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具有种族-地理因素相互作用的儿童队列中身体指数与粪便微生物群的关联:准确使用贝叶斯零膨胀负二项回归模型

Association of body index with fecal microbiome in children cohorts with ethnic-geographic factor interaction: accurately using a Bayesian zero-inflated negative binomial regression model.

作者信息

Huang Jian, Lu Yanzhuan, Tian Fengwei, Ni Yongqing

机构信息

School of Food Science and Technology, Shihezi University, Shihezi, Xinjiang, China.

Key Laboratory of Xinjiang Special Probiotics and Dairy Technology, Shihezi University, Shihezi, Xinjiang, China.

出版信息

mSystems. 2024 Dec 17;9(12):e0134524. doi: 10.1128/msystems.01345-24. Epub 2024 Nov 21.

Abstract

UNLABELLED

The exponential growth of high-throughput sequencing (HTS) data on the microbial communities presents researchers with an unparalleled opportunity to delve deeper into the association of microorganisms with host phenotype. However, this growth also poses a challenge, as microbial data are complex, sparse, discrete, and prone to zero inflation. Herein, by utilizing 10 distinct counting models for analyzing simulated data, we proposed an innovative Bayesian zero-inflated negative binomial (ZINB) regression model that is capable of identifying differentially abundant taxa associated with distinctive host phenotypes and quantifying the effects of covariates on these taxa. Our proposed model exhibits excellent accuracy compared with conventional Hurdle and INLA models, especially in scenarios characterized by inflation and overdispersion. Moreover, we confirm that dispersion parameters significantly affect the accuracy of model results, with defects gradually alleviating as the number of analyzed samples increases. Subsequently applying our model to amplicon data in real multi-ethnic children cohort, we found that only a subset of taxa were identified as having zero inflation in real data, suggesting that the prevailing understanding and processing of microbial count data in most previous microbiome studies were overly dogmatic. In practice, our pipeline of integrating bacterial differential abundance in microbiome data and relevant covariates is effective and feasible. Taken together, our method is expected to be extended to the microbiota studies of various multi-cohort populations.

IMPORTANCE

The microbiome is closely associated with physical indicators of the body, such as height, weight, age and BMI, which can be used as measures of human health. Accurately identifying which taxa in the microbiome are closely related to indicators of physical development is valuable as microbial markers of regional child growth trajectory. Zero-inflated negative binomial (ZINB) model, a type of Bayesian generalized linear model, can be effectively modeled in complex biological systems. We present an innovative ZINB regression model that is capable of identifying differentially abundant taxa associated with distinctive host phenotypes and quantifying the effects of covariates on these taxa, and demonstrate that its accuracy is superior to traditional Hurdle and INLA models. Our pipeline of integrating bacterial differential abundance in microbiome data and relevant covariates is effective and feasible.

摘要

未标注

微生物群落高通量测序(HTS)数据的指数增长为研究人员提供了前所未有的机会,以更深入地探究微生物与宿主表型之间的关联。然而,这种增长也带来了挑战,因为微生物数据复杂、稀疏、离散且容易出现零膨胀。在此,通过使用10种不同的计数模型分析模拟数据,我们提出了一种创新的贝叶斯零膨胀负二项式(ZINB)回归模型,该模型能够识别与独特宿主表型相关的差异丰富分类群,并量化协变量对这些分类群的影响。与传统的障碍模型和INLA模型相比,我们提出的模型表现出优异的准确性,特别是在存在膨胀和过度离散的情况下。此外,我们证实离散参数显著影响模型结果的准确性,随着分析样本数量的增加,缺陷逐渐减轻。随后将我们的模型应用于真实的多民族儿童队列中的扩增子数据,我们发现只有一部分分类群在真实数据中被确定为具有零膨胀,这表明大多数先前微生物组研究中对微生物计数数据的普遍理解和处理过于教条。在实践中,我们整合微生物组数据中细菌差异丰度和相关协变量的流程是有效且可行的。综上所述,我们的方法有望扩展到各种多队列人群的微生物群研究中。

重要性

微生物组与身体的身体指标密切相关,如身高、体重、年龄和BMI,这些指标可作为人类健康的衡量标准。准确识别微生物组中的哪些分类群与身体发育指标密切相关,作为区域儿童生长轨迹的微生物标志物具有重要价值。零膨胀负二项式(ZINB)模型是一种贝叶斯广义线性模型,能够在复杂的生物系统中有效建模。我们提出了一种创新的ZINB回归模型,该模型能够识别与独特宿主表型相关的差异丰富分类群,并量化协变量对这些分类群的影响,并证明其准确性优于传统的障碍模型和INLA模型。我们整合微生物组数据中细菌差异丰度和相关协变量的流程是有效且可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ffc1/11651110/f17918ba81ab/msystems.01345-24.f001.jpg

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