Scotland's Rural College, Edinburgh, UK.
NSilico Life Science Ltd., Dublin, Ireland.
J Microbiol Methods. 2021 Jul;186:106235. doi: 10.1016/j.mimet.2021.106235. Epub 2021 May 8.
Environmental microbiome studies rely on fast and accurate bioinformatics tools to characterize the taxonomic composition of samples based on the 16S rRNA gene. MetaGenome Rapid Annotation using Subsystem Technology (MG-RAST) and Quantitative Insights Into Microbial Ecology 2 (QIIME2) are two of the most popular tools available to perform this task. Their underlying algorithms differ in many aspects, and therefore the comparison of the pipelines provides insights into their best use and interpretation of the outcomes. Both of these bioinformatics tools are based on several specialized algorithms pipelined together, but whereas MG-RAST is a user-friendly webserver that clusters rRNA sequences based on their similarity to create Operational Taxonomic Units (OTU), QIIME2 employs DADA2 in the construction of Amplicon Sequence Variants (ASV) by applying an error model that considers the abundance of each sequence and its similarity to other sequences. Taxonomic compositions obtained from the analyses of amplicon sequences of DNA from swine intestinal gut and faecal microbiota samples using MG-RAST and QIIME2 were compared at domain-, phylum-, family- and genus-levels in terms of richness, relative abundance and diversity. We found significant differences between the microbiota profiles obtained from each pipeline. At domain level, bacteria were relatively more abundant using QIIME2 than MG-RAST; at phylum level, seven taxa were identified exclusively by QIIME2; at family level, samples processed in QIIME2 showed higher evenness and richness (assessed by Shannon and Simpson indices). The genus-level compositions obtained from each pipeline were used in partial least squares-discriminant analyses (PLS-DA) to discriminate between sample collection sites (caecum, colon and faeces). The results showed that different genera were found to be significant for the models, based on the Variable Importance in Projection, e.g. when using sequencing data processed by MG-RAST, the three most important genera were Acetitomaculum, Ruminococcus and Methanosphaera, whereas when data was processed using QIIME2, these were Candidatus Methanomethylophilus, Sphaerochaeta and Anaerorhabdus. Furthermore, the application of differential filtering procedures before the PLS-DA revealed higher accuracy when using non-restricted datasets obtained from MG-RAST, whereas datasets obtained from QIIME2 resulted in more accurate discrimination of sample collection sites after removing genera with low relative abundances (<1%) from the datasets. Our results highlight the differences in taxonomic compositions of samples obtained from the two separate pipelines, while underlining the impact on downstream analyses, such as biomarkers identification.
环境微生物组研究依赖于快速准确的生物信息学工具,根据 16S rRNA 基因来描述样本的分类组成。宏基因组快速注释使用子系统技术 (MG-RAST) 和微生物生态定量洞察 2 (QIIME2) 是执行此任务的两个最流行的工具。它们的底层算法在许多方面都有所不同,因此对这些管道的比较可以深入了解它们的最佳用途和对结果的解释。这两个生物信息学工具都是基于几个专门的算法组合在一起的,但 MG-RAST 是一个用户友好的网络服务器,它根据 rRNA 序列的相似性对其进行聚类,以创建操作分类单元 (OTU),而 QIIME2 通过应用考虑每个序列的丰度及其与其他序列的相似性的误差模型,在构建扩增子序列变异 (ASV) 时使用 DADA2。使用 MG-RAST 和 QIIME2 从猪肠道肠道和粪便微生物组样本的 DNA 扩增子序列分析中获得的分类组成,在丰富度、相对丰度和多样性方面,在域、门、科和属水平上进行了比较。我们发现,从每个管道获得的微生物组图谱之间存在显著差异。在域水平上,使用 QIIME2 的细菌相对更丰富;在门水平上,有七个分类群仅被 QIIME2 鉴定;在科水平上,在 QIIME2 中处理的样本表现出更高的均匀度和丰富度(通过 Shannon 和 Simpson 指数评估)。从每个管道获得的属级组成用于偏最小二乘判别分析 (PLS-DA) 以区分样本采集地点(盲肠、结肠和粪便)。结果表明,根据投影变量重要性,不同的属被认为对模型很重要,例如,当使用 MG-RAST 处理的测序数据时,三个最重要的属是 Acetitomaculum、Ruminococcus 和 Methanosphaera,而当使用 QIIME2 处理数据时,这些是 Candidatus Methanomethylophilus、Sphaerochaeta 和 Anaerorhabdus。此外,在 PLS-DA 之前应用差异过滤程序时,使用来自 MG-RAST 的非受限数据集可以获得更高的准确性,而从 QIIME2 获得的数据集在从数据集中删除相对丰度较低(<1%)的属后,能够更准确地区分样本采集地点。我们的结果突出了从两个独立管道获得的样本的分类组成之间的差异,同时强调了对下游分析(如生物标志物鉴定)的影响。