Theresa Rzehak, Nadine Praeg, Giulio Galla, Julia Seeber, Heidi Christine Hauffe, Paul Illmer
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引用次数: 0
摘要
背景:以内部转录间隔区(ITS)为目标的元条码通常用于描述各种环境中真菌群落的特征。鉴于其规模和复杂性,原始 ITS 序列必须通过生物信息学管道进行处理和质量过滤。然而,此类管道尚未标准化,尤其是在真菌群落方面,而且现有的管道可能会产生截然不同的结果。一些管道根据特定的碱基对相似百分比将序列聚类为操作分类单元(OTU),而另一些管道则利用去噪技术来推断扩增子测序变异(ASV)。目前,ASVs 被认为是基于 16S rRNA 扩增子测序的原核生物群落分类多样性的更准确代表,但这种方法是否适用于真菌 ITS 序列仍存在争议:在此,我们比较了两种常用管道 DADA2(推断 ASV)和 mothur(聚类 OTU)在两种不同环境样本类型(新鲜牛粪和牧场土壤)的真菌元条码序列上的表现。与 DADA2 相比,在 99% 的 OTU 相似性阈值下,mothur 始终能鉴定出更丰富的真菌。此外,mothur 在多个技术重复(n = 18)中产生了同质的相对丰度,而 DADA2 在相同重复中的结果则存在很大差异:我们的研究强调了环境样本真菌代谢编码数据分析中潜在的管道相关偏差。基于各重复样本相对丰度的同质性以及检测 OTUs/ASVs 的能力,我们建议将相似度为 97% 的 OTU 聚类作为处理真菌代谢编码数据的最合适选择。
Comparison of commonly used software pipelines for analyzing fungal metabarcoding data.
Background: Metabarcoding targeting the internal transcribed spacer (ITS) region is commonly used to characterize fungal communities of various environments. Given their size and complexity, raw ITS sequences are necessarily processed and quality-filtered with bioinformatic pipelines. However, such pipelines are not yet standardized, especially for fungal communities, and those available may produce contrasting results. While some pipelines cluster sequences based on a specified percentage of base pair similarity into operational taxonomic units (OTUs), others utilize denoising techniques to infer amplicon sequencing variants (ASVs). While ASVs are now considered a more accurate representation of taxonomic diversity for prokaryote communities based on 16S rRNA amplicon sequencing, the applicability of this method for fungal ITS sequences is still debated.
Results: Here we compared the performance of two commonly used pipelines DADA2 (inferring ASVs) and mothur (clustering OTUs) on fungal metabarcoding sequences originating from two different environmental sample types (fresh bovine feces and pasture soil). At a 99% OTU similarity threshold, mothur consistently identified a higher fungal richness compared to DADA2. In addition, mothur generated homogenous relative abundances across multiple technical replicates (n = 18), while DADA2 results for the same replicates were highly heterogeneous.
Conclusions: Our study highlights a potential pipeline-associated bias in fungal metabarcoding data analysis of environmental samples. Based on the homogeneity of relative abundances across replicates and the capacity to detect OTUs/ASVs, we suggest using OTU clustering with a similarity of 97% as the most appropriate option for processing fungal metabarcoding data.
期刊介绍:
BMC Genomics is an open access, peer-reviewed journal that considers articles on all aspects of genome-scale analysis, functional genomics, and proteomics.
BMC Genomics is part of the BMC series which publishes subject-specific journals focused on the needs of individual research communities across all areas of biology and medicine. We offer an efficient, fair and friendly peer review service, and are committed to publishing all sound science, provided that there is some advance in knowledge presented by the work.