Ma Yubo, Jiang Zhengchen, Wang Yanan, Pan Libin, Liu Kang, Xia Ruihong, Yuan Li, Cheng Xiangdong
The Second Clinical Medical College, Zhejiang Chinese Medical University, Hangzhou, China.
Department of Gastric Surgery, Zhejiang Cancer Hospital, Hangzhou Institute of Medicine (HIM), Chinese Academy of Sciences, Hangzhou, China.
J Oral Microbiol. 2025 Apr 5;17(1):2487645. doi: 10.1080/20002297.2025.2487645. eCollection 2025.
Digestive system tumours (DSTs) often diagnosed late due to nonspecific symptoms. Non-invasive biomarkers are crucial for early detection and improved outcomes.
We collected tongue coating samples from 710 patients diagnosed with DST and 489 healthy controls (HC) from April 2023, to December 2023. Microbial composition was analyzed using 16S rRNA sequencing, and five machine learning algorithms were applied to assess the diagnostic potential of tongue coating microbiota.
Alpha diversity analysis showed that the microbial diversity in the tongue coating was significantly increased in DST patients. LEfSe analysis identified DST-enriched genera Alloprevotella and Prevotella, contrasting with HC-dominant taxa Neisseria, Haemophilus, and Porphyromonas (LDA >4). Notably, when comparing each of the four DST subtypes with the HC group, the proportion of Haemophilus in the HC group was significantly higher, and it was identified as an important feature for distinguishing the HC group. Machine learning validation demonstrated superior diagnostic performance of the Extreme Gradient Boosting (XGBoost) model, achieving an AUC of 0.926 (95% CI: 0.893-0.958) in internal validation, outperforming the other four machine learning models.
Tongue coating microbiota shows promise as a non-invasive biomarker for DST diagnosis, supported by robust machine learning models.
消化系统肿瘤(DSTs)常因症状不特异而诊断较晚。非侵入性生物标志物对于早期检测和改善预后至关重要。
我们收集了2023年4月至2023年12月期间710例诊断为DST的患者和489例健康对照(HC)的舌苔样本。使用16S rRNA测序分析微生物组成,并应用五种机器学习算法评估舌苔微生物群的诊断潜力。
α多样性分析表明,DST患者舌苔中的微生物多样性显著增加。线性判别分析效应大小(LEfSe)分析确定了DST富集菌属Alloprevotella和普雷沃氏菌属,与HC组占主导的分类群奈瑟菌属、嗜血杆菌属和卟啉单胞菌属形成对比(线性判别分析效应大小>4)。值得注意的是,在将四种DST亚型中的每一种与HC组进行比较时,HC组中嗜血杆菌属的比例显著更高,并且它被确定为区分HC组的一个重要特征。机器学习验证表明极端梯度提升(XGBoost)模型具有卓越的诊断性能,在内部验证中曲线下面积(AUC)达到0.926(95%置信区间:0.893 - 0.958),优于其他四种机器学习模型。
在强大的机器学习模型支持下,舌苔微生物群有望成为DST诊断的非侵入性生物标志物。