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Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data

MOTIVATION: The human microbiome is variable and dynamic in nature. Longitudinal studies could explain the mechanisms in maintaining the microbiome in health or causing dysbiosis in disease. However, it remains challenging to properly analyze the longitudinal microbiome data from either 16S rRNA or...

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Autores principales: Zhang, Xinyan, Guo, Boyi, Yi, Nengjun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7652264/
https://www.ncbi.nlm.nih.gov/pubmed/33166356
http://dx.doi.org/10.1371/journal.pone.0242073
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author Zhang, Xinyan
Guo, Boyi
Yi, Nengjun
author_facet Zhang, Xinyan
Guo, Boyi
Yi, Nengjun
author_sort Zhang, Xinyan
collection PubMed
description MOTIVATION: The human microbiome is variable and dynamic in nature. Longitudinal studies could explain the mechanisms in maintaining the microbiome in health or causing dysbiosis in disease. However, it remains challenging to properly analyze the longitudinal microbiome data from either 16S rRNA or metagenome shotgun sequencing studies, output as proportions or counts. Most microbiome data are sparse, requiring statistical models to handle zero-inflation. Moreover, longitudinal design induces correlation among the samples and thus further complicates the analysis and interpretation of the microbiome data. RESULTS: In this article, we propose zero-inflated Gaussian mixed models (ZIGMMs) to analyze longitudinal microbiome data. ZIGMMs is a robust and flexible method which can be applicable for longitudinal microbiome proportion data or count data generated with either 16S rRNA or shotgun sequencing technologies. It can include various types of fixed effects and random effects and account for various within-subject correlation structures, and can effectively handle zero-inflation. We developed an efficient Expectation-Maximization (EM) algorithm to fit the ZIGMMs by taking advantage of the standard procedure for fitting linear mixed models. We demonstrate the computational efficiency of our EM algorithm by comparing with two other zero-inflated methods. We show that ZIGMMs outperform the previously used linear mixed models (LMMs), negative binomial mixed models (NBMMs) and zero-inflated Beta regression mixed model (ZIBR) in detecting associated effects in longitudinal microbiome data through extensive simulations. We also apply our method to two public longitudinal microbiome datasets and compare with LMMs and NBMMs in detecting dynamic effects of associated taxa.
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spelling pubmed-76522642020-11-18 Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data Zhang, Xinyan Guo, Boyi Yi, Nengjun PLoS One Research Article MOTIVATION: The human microbiome is variable and dynamic in nature. Longitudinal studies could explain the mechanisms in maintaining the microbiome in health or causing dysbiosis in disease. However, it remains challenging to properly analyze the longitudinal microbiome data from either 16S rRNA or metagenome shotgun sequencing studies, output as proportions or counts. Most microbiome data are sparse, requiring statistical models to handle zero-inflation. Moreover, longitudinal design induces correlation among the samples and thus further complicates the analysis and interpretation of the microbiome data. RESULTS: In this article, we propose zero-inflated Gaussian mixed models (ZIGMMs) to analyze longitudinal microbiome data. ZIGMMs is a robust and flexible method which can be applicable for longitudinal microbiome proportion data or count data generated with either 16S rRNA or shotgun sequencing technologies. It can include various types of fixed effects and random effects and account for various within-subject correlation structures, and can effectively handle zero-inflation. We developed an efficient Expectation-Maximization (EM) algorithm to fit the ZIGMMs by taking advantage of the standard procedure for fitting linear mixed models. We demonstrate the computational efficiency of our EM algorithm by comparing with two other zero-inflated methods. We show that ZIGMMs outperform the previously used linear mixed models (LMMs), negative binomial mixed models (NBMMs) and zero-inflated Beta regression mixed model (ZIBR) in detecting associated effects in longitudinal microbiome data through extensive simulations. We also apply our method to two public longitudinal microbiome datasets and compare with LMMs and NBMMs in detecting dynamic effects of associated taxa. Public Library of Science 2020-11-09 /pmc/articles/PMC7652264/ /pubmed/33166356 http://dx.doi.org/10.1371/journal.pone.0242073 Text en https://creativecommons.org/publicdomain/zero/1.0/ This is an open access article, free of all copyright, and may be freely reproduced, distributed, transmitted, modified, built upon, or otherwise used by anyone for any lawful purpose. The work is made available under the Creative Commons CC0 (https://creativecommons.org/publicdomain/zero/1.0/) public domain dedication.
spellingShingle Research Article
Zhang, Xinyan
Guo, Boyi
Yi, Nengjun
Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data
title Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data
title_full Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data
title_fullStr Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data
title_full_unstemmed Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data
title_short Zero-Inflated gaussian mixed models for analyzing longitudinal microbiome data
title_sort zero-inflated gaussian mixed models for analyzing longitudinal microbiome data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7652264/
https://www.ncbi.nlm.nih.gov/pubmed/33166356
http://dx.doi.org/10.1371/journal.pone.0242073
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