Wu Xiongjian, Zhu Haiyan, Hu Ying, Zhang Lei, Huang Lixing
Department of Gastroenterology, the First Affiliated Hospital of Gannan Medical University, Ganzhou, Jiangxi, China.
Front Cell Infect Microbiol. 2025 Aug 1;15:1610523. doi: 10.3389/fcimb.2025.1610523. eCollection 2025.
is a globally prevalent gastric pathogen associated with chronic gastritis, peptic ulcers, and gastric cancer. Its interaction with the gut microbiome (GM), a dynamic microbial community within the gastrointestinal tract, plays a critical role in modulating host immune responses and disease progression. This study aimed to investigate the complex interactions between infection and the GM and to evaluate how microbiome alterations relate to clinical outcomes such as gastritis, ulcers, and gastric cancer.
A meta-analysis was conducted using publicly available 16S rRNA and shotgun metagenomic datasets. Microbiome composition differences were assessed using differential abundance analysis, alpha- and beta-diversity metrics, and principal component analysis (PCA). Random forest models were employed to predict the clinical outcomes based on microbiome and clinical data. Hyperparameter tuning and cross-validation were applied to ensure model robustness.
The analysis revealed significant microbial shifts associated with infection, including enrichment of spp., and spp., and depletion of beneficial taxa like spp. and . Microbial diversity declined progressively with disease severity. Predictive models demonstrated high accuracy (89.3%) in classifying the disease states and identifying key microbial biomarkers such as spp. and with strong predictive power.
This study highlights the critical role of GM dysbiosis in -related disease progression. The identified microbial signatures and predictive models offer promising tools for early diagnosis, risk stratification, and personalized treatment of -associated gastrointestinal disorders. Future integration of multi-omics data may further unravel the microbial mechanisms and support microbiome-based precision medicine.
是一种全球流行的胃部病原体,与慢性胃炎、消化性溃疡和胃癌相关。它与肠道微生物群(GM)相互作用,GM是胃肠道内一个动态的微生物群落,在调节宿主免疫反应和疾病进展中起关键作用。本研究旨在调查感染与GM之间的复杂相互作用,并评估微生物群改变与胃炎、溃疡和胃癌等临床结局的关系。
使用公开可用的16S rRNA和鸟枪法宏基因组数据集进行荟萃分析。使用差异丰度分析、α和β多样性指标以及主成分分析(PCA)评估微生物群组成差异。采用随机森林模型根据微生物群和临床数据预测临床结局。应用超参数调整和交叉验证以确保模型的稳健性。
分析揭示了与感染相关的显著微生物变化,包括某些菌种的富集以及有益类群的减少,如某些菌种和。微生物多样性随着疾病严重程度逐渐下降。预测模型在对疾病状态进行分类和识别具有强预测能力的关键微生物生物标志物(如某些菌种)方面显示出高精度(89.3%)。
本研究强调了GM失调在相关疾病进展中的关键作用。所确定的微生物特征和预测模型为相关胃肠道疾病的早期诊断、风险分层和个性化治疗提供了有前景的工具。未来多组学数据的整合可能会进一步揭示微生物机制,并支持基于微生物群的精准医学。