Quantification of metabolic niche occupancy dynamics in a Baltic Sea bacterial community
Progress in molecular methods has enabled the monitoring of bacterial populations in time. Nevertheless, understanding community dynamics and its links with ecosystem functioning remains challenging due to the tremendous diversity of microorganisms. Conceptual frameworks that make sense of time-seri...
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Zusammenfassung: | Progress in molecular methods has enabled the monitoring of bacterial
populations in time. Nevertheless, understanding community dynamics and its
links with ecosystem functioning remains challenging due to the tremendous
diversity of microorganisms. Conceptual frameworks that make sense of
time-series of taxonomically-rich bacterial communities, regarding their
potential ecological function, are needed. A key concept for organizing
ecological functions is the niche, the set of strategies that enable a
population to persist and define its impacts on the surroundings. Here we
present a framework based on manifold learning, to organize genomic information
into potentially occupied bacterial metabolic niches over time. We apply the
method to re-construct the dynamics of putatively occupied metabolic niches
using a long-term bacterial time-series from the Baltic Sea, the Linnaeus
Microbial Observatory (LMO). The results reveal a relatively low-dimensional
space of occupied metabolic niches comprising groups of taxa with similar
functional capabilities. Time patterns of occupied niches were strongly driven
by seasonality. Some metabolic niches were dominated by one bacterial taxon
whereas others were occupied by multiple taxa, and this depended on season.
These results illustrate the power of manifold learning approaches to advance
our understanding of the links between community composition and functioning in
microbial systems. |
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DOI: | 10.48550/arxiv.2208.05204 |