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metamicrobiomeR: an R package for analysis of microbiome relative abundance data using zero-inflated beta GAMLSS and meta-analysis across studies using random effects models

机译:Metamicrobiomer:用于分析使用零充气的βGAMLS和使用随机效果模型的研究的微生物组相对丰度数据的R包

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The rapid growth of high-throughput sequencing-based microbiome profiling has yielded tremendous insights into human health and physiology. Data generated from high-throughput sequencing of 16S rRNA gene amplicons are often preprocessed into composition or relative abundance. However, reproducibility has been lacking due to the myriad of different experimental and computational approaches taken in these studies. Microbiome studies may report varying results on the same topic, therefore, meta-analyses examining different microbiome studies to provide consistent and robust results are important. So far, there is still a lack of implemented methods to properly examine differential relative abundances of microbial taxonomies and to perform meta-analysis examining the heterogeneity and overall effects across microbiome studies. We developed an R package 'metamicrobiomeR' that applies Generalized Additive Models for Location, Scale and Shape (GAMLSS) with a zero-inflated beta (BEZI) family (GAMLSS-BEZI) for analysis of microbiome relative abundance datasets. Both simulation studies and application to real microbiome data demonstrate that GAMLSS-BEZI well performs in testing differential relative abundances of microbial taxonomies. Importantly, the estimates from GAMLSS-BEZI are log (odds ratio) of relative abundances between comparison groups and thus are analogous between microbiome studies. As such, we also apply random effects meta-analysis models to pool estimates and their standard errors across microbiome studies. We demonstrate the meta-analysis examples and highlight the utility of our package on four studies comparing gut microbiomes between male and female infants in the first six months of life. GAMLSS-BEZI allows proper examination of microbiome relative abundance data. Random effects meta-analysis models can be directly applied to pool comparable estimates and their standard errors to evaluate the overall effects and heterogeneity across microbiome studies. The examples and workflow using our 'metamicrobiomeR' package are reproducible and applicable for the analyses and meta-analyses of other microbiome studies.
机译:高通量排序的微生物组分析的快速增长产生了对人体健康和生理学的巨大见解。从16S rRNA基因扩增子的高通量测序产生的数据通常预处理成分或相对丰度。然而,由于这些研究中采取的不同实验和计算方法,缺乏可重复性。微生物组研究可能会报告不同课题的不同结果,因此,检查不同微生物组研究以提供一致和稳健的结果的荟萃分析很重要。到目前为止,仍然缺乏实施的方法来适当地检查微生物分类学的差异相对丰度,并进行META分析检查微生物组研究的异质性和总体效果。我们开发了一个R封装的“Metamicrobiomer”,将广义添加剂模型应用于具有零充气的β(Bezi)家族(Gamlss-Bezi)的位置,鳞片和形状(Gamlss),用于分析微生物组相对丰度数据集。两者的模拟研究和应用于真实的微生物组数据数据都表明Gamlss-Bezi井在测试微生物分类的差异相对丰富。重要的是,来自GAMLS-BEZI的估计是比较组之间的相对丰度的对数(差异比),因此类似于微生物组研究。因此,我们还应用随机效应Meta-Analysis模型来池估计和微生物组研究的标准误差。我们展示了Meta分析示例,并突出了我们在寿命前六个月的血型和女性婴儿之间进行了四项研究的四项研究的效用。 Gamlss-Bezi允许对微生物组相对丰度数据进行正面检查。随机效应可以直接应用META分析模型,以池可比估算及其标准误差,以评估微生物组研究的整体效果和异质性。使用我们的“MetamicrobioMer”包装的示例和工作流程是可重复的,适用于其他微生物组研究的分析和荟萃分析。

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