分析微生物组干预设计研究:替代多元统计方法的比较。
Analysing microbiome intervention design studies: Comparison of alternative multivariate statistical methods.
机构信息
Division of Food Science, Department of Food Safety and Quality, Nofima - Norwegian Institute of Food, Fisheries and Aquaculture Research, Ås, Norway.
Department of Clinical Science, University of Bergen, Bergen, Norway.
出版信息
PLoS One. 2021 Nov 18;16(11):e0259973. doi: 10.1371/journal.pone.0259973. eCollection 2021.
The diet plays a major role in shaping gut microbiome composition and function in both humans and animals, and dietary intervention trials are often used to investigate and understand these effects. A plethora of statistical methods for analysing the differential abundance of microbial taxa exists, and new methods are constantly being developed, but there is a lack of benchmarking studies and clear consensus on the best multivariate statistical practices. This makes it hard for a biologist to decide which method to use. We compared the outcomes of generic multivariate ANOVA (ASCA and FFMANOVA) against statistical methods commonly used for community analyses (PERMANOVA and SIMPER) and methods designed for analysis of count data from high-throughput sequencing experiments (ALDEx2, ANCOM and DESeq2). The comparison is based on both simulated data and five published dietary intervention trials representing different subjects and study designs. We found that the methods testing differences at the community level were in agreement regarding both effect size and statistical significance. However, the methods that provided ranking and identification of differentially abundant operational taxonomic units (OTUs) gave incongruent results, implying that the choice of method is likely to influence the biological interpretations. The generic multivariate ANOVA tools have the flexibility needed for analysing multifactorial experiments and provide outputs at both the community and OTU levels; good performance in the simulation studies suggests that these statistical tools are also suitable for microbiome data sets.
饮食在塑造人类和动物的肠道微生物组组成和功能方面起着重要作用,饮食干预试验常用于研究和了解这些影响。目前存在大量用于分析微生物分类群差异丰度的统计方法,并且不断有新的方法被开发出来,但缺乏基准测试研究和对最佳多元统计实践的明确共识。这使得生物学家很难决定使用哪种方法。我们比较了通用多元方差分析(ASCA 和 FFMANOVA)与常用于群落分析的统计方法(PERMANOVA 和 SIMPER)以及专为高通量测序实验中的计数数据分析而设计的方法(ALDEx2、ANCOM 和 DESeq2)的结果。该比较基于模拟数据和五个已发表的饮食干预试验,这些试验代表了不同的研究对象和研究设计。我们发现,在社区水平上测试差异的方法在效应大小和统计学意义上是一致的。然而,提供分类单元(OTU)差异丰度排序和识别的方法给出了不一致的结果,这意味着方法的选择可能会影响生物学解释。通用多元方差分析工具具有分析多因素实验所需的灵活性,并在群落和 OTU 水平上提供输出;模拟研究中的良好性能表明这些统计工具也适用于微生物组数据集。
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