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Modulation of nitrous oxide (NO) accumulation by primary metabolites in denitrifying cultures adapting to changes in environmental C and N Octavio Perez-Garcia, Cody Mankelow, Kartik Chandran, Silas G. Villas-Boas, and Naresh Singhal Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b03345 • Publication Date (Web): 30 Oct 2017 Downloaded from http://pubs.acs.org on October 31, 2017
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Submitted to: Environmental Science and Technology
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Modulation of nitrous oxide (N2O) accumulation by primary metabolites in denitrifying
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cultures adapting to changes in environmental C and N
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Octavio Perez-Garciaa*, Cody Mankelowa, Kartik Chandranb,
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Silas G. Villas-Boasc, Naresh Singhala*
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a
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b
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c
Department of Civil and Environmental Engineering, University of Auckland, New Zealand Department of Earth and Environmental Engineering, Columbia University, USA
School of Biological Sciences, University of Auckland, New Zealand
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*Corresponding authors: Octavio Perez-Garcia and Naresh Singhal. Department of Civil and
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Environmental Engineering, University of Auckland. 2-6 Park Avenue, Grafton, Auckland.
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New Zealand, 1023. Phone: +64 9 923 4512; Fax: +64 9 373 7462; Emails:
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[email protected] and
[email protected] and
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Running title: Metabolomics and metabolic modeling of denitrifying cultures producing N2O
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Word count Body Tables Figures TOTAL
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Abstract (241 words)
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Metabolomics provides insights
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into the actual physiology of cells
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rather than their mere ‘potential’,
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as provided by genomic and
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transcriptomic analysis. We
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investigate the modulation of
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nitrous oxide (N2O) accumulation
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by intracellular metabolites in
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denitrifying bacteria using
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metabolomics and genome based metabolic network modeling. Profiles of metabolites and
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their rates of production/consumption were obtained for denitrifying batch cultures under
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four conditions: initial COD:N ratios of 11:1 and 4:1, with and without nitrite spiking (28
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mg-N L-1). Only the nitrite-spiked cultures accumulated N2O. The NO2- spiked cultures with
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an initial COD:N = 11:1 accumulated 3.3±0.57 % of the total nitrogen added as N2O and
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large pools of tricarboxylic acid cycle intermediates and amino acids. In comparison, the
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NO2- spiked cultures with COD:N =4:1 showed significantly higher (p=0.028) N2O
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accumulation (8.5.3±0.9 % of the total nitrogen added), which was linked to the depletion of
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C11-C20 fatty acids. Metabolic modelling analysis shows that at COD:N of 4:1 the
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denitrifying cells slowly generate electron equivalents as FADH2 through β-oxidation of
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saturated fatty acids while COD:N of 11:1 do it through the TCA cycle. When combined with
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NO2- shock, this prolonged the duration over which insufficient electron equivalents were
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available to completely reduce NOx to N2, resulting in increased N2O accumulation. Results
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extend the understanding of how organic carbon and nitrite loads modulate N2O
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accumulation in denitrification, which may contribute to further design strategies to control
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greenhouse gas emissions from agricultural soils or wastewater treatment systems.
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Key words: denitrification, nitrous oxide, metabolomics, metabolic network, electron
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equivalent distribution, carbon oxidation
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Introduction
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Microbial denitrification in natural and engineered ecosystems accounts for 40% to
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85% of global nitrous oxide (N2O) emissions.1-3 This is of significant concern as N2O
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participates in atmospheric ozone-layer depletion and has a global warming potential 300 fold
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greater than carbon dioxide.4-6 Denitrification involves enzymatic reduction of nitrate (NO3-)
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or nitrite (NO2-) to di-nitrogen gas (N2) through sequential production of the intermediary
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compounds nitric oxide (NO) and nitrous oxide (N2O).7-9 N2O accumulation and emission
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occurs under specific environmental conditions that lead to incomplete denitrification by
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microrganisms.3,10
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Among several biotic and abiotic factors influencing N2O production by biological
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systems, NO2- accumulation and carbon substrate limitation are conditions commonly
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associated with N2O emissions during denitrification. Such conditions can be created by
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seasonal variations in C and N loading in agricultural soils or created in specific process
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configurations such as shortcut nitrification or biological phosphorus removal in wastewater
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treatment systems.10,11 Nitrite, as free nitrous acid (HNO2 or FNA), can result in cell death,
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retarding growth, reducing cellular respiration, and inhibiting NO3- and N2O reduction
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enzymes.12 Carbon substrate limitation results in lowering the production of electron
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equivalents required for the complete reduction of nitrogen oxides (NOx).13 N2O
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accumulation has however also been observed when the carbon substrate is available in
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abundance14,15 and when nitrite accumulation does not occur.11,14 The concentrations of
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carbon and nitrogen substrates in the extracellular environment may not necessarily reflect
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the internal C:N balance in the cell. In this study we investigate the hypothesis that
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intracellular C:N ratio governs N2O accumulation by affecting carbon oxidation and nitrogen
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reduction pathways.
