4.6 Article

Challenges, Strategies, and Perspectives for Reference-Independent Longitudinal Multi-Omic Microbiome Studies

Journal

FRONTIERS IN GENETICS
Volume 12, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fgene.2021.666244

Keywords

microbiome; metatranscriptomics; metaproteomics; time-series; metagenomics; metabolomics; de novo assembly

Funding

  1. Luxembourg National Research Fund (FNR) [PRIDE15/10907093, PRIDE/18/11823097, C15/SR/10404839, CORE/17/SM/11689322]
  2. Sinergia grant through the Swiss National Science Foundation [CRSII5_180241]
  3. European Research Council (ERC-CoG) [863664]
  4. Swiss National Science Foundation (SNF) [CRSII5_180241] Funding Source: Swiss National Science Foundation (SNF)
  5. European Research Council (ERC) [863664] Funding Source: European Research Council (ERC)

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Multi-omic studies have become increasingly prevalent in microbial communities, allowing for a deeper understanding of community structure and function. Longitudinal multi-omic microbiome datasets offer advantages in understanding community dynamics.
In recent years, multi-omic studies have enabled resolving community structure and interrogating community function of microbial communities. Simultaneous generation of metagenomic, metatranscriptomic, metaproteomic, and (meta) metabolomic data is more feasible than ever before, thus enabling in-depth assessment of community structure, function, and phenotype, thus resulting in a multitude of multi-omic microbiome datasets and the development of innovative methods to integrate and interrogate those multi-omic datasets. Specifically, the application of reference-independent approaches provides opportunities in identifying novel organisms and functions. At present, most of these large-scale multi-omic datasets stem from spatial sampling (e.g., water/soil microbiomes at several depths, microbiomes in/on different parts of the human anatomy) or case-control studies (e.g., cohorts of human microbiomes). We believe that longitudinal multi-omic microbiome datasets are the logical next step in microbiome studies due to their characteristic advantages in providing a better understanding of community dynamics, including: observation of trends, inference of causality, and ultimately, prediction of community behavior. Furthermore, the acquisition of complementary host-derived omics, environmental measurements, and suitable metadata will further enhance the aforementioned advantages of longitudinal data, which will serve as the basis to resolve drivers of community structure and function to understand the biotic and abiotic factors governing communities and specific populations. Carefully setup future experiments hold great potential to further unveil ecological mechanisms to evolution, microbe-microbe interactions, or microbe-host interactions. In this article, we discuss the challenges, emerging strategies, and best-practices applicable to longitudinal microbiome studies ranging from sampling, biomolecular extraction, systematic multi-omic measurements, reference-independent data integration, modeling, and validation.

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