口腔医学 ›› 2026, Vol. 46 ›› Issue (5): 388-394.doi: 10.13591/j.cnki.kqyx.2026.05.011

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基于多组学研究的低龄儿童龋口腔微生物群落特点及龋病预测模型研究进展

钱琳娜, 边梦瑶, 朱萧, 陈然, 徐磊, 吴志芳()   

  1. 浙江大学医学院附属口腔医院浙江大学口腔医学院,浙江省口腔疾病临床医学研究中心,浙江省口腔生物医学重点实验室浙江杭州 (310000)
  • 收稿日期:2025-08-21 出版日期:2026-05-28 发布日期:2026-05-15
  • 通讯作者: 吴志芳 E-mail:wzf1980@zju.edu.cn
  • 基金资助:
    国家重点研发项目(2022YFC2405900);国家重点研发项目(2022YFC240-5901)

Advances in oral microbial community and caries prediction for early childhood caries based on multi-omics studies

QIAN Linna, BIAN Mengyao, ZHU Xiao, CHEN Ran, XU Lei, WU Zhifang()   

  1. Stomatology Hospital Affiliated to Zhejiang University School of MedicineZhejiang University School of Stomatology,Zhejiang Provincial Clinical Research Center for Oral Diseases,Zhejiang Provincial Key Laboratory of Oral BiomedicineHangzhou 310000, China
  • Received:2025-08-21 Online:2026-05-28 Published:2026-05-15

摘要:

低龄儿童龋(early childhood caries,ECC)是全球范围内最常见的儿童慢性疾病之一,对儿童健康构成重大挑战。近年来,多组学技术的发展为解析ECC相关口腔微生物群落的结构与功能提供了新视角。研究表明,ECC的发生与口腔微生物群落失衡密切相关,表现为优势菌种变化、多样性改变、功能表达转变等,揭示了微生物群落在ECC发展中的动态变化及其与宿主的互作机制。基于机器学习的高通量数据分析进一步推动了ECC预测模型的开发,部分模型通过整合微生物组特征与宿主因素,展现出较高的预测准确性。然而,现有研究仍存在样本量不足、模型普适性有限等挑战。未来,扩展微生物组研究维度、优化多组学数据整合及开发高灵敏度检测方法,将是ECC精准预测和防治的重要方向。

关键词: 低龄儿童龋, 口腔微生物组, 预测模型, 多组学研究, 高通量测序

Abstract:

Early childhood caries(ECC) is one of the most prevalent chronic pediatric diseases worldwide,posing significant challenges to children’s health. Recent advances in multi-omics technologies have provided novel insights into the structural and functional characteristics of ECC-associated oral microbial communities. Research evidence confirms that ECC development is closely linked to oral microbial imbalance,characterized by changes in dominant bacterial species,altered diversity,and shifted functional expression,revealing dynamic microbial changes and host-microbe interactions during disease progression. These findings demonstrate how oral microbiome dysbiosis drives ECC through structural and functional alterations in the microbial community. Machine learning has enhanced high-throughput data analysis,which further advances ECC prediction models with integrated models combining microbiome features and host factors demonstrating superior predictive accuracy. However,current research still faces limitations including insufficient sample sizes and limited model generalizability. Future directions should focus on expanding microbial community profiling to understudied members,optimizing multi-omics data integration through systems biology approaches,and developing ultrasensitive detection methods for low-abundance biomarkers,which are all critical for ECC precise prediction and personalized prevention.

Key words: early childhood caries, oral microbiome, prediction model, multi-omics studies, high-throughput sequencing

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