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基于微生物群关系网络预测鼻腔疾病。

Predicting nasal diseases based on microbiota relationship network.

作者信息

Liang Yibo, Mao Jie, Qiu Tianlei, Li Binghua, Zhang Chenting, Zhang Kai, Sun Zhe, Zhang Guimin

机构信息

Department of Otorhinolaryngology Head and Neck Surgery, Tianjin First Central Hospital, Institute of Otolaryngology of Tianjin, Key Laboratory of Auditory Speech and Balance Medicine, Key Medical Discipline of Tianjin (Otolaryngology), Quality Control Centre of Otolaryngology, Tianjin, China.

Graduate School of Medicine, Juntendo University, Tokyo, Japan.

出版信息

Sci Prog. 2025 Jan-Mar;108(1):368504251320832. doi: 10.1177/00368504251320832.

Abstract

OBJECTIVES

Increasing evidence indicates that the local microbiome can be used to predict host disease states. However, constructing models that obtain better results with fewer features is still challenging.

METHODS

In this study, we established a nasal microbiome database consisting of 132 chronic rhinosinusitis patients, 27 nasal inverted papilloma patients, and 45 control patients. 16S rRNA gene sequencing was used to identify the species and abundance of bacteria in each sample, and a nasal microbiome database was generated after low-abundance bacteria were eliminated. The correlation data network of different groups of bacteria was constructed by calculating the correlation coefficient among bacterial genera, and the correlation parameters of the network were calculated based on graph theory. Through the development and application of a machine learning framework to optimize the screening process, combined with microbiome relationship network parameters based on graph theory, basic bacteria with high contributions to classification prediction were selected for the prediction of nasal diseases.

RESULTS

We found that patients with nasal disease have a specific nasal microbiome signature and identified Moraxella, Prevotella, and Rothia as keystone genera that are markers of nasal disease; these markers can be interpreted as key control routes through graph theory analysis of the microbiota. With this strategy, we were able to characterize microbial community changes in nasal disease patients, which could reveal the potential role of the nasal microbiome in nasal disease.

CONCLUSION

This study can provide a reference for the formulation of disease prevention and control policies. Our framework can be applied to other diseases to identify keystone genera that influence disease states and can be used to predict disease states.

摘要

目的

越来越多的证据表明,局部微生物群可用于预测宿主疾病状态。然而,构建能够用更少特征获得更好结果的模型仍然具有挑战性。

方法

在本研究中,我们建立了一个鼻腔微生物群数据库,其中包括132例慢性鼻窦炎患者、27例鼻腔内翻性乳头状瘤患者和45例对照患者。使用16S rRNA基因测序来鉴定每个样本中细菌的种类和丰度,在去除低丰度细菌后生成鼻腔微生物群数据库。通过计算细菌属之间的相关系数构建不同细菌组的相关数据网络,并基于图论计算网络的相关参数。通过开发和应用机器学习框架来优化筛选过程,结合基于图论的微生物群关系网络参数,选择对分类预测有高贡献的基础细菌用于鼻腔疾病的预测。

结果

我们发现鼻腔疾病患者具有特定的鼻腔微生物群特征,并确定莫拉克斯氏菌属、普雷沃氏菌属和罗氏菌属为鼻腔疾病的关键属标记;通过对微生物群的图论分析,这些标记可被解释为关键控制途径。通过这种策略,我们能够表征鼻腔疾病患者的微生物群落变化,这可以揭示鼻腔微生物群在鼻腔疾病中的潜在作用。

结论

本研究可为疾病防控政策的制定提供参考。我们的框架可应用于其他疾病,以识别影响疾病状态的关键属,并可用于预测疾病状态。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e230/11833901/455d9c2a3bb8/10.1177_00368504251320832-fig1.jpg

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