Bridging the Gaps in Meta-Omic Analysis: Workflows and Reproducibility

OMICS. 2023 Dec;27(12):547-549. doi: 10.1089/omi.2023.0232. Epub 2023 Nov 29.

Abstract

The past few years have seen significant advances in the study of complex microbial communities associated with the evolution of sequencing technologies and increasing adoption of whole genome shotgun sequencing methods over the once more traditional Amplicon-based methods. Although these advances have broadened the horizon of meta-omic analyses in planetary health, human health, and ecology from simple sample composition studies to comprehensive taxonomic and metabolic profiles, there are still significant challenges in processing these data. First, there is a widespread lack of standardization in data processing, including software choices and the ease of installing and running attendant software. This can lead to several inconsistencies, making comparing results across studies and reproducing original results difficult. We argue that these drawbacks are especially evident in metatranscriptomic analysis, with most analyses relying on ad hoc scripts instead of pipelines implemented in workflow managers. Additional challenges rely on integrating meta-omic data, since methods have to consider the biases in the library preparation and sequencing methods and the technical noise that can arise from it. Here, we critically discuss the current limitations in metagenomics and metatranscriptomics methods with a view to catalyze future innovations in the field of Planetary Health, ecology, and allied fields of life sciences. We highlight possible solutions for these constraints to bring about more standardization, with ease of installation, high performance, and reproducibility as guiding principles.

Keywords: data integration; metagenomics; metatranscriptomics; pipelines; reproducibility; sustainable software.

MeSH terms

  • High-Throughput Nucleotide Sequencing / methods
  • Humans
  • Metagenomics / methods
  • Microbiota* / genetics
  • Reproducibility of Results
  • Software*
  • Workflow