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Microbiome differential abundance methods produce different results across 38 datasets

Nature Communications 2022 866 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 55 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Jacob T. Nearing, Robyn Wright Robyn Wright Robyn Wright Robyn Wright Robyn Wright Robyn Wright Gavin M. Douglas, Dhwani Desai, Robyn Wright Morgan G. I. Langille, Morgan G. I. Langille, Molly G. Hayes, Molly G. Hayes, Robyn Wright Jocelyn MacDonald, Jocelyn MacDonald, Dhwani Desai, Nicole E. Allward, Morgan G. I. Langille, Casey Jones, Robyn Wright Akhilesh S. Dhanani, A. Comeau, Morgan G. I. Langille, Robyn Wright

Summary

Researchers compared 14 commonly used methods for identifying differentially abundant microbes across 38 microbiome datasets. They found that different methods often produced substantially different results when applied to the same data, with high rates of disagreement between tools. The study highlights that the choice of analytical method can significantly influence microbiome research conclusions and calls for greater standardization in the field.

Identifying differentially abundant microbes is a common goal of microbiome studies. Multiple methods are used interchangeably for this purpose in the literature. Yet, there are few large-scale studies systematically exploring the appropriateness of using these tools interchangeably, and the scale and significance of the differences between them. Here, we compare the performance of 14 differential abundance testing methods on 38 16S rRNA gene datasets with two sample groups. We test for differences in amplicon sequence variants and operational taxonomic units (ASVs) between these groups. Our findings confirm that these tools identified drastically different numbers and sets of significant ASVs, and that results depend on data pre-processing. For many tools the number of features identified correlate with aspects of the data, such as sample size, sequencing depth, and effect size of community differences. ALDEx2 and ANCOM-II produce the most consistent results across studies and agree best with the intersect of results from different approaches. Nevertheless, we recommend that researchers should use a consensus approach based on multiple differential abundance methods to help ensure robust biological interpretations.

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