| Literature DB >> 30227897 |
Keith Arora-Williams1, Scott W Olesen2,3, Benjamin P Scandella4,5, Kyle Delwiche4,6, Sarah J Spencer2, Elise M Myers4,7, Sonali Abraham1,8, Alyssa Sooklal1, Sarah P Preheim9.
Abstract
BACKGROUND: Microbial processes are intricately linked to the depletion of oxygen in in-land and coastal water bodies, with devastating economic and ecological consequences. Microorganisms deplete oxygen during biomass decomposition, degrading the habitat of many economically important aquatic animals. Microbes then turn to alternative electron acceptors, which alter nutrient cycling and generate potent greenhouse gases. As oxygen depletion is expected to worsen with altered land use and climate change, understanding how chemical and microbial dynamics impact dead zones will aid modeling efforts to guide remediation strategies. More work is needed to understand the complex interplay between microbial genes, populations, and biogeochemistry during oxygen depletion.Entities:
Keywords: 16S rRNA gene sequencing; Biogeochemical model; Metagenome-assembled genome
Mesh:
Substances:
Year: 2018 PMID: 30227897 PMCID: PMC6145348 DOI: 10.1186/s40168-018-0556-7
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 14.650
Fig. 1Distribution of genes (black lines, normalized relative abundance) and their correspondence with modeled processes (gray lines, relative rate) suggest that the model captures the major factors influencing the distribution of most genes in the lake, except genes involved in sulfur cycling. Modeled rates are identical to those published in a previous analysis, which were not calibrated to match gene distributions. Observations represent the following genes and corresponding processes: a nosZ genes with associated modeled processes heterotrophic and autotrophic denitrification, combined; b genes involved in iron reduction in Geobacter and Rhodoferax and modeled heterotrophic iron reduction; c dsrB genes and modeled heterotrophic sulfate reduction and autotrophic sulfide oxidation, combined; d pmoABC genes and modeled methane oxidation and nitrification, combined; e hoa genes and modeled nitrification; and f mxaG genes and modeled methane oxidation (using both oxygen and sulfate)
Populations (OTUs) and associated genomes (MAGs) implicated in mediating processes in the biogeochemical model
| Biogeochemical process | Classification | OTU/MAG | Metabolic versatility (genes) |
|---|---|---|---|
| Iron oxidation | seq6/bin.59 | Sulfur cycling ( | |
| Sulfur oxidation |
| seq335/bin.15 | Denitrification ( |
| Methane oxidation |
| seq172/bin.78 | Denitrification ( |
| Methanol oxidation |
| seq3/bin.71 | NA |
| Ammonia oxidation |
| seq39/bin.19 | Denitrification ( |
| Denitrification |
| Various | NA |
| Iron reduction | seq12/bin.4 | Denitrification ( | |
| Iron reduction |
| seq228_1/bin.34 | NA |
| Sulfate reduction | seq106/bin.25 | NA |
Fig. 2a–i Distribution MAGs (bins) and matched OTUs within the water column. To match OTUs with MAGs, the MAG distribution (red) had to align with both the amplicon OTU (aOTU; black) and metagenomic OTU (mOTU; gray) distributions of the same sequence. From the most abundant OTUs, these OTUs matched the MAGs with a similar distribution and classification. The MAG characteristics, including similarity to cultured microorganisms with the same characteristic and presence of the genes in the MAG, support the role of these OTUs in the modeled process in the lake
Fig. 3Percent change in modeled chemical species after removing denitrification coupled to methane and sulfur oxidation from the optimized model. After calibrating the model to match the chemical and gene distributions with the additional processes, denitrification coupled to methane and sulfur oxidation rate constants were set to zero, but all other parameters remained constant. Chemical concentrations were summed over all depths and time points. Removing these processes most substantially impacts iron speciation likely because of the competition with iron oxidation for nitrate
Fig. 4a–t Dynamics of populations capable of mediating the modeled processes. The spatiotemporal distribution of OTUs (second and fourth column) and associated processes predicted by the model (first and third column, respectively). Each panel has a its own key to the right of the graph indicating the color coding specific to each graph for the relative abundance (percent of total) of each OTU or rate (μM y-1) of each process. The model was not calibrated using OTU dynamics; thus, the relationship between the model and observations suggests that the availability of energy is an underlying factor driving the spatiotemporal dynamics of the most abundant and active microorganisms in the lake