PT - JOURNAL ARTICLE AU - Jacob T. Nearing AU - Gavin M. Douglas AU - Molly Hayes AU - Jocelyn MacDonald AU - Dhwani Desai AU - Nicole Allward AU - Casey M. A. Jones AU - Robyn Wright AU - Akhilesh Dhanani AU - André M. Comeau AU - Morgan G. I. Langille TI - Microbiome differential abundance methods produce disturbingly different results across 38 datasets AID - 10.1101/2021.05.10.443486 DP - 2021 Jan 01 TA - bioRxiv PG - 2021.05.10.443486 4099 - http://biorxiv.org/content/early/2021/05/10/2021.05.10.443486.short 4100 - http://biorxiv.org/content/early/2021/05/10/2021.05.10.443486.full AB - Identifying differentially abundant microbes is a common goal of microbiome studies. Multiple methods have been applied for this purpose, which are largely used interchangeably in the literature. Although it has been observed that these tools can produce different results, there have been very few large-scale comparisons to describe the scale and significance of these differences. In addition, it is challenging for microbiome researchers to know which differential abundance tools are appropriate for their study and how these tools compare to one another. Here, we have investigated these questions by analyzing 38 16S rRNA gene datasets with two sample groups for differential abundance testing. We tested for differences in amplicon sequence variants and operational taxonomic units (referred to as ASVs for simplicity) between these groups with 14 commonly used differential abundance tools. Our findings confirmed that these tools identified drastically different numbers and sets of significant ASVs, however, for many tools the number of features identified correlated with aspects of the tested study data, such as sample size, sequencing depth, and effect size of community differences. We also found that the ASVs identified by each method were dependent on whether the abundance tables were prevalence-filtered before testing. ALDEx2 and ANCOM produced the most consistent results across studies and agreed best with the intersect of results from different approaches. In contrast, several methods, such as LEfSe, limma voom, and edgeR, produced inconsistent results and in some cases were unable to control the false discovery rate. In addition to these observations, we were unable to find supporting evidence for a recent recommendation that limma voom, corncob, and DESeq2 are more reliable overall compared with other methods. Although ALDEx2 and ANCOM are two promising conservative methods, we argue that those researchers requiring more sensitive methods should use a consensus approach based on multiple differential abundance methods to help ensure robust biological interpretations.Competing Interest StatementThe authors have declared no competing interest.