基于微生物组新颖性评分的龋病诊断模型构建。

Q3 Medicine
Yanfei Sun, Jie Lu, Jiazhen Yang, Yuhan Liu, Lu Liu, Fei Zeng, Yufen Niu, Lei Dong, Fang Yang
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引用次数: 0

摘要

目的:本研究旨在分析口腔菌群16S核糖体RNA (rRNA)数据对龋病的影响,并建立优化的龋病诊断模型。方法:检索NCBI、MG-RAST、EMBL-EBI、QIITA等公共微生物组数据库,收集世界范围内有关人口腔微生物组研究的相关数据。利用微生物搜索引擎(MSE)将1 703份龋病数据集样本与20 540份健康样本进行比较,获得微生物组新颖性评分(MNS),并以此指标构建龋病诊断模型。采用非参数多变量方差分析比较不同宿主因素对口腔菌群MNS的影响,并通过控制相关因素对模型进行优化。最后,通过受试者工作特征(ROC)曲线分析评价模型的效果。结果:1)不同口腔健康状态人群的口腔微生物群分布存在明显差异,物种丰富度和物种多样性指数呈下降趋势。2)采用ROC曲线对龋病数据集进行评价,ROC曲线下面积AUC=0.67。3)龋病状况、国家、年龄、龋缺补牙(DMFT)指数和采样地点对样本MNS的影响最大(P=0.001)。4)控制宿主因素后,模型在中国儿童高龋、中龋、低龋和混合牙菌斑样品中的AUC分别为0.87、0.74、0.74和0.75。结论:基于口腔菌群16S rRNA数据分析的模型具有较好的诊断效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction of a caries diagnosis model based on microbiome novelty score.

Objectives: This study aimed to analyze the bacteria in dental caries and establish an optimized dental-ca-ries diagnosis model based on 16S ribosomal RNA (rRNA) data of oral flora.

Methods: We searched the public databa-ses of microbiomes including NCBI, MG-RAST, EMBL-EBI, and QIITA and collected data involved in the relevant research on human oral microbiomes worldwide. The samples in the caries dataset (1 703) were compared with healthy ones (20 540) by using the microbial search engine (MSE) to obtain the microbiome novelty score (MNS) and construct a caries diagnosis model based on this index. Nonparametric multivariate ANOVA was used to analyze and compare the impact of different host factors on the oral flora MNS, and the model was optimized by controlling related factors. Finally, the effect of the model was evaluated by receiver operating characteristic (ROC) curve analysis.

Results: 1) The oral microbiota distribution obviously differed among people with various oral-health statuses, and the species richness and species diversity index decreased. 2) ROC curve was used to evaluate the caries data set, and the area under ROC curve was AUC=0.67. 3) Among the five hosts' factors including caries status, country, age, decayed missing filled tooth (DMFT) indices, and sampling site displayed the strongest effect on MNS of samples (P=0.001). 4) The AUC of the model was 0.87, 0.74, 0.74, and 0.75 in high caries, medium caries, low caries samples in Chinese children, and mixed dental plaque samples after controlling host factors, respectively.

Conclusions: The model based on the analysis of 16S rRNA data of oral flora had good diagnostic efficiency.

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来源期刊
华西口腔医学杂志
华西口腔医学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
6397
期刊介绍: West China Journal of Stomatology (WCJS, pISSN 1000-1182, eISSN 2618-0456, CN 51-1169/R), published bimonthly, is a peer-reviewed Open Access journal, hosted by Sichuan university and Ministry of Education of the People's Republic of China. WCJS was established in 1983 and indexed in Medline/Pubmed, SCOPUS, EBSCO, Chemical Abstract(CA), CNKI, WANFANG Data, etc.
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