis revealed significantly reduced richness in the microbiome of IBD patients compared to healthy controls. The sPLS-DA model achieved high accuracy (mean accuracy: 0.908, and AUC: 0.966) in distinguishing IBD vs. HC, as well as good accuracy (0.846) and AUC (0.923) in differentiating CD vs. UC. These findings highlight distinct oral microbiome patterns in IBD and provide insights into potential diagnostic markers.
尽管肠道微生物群失调与炎症性肠病(IBD)有关,但口腔微生物群与IBD之间的关系仍知之甚少。本研究旨在识别IBD患者唾液中独特的微生物群模式,并探索区分克罗恩病(CD)和溃疡性结肠炎(UC)的潜在口腔微生物标志物。一项前瞻性队列研究招募了IBD患者(UC:n = 175,CD:n = 127)和健康对照者(HC:n = 100),使用16S rRNA基因测序分析他们的口腔微生物群。利用测序数据训练机器学习模型(稀疏偏最小二乘判别分析(sPLS-DA))来区分CD和UC。使用Kraken2和SILVA参考数据库进行分类学分类,得到4041个系统发育型。经过质量筛选,纳入了398个样本(UC:n = 175,CD:n = 124,HC:n = 99)和2711个系统发育型。α多样性分析显示,与健康对照者相比,IBD患者微生物群的丰富度显著降低。sPLS-DA模型在区分IBD与HC方面具有较高的准确率(平均准确率:0.908,AUC:0.966),在区分CD与UC方面也具有良好的准确率(0.846)和AUC(0.923)。这些发现突出了IBD中独特的口腔微生物群模式,并为潜在的诊断标志物提供了见解。