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N2O accumulation during denitrification is intrinsically linked to intracellular carbon
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and nitrogen balance as the carbon oxidation pathways (glycolysis, tricarboxylic acid (TCA)
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cycle and lipid metabolism) provide the electrons equivalents required by denitrifying
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enzymes to reduce N oxides.7,16,17 Independently to denitrification enzymes co-occurrence
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and kinetics, accumulation of N2O occurs when the generated electron equivalents are
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insufficient to completely reduce intracellular NO3- or NO2- to N2. This balance can be
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disturbed via either a decrease in the production rate of electron equivalents or an increase in
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reducible N oxides. The amount and degradability of intracellular carbon affects the rate of
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production of electron equivalents.14,18,19 For example, oxidation of intracellular carbon
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storage compounds (i.e. poly-β-hydroxybutyrate (PHB)) have been shown to influence the
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rate of electron equivalent generation and N2O accumulation.20-23 The consumption of
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electron equivalents is governed by the type and amount of nitrogen oxide. For example,
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NO3- concentration governs the overall denitrification rate, but NO2- and FNA can lower
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NO3- metabolism and increase N2O accumulation by inhibiting N2O reductase (Nos) in a dose
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dependent manner.12,24 An investigation into the interactions between multiple carbon
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oxidation pathways and nitrite reduction has not been previously reported.
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The carbon oxidation and nitrogen reduction pathways are linked via numerous
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metabolites.25 In this study we examine how N2O accumulation during denitrification is
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regulated by these metabolites as well as the reactions that produce or consume them.
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Specifically, we investigate the effect of NO2- addition and organic carbon limitation on N2O
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accumulation by monitoring changes in ~60 intermediate metabolites of the microbial central
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carbon metabolism. Previous studies have investigated the influence of genetic diversity26,27
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and regulation13,15,16 of Nos on N2O accumulation. We focus on the actual metabolic
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phenotype of denitrifying cultures during N2O accumulation, instead of their genomic
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potential. We quantify metabolites using GC-MS metabolomics and model the rates of their
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oxidation and the transfer of electron-equivalents in the respiratory chains (e.g., via NADH,
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lactate, succinate, FADH2, glycerol-P and glycolate) using a genome-informed stoichiometric
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metabolic network (SMN) model. We influence the production and consumption of electron
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equivalents in denitrifying cultures by altering the COD:N ratio in growth medium and
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spiking with nitrite (NO2-) to create conditions that have been reported to yield significant
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N2O accumulation.15,28,29
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Materials and Methods
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Denitrification batch experiments Experiments with batch cultures of denitrifying sludge were conducted in bioreactors
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of 3 L of working volume to test four experimental conditions: two growth mediums with
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different ratios of carbon-to-nitrogen sources, with and without nitrite spiking of 28 mg of
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nitrogen (2 mmol-N) per liter of culture. The two initial COD:N ratios tested were 11:1 and
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4:1 (where the carbon source is referenced as COD (chemical oxygen demand)). These ratios
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were selected to mimic abundant and limited availability of carbon respectively, as described
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in the Supporting Information (SI) document. Nitrite spiking was performed by adding 5 mL
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of a 1.2 M NaNO2 solution when NO3- reduction reached a steady state; this occurred after ~1
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and ~30 hours of cultivation respectively in experiments with COD:N 11:1 or 4:1 mediums.
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NO2- spike concentration was selected, as described in the SI, to partially inhibit N2O
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reduction. The non-spiked cultures were considered as controls. Each condition was tested in
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triplicate by independently running three batch reactors. The reactors were inoculated with
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returning activated sludge (RAS) from a 30 million liter activated sludge reactor. As
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described in the SI, this parental reactor had an SRT of 17 days and treated municipal
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wastewater with average ammonium and COD concentrations of ~60 and ~400 mg-N L-1
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respectively. To obtain the inoculant, 300 mL of sludge was twice washed with autoclaved
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tap water and then diluted to achieve a volatile suspended solids (VSS) content of 1.3±0.2 g
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L-1. Sludge was acclimatized to experimental conditions to avoid N2O production upon
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reactor start-up and to preconditions the internal state of cells to the tested COD:N ratios.
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Acclimation was conducted in the 3 L reactors over four batch cultivation cycles as described
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in the SI. The batch experiments were initiated in the fifth cultivation cycle by adding 0.3 L
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of concentrated phosphate buffer to 2.7 L of the acclimatized sludge. The concentrated
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phosphate buffer consisted of NaNO3 (3 g L-1), NaOH (40 g L-1), KH2PO4 (13.7 g L-1),
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FeSO4-7H2O (0.02 g L-1) and commercial milk powder (0.1 g L-1) to provide micronutrients.
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Sodium acetate served as a carbon source, and was added at concentrations of 0.7 g L-1 or
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0.25 g L-1 of culture to obtain soluble COD (sCOD) of 541 or 196 mg-O2 L-1 depending on
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the tested COD:N ratio. The resulting initial conditions in the growth medium were a nitrate
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(NO3--N) concentration of 49±3 mg-N L-1 (3.5±0.2 mmol-N L-1), VSS of 1±0.13 g L-1, pH of
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7.5±0.1 and COD:N ratios of 11:1 or 4:1. Cultures were mixed with magnetic stirrers at room
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temperature (22 to 25ºC) until NO3- depletion stopped.
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Chemical analyses Denitrifying cultures were monitored using a combination of online and offline
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methods. Dissolved N2O and NO2- concentrations were respectively measured in real time
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using Clark-type N2O-R and NOx--bio microsensors connected to a v2.01microsensor
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multimeter (Unisense, Aarhus, Denmark). Prior to all measurements, the N2O Clark type
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sensors were pre-activated, pre-polarized and calibrated according to manufacturer
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specifications as described in the SI. Obtained N2O data was further corrected due to
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temperature fluctuations30 (SI). NO3-concentration was measured offline in 10 mL culture
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samples using an ion selective electrode (IntelliCAL ISENO318101, Hach Company, USA).
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The 10 mL samples were also analyzed for TSS, VSS (total and volatile suspended solids)
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and sCOD in accordance with the Standard Methods for the Examination of Water and
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Wastewater.31 Microbial biomass concentration was estimated as soluble protein using the
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Bradford colorimetric assay32 in microplate format. All offline measurements were performed
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in triplicate by analyzing three independent samples.
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Metabolite profiling The relative abundance of intracellular metabolites in the bacterial cells of the mixed
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culture was measured following our in house protocol.33 After NO3- depletion with time
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became linear, a 30 mL sample was taken from each bioreactor and immediately vacuum
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filtered using a 0.45 µm pore-size cellulose acetate filter. The biomass retained on the filter
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paper was quenched by rapidly washing it with 10 mL of cold saline solution (0.9 % (wt/vol)
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NaCl at 4 ºC). 110 milligrams of the washed biomass (equivalent to 30±1.6 mg dry weight in
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20 samples previously weighted, dried and re-weighted) were placed in a 15 mL pre-weighed
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centrifuge tube containing 2.5 mL of cold methanol-water solution (1:1 (vol/vol)) at -20 ºC.
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An internal standard 2,3,3,3-d4-alanine at a concentration of 0.5 µmol/mL was added and the
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samples were stored at -80 ºC until further processing. After 4 weeks the intracellular
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metabolites were extracted by subjecting the stored biomass to freeze-thaw cycles as we
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previously described.33 The cell debris collected after metabolite extraction was dried using a
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domestic microwave (250 W for 20 min) and weighed to measure the total biomass content
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(dry weight) of each sample. The extracts were concentrated by adding 10 mL of cold (4 ºC)
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bi-distilled water, freezing the diluted extracts to -80 ºC and then freeze-drying them. The
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freeze-dried samples were re-suspended in 200 µL NaOH (1 N) and then derivatized using
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methyl chloroformate (MCF).33 The MCF derivatives were analyzed using a GC-MS system
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(Agilent GC7890 coupled to a MSD597 unit) equipped with a ZB-1701 GC-capillary column
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(30 m × 250 µm (id) × 0.15 µm film thickness) with a 5 m guard column (Phenomenex,
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Torrance, USA) and operated as we previously described.33 To provide statistical robustness
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to data, six biomass samples were analyzed for each of the four experimental conditions (i.e.
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each condition was tested in three separate cultures, each culture sampled in duplicate).
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Metabolite data mining, normalization and analysis The metabolites were identified by deconvoluting GC-MS chromatograms with
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AMDIS software (NIST, Boulder, CO, USA) and comparing the obtained mass spectrums to
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the in-house MCF MS library as detailed previously.33 Metabolite identification was based on
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the MS spectrum of the derivatized metabolites as well as their chromatographic retention
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times. The relative abundance of identified metabolites was determined with the ChemStation
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software (Agilent Technologies, Santa Clara, USA), using the GC base-peak value of the
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selected reference ion for each metabolite.33 Metabolites detected in only one sample were
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excluded from the analysis. The relative abundance values were normalized (divided) by the
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biomass content of the sample and then by the abundance of the internal standard 2,3,3,3-d4-
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alanine. Finally the normalized values were auto-scaled using the formula S1 of the SI to
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obtain relative abundances of all metabolites on the same scale (from -1 to 1).34 The auto-
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scaled values are denoted as where is the relative abundance of metabolite in sample .
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The statistical differences between metabolite profiles of samples were assessed using Partial
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Least Squares-Discriminant Analysis (PLS-DA). Analysis of variance (ANOVA) was
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performed to determine if relative abundances of the identified metabolites were significantly
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different among samples. Both PLS-DA and ANOVA were performed using the R software35
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as described in the SI. The Pathway Activity Profiling (PAPi) algorithm36 was used to predict and compare
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the relative activity of metabolic pathways given the observed profile of metabolites in
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biomass samples. The PAPi program connects to the KEGG online database
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(http://www.kegg.com) and predicts the metabolic pathway that is likely to be active by
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developing a pathway Activity Score (SA) using the number of identified metabolites and
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their relative abundances in each sample.36 The PAPi analysis was performed for each of the
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24 generated profiles of metabolites and the resulting SA scores for each pathway in each
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experimental condition were averaged (n = 6). The entire data mining, data normalization and
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pathway activity predictions were automated in R software as described previously.33,36
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Graphical representations of the results were generated using gplots and ggplot2 packages in
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R.37
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Genome based metabolic model A genome-informed stoichiometric metabolic network (SMN) model of denitrifiers
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metabolism was developed to estimate the flux of metabolites through the multiple carbon
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oxidation and nitrogen respiration reactions in the biomass. To capture the diversity of
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electron carrier metabolites in denitrification respiratory pathways, the model lumped
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metabolic reactions occurring in the bacterial species Acidovorax ebreus, Azoarcus sp.
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KH32C, Paracoccus denitrificans and Pseudomonas aeruginosa. These are all well-studied
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model denitrifying microbes38 commonly detected in full-scale and laboratory denitrifying
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activated sludge systems.39,40 However, the microbial population in the bioreactors’ biomass
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was not directly characterized in this study. The model was developed using the procedure
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developed by Thiele and Palsson.41 Briefly, literature and the online genomic-biochemical
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databases KEGG (http://www.genome.jp/kegg/), NCBI (http://www.ncbi.nlm.nih.gov/) and
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MetaCyc (http://metacyc.org/) were used to obtain stoichiometric equations of biochemical
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reactions reported to occur in the modeled microbial species and participating in the
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following pathways: (i) assimilation (oxidation) of carbon sources (i.e. acetate, ethanol,
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glucose, C2 to C4 organic acids and common amino acids); (ii) nitrogen respiration and
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oxidative phosphorylation; (iii) synthesis of the 20 common amino acids; and (iv) the
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reduction/oxidation of saturated fatty acids, unsaturated fatty acids, glycerolipids and
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phosphoglycerolipids. Reaction equations of the four microbial species were compiled into a
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single list of equations to assemble a lumped-network as previously described.42 The
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complete model contained 480 metabolic reactions involving 351 metabolites (listed in Table
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S-2 of SI). Assimilation pathways of single carbon compounds (e.g. methanol, methane) were
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not included as acetate was the model carbon source used in the experiments.
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Metabolic flux estimation Intracellular metabolic fluxes (or reaction rates) were estimated by running flux
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balance analyses (FBA43,44 – algorithm description provided in the SI) in the SMN model as
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follows. All model analyses were done using the COBRA toolbox v245 and the GLPK solver
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(GNU project, Moscow, Russia) in Matlab® 7 R2010b (The Mathworks Inc, Massachusetts,
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USA). FBA simulations were performed using biomass production maximization as objective
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function and the substrate consumption rates measured in experimental cultures together with
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the SA scores obtained from the PAPi analysis as model input data (constraints). This was
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done following 3 steps: (i) The fold change of SA scores between control and NO2- spiked
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conditions at the same COD:N ratio was calculated for each metabolic pathway using the
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formula
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calculated for the control condition via FBA. FBA was performed suing the control cultures’
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nitrate and acetate consumption rates (expressed as mmol gVSS-1 h-1) as model input values
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(constraints). Uptake rates of carbon substrates apart from acetate were set to zero while the
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rates of intracellular metabolic reactions were set as unconstrained ( = ∞); (iii) new
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constraints were calculated for the NO2- spiked condition ( ) using the formula
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= ∗
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condition ( ) were obtained via FBA by setting the constraints
= ; (ii) a set of metabolic fluxes ( ) was
; and (iv) finally, the metabolic fluxes of the NO2- spiked
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calculated in the previous step together with the nitrate and acetate consumption rates
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measured in the NO2- spiked cultures. Model accuracy was measured using absolute percent
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errors between model-predicted and experimental rates of N2O, NO3-, NO2-, and acetate
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consumption/production.46
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Results
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Effect of COD:N ratio and NO2- spikes on N2O accumulation Carbon limitation and nitrite exposure influenced the rate and magnitude of N2O
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accumulation of denitrifying batch cultures (Figure 1). The controls (not spiked with NO2-)
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for COD:N 11:1 and COD:N 4:1 showed no N2O accumulation. The consumption rates of
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NO3- and sCOD were much higher for COD:N 11:1 in comparison to COD:N 4:1. The
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COD:N = 11:1 cultures consumed the initial NO3- concentration of 50 mg-N L-1 (3.5 mmol-N
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L-1) within 2.5 hours at a rate of 1.73±0.08 mmol-N gVSS-1 h-1 (Figure 1A), while the 4:1
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cultures only consumed half the available NO3- (~1.9 mmol-N L-1) over a prolonged duration
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of 96 hours at a rate of 0.11±0.022 mmol-N gVSS-1 h-1 (Figure 1B). Similarly, the sCOD
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consumption rate was much higher for COD:N 11:1 (37.9±5.1 mmol-O2 gVSS-1 h-1) than
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for COD:N 4:1 (2.7±0.23 mmol-O2 gVSS-1 h-1). Nitrite spikes generated a slight increase of
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sCOD in initial COD:N 4:1 cultures, possibly due to lysis of carbon starved cells. The
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biomass concentration in all tested conditions (measured as VSS and soluble protein) did not
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vary significantly (according to ANOVA test at α=0.05) over the duration of the experiments,
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indicating that differences in denitrification activity are only from differences in available
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carbon.
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Exposure to NO2- resulted in significant changes in denitrification performance and
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N2O accumulation (Figure 1 and Table 1). While N2O accumulation commenced immediately
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upon the addition of 28 mg-N L-1 NO2- (which yielded ~2.15-2.3 µg L-1 of HNO2-N at pH 7.5
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and 22 to 25°C), the magnitude and duration of accumulation was substantially influenced by
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the COD:N ratio. Nitrite-spiked cultures with COD:N 11:1 produced only 0.54±0.11 mmol
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N2O-N (representing 3.3±0.5 % of the total nitrogen added to the culture or 5.9±0.88 % of the
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denitrified NO3--N) at a rate of 0.14±0.002 mmol-N gVSS-1 h-1 (Figure 1C), while cultures
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with COD:N 4:1 produced a large amount of N2O (1.41±0.27 mmol of N2O-N representing
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8.5±0.9 % of the total nitrogen added or 20.4±2.6 % of denitrