AI Article Synopsis

  • The study introduces a standardized framework for stable isotope probing (SIP) that uses shotgun metagenomics to identify active microbial populations without relying solely on 16S rRNA gene sequences, which can be challenging for linking to specific genomes.
  • A designed microbiome was used to compare different analysis methods and assess how different sequencing depths affect the identification of isotopically enriched genomes, ultimately improving the accuracy of identifying active taxa.
  • The research highlights the importance of using synthetic DNA standards for estimating genome abundances and presents an R package for statistical analyses, enhancing the reliability of SIP metagenomic studies to better understand microbial activity and potential.

Article Abstract

Stable isotope probing (SIP) facilitates culture-independent identification of active microbial populations within complex ecosystems through isotopic enrichment of nucleic acids. Many DNA-SIP studies rely on 16S rRNA gene sequences to identify active taxa, but connecting these sequences to specific bacterial genomes is often challenging. Here, we describe a standardized laboratory and analysis framework to quantify isotopic enrichment on a per-genome basis using shotgun metagenomics instead of 16S rRNA gene sequencing. To develop this framework, we explored various sample processing and analysis approaches using a designed microbiome where the identity of labeled genomes and their level of isotopic enrichment were experimentally controlled. With this ground truth dataset, we empirically assessed the accuracy of different analytical models for identifying active taxa and examined how sequencing depth impacts the detection of isotopically labeled genomes. We also demonstrate that using synthetic DNA internal standards to measure absolute genome abundances in SIP density fractions improves estimates of isotopic enrichment. In addition, our study illustrates the utility of internal standards to reveal anomalies in sample handling that could negatively impact SIP metagenomic analyses if left undetected. Finally, we present , an R package to facilitate the estimation of absolute abundances and perform statistical analyses for identifying labeled genomes within SIP metagenomic data. This experimentally validated analysis framework strengthens the foundation of DNA-SIP metagenomics as a tool for accurately measuring the activity of environmental microbial populations and assessing their genomic potential. IMPORTANCE Answering the questions, and within complex microbial communities is paramount for our ability to model, predict, and modulate microbiomes for improved human and planetary health. These questions can be pursued using stable isotope probing to track the incorporation of labeled compounds into cellular DNA during microbial growth. However, with traditional stable isotope methods, it is challenging to establish links between an active microorganism's taxonomic identity and genome composition while providing quantitative estimates of the microorganism's isotope incorporation rate. Here, we report an experimental and analytical workflow that lays the foundation for improved detection of metabolically active microorganisms and better quantitative estimates of genome-resolved isotope incorporation, which can be used to further refine ecosystem-scale models for carbon and nutrient fluxes within microbiomes.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10469821PMC
http://dx.doi.org/10.1128/msystems.01280-22DOI Listing

Publication Analysis

Top Keywords

stable isotope
16
isotopic enrichment
16
isotope probing
12
labeled genomes
12
microbial populations
8
16s rrna
8
rrna gene
8
active taxa
8
analysis framework
8
internal standards
8

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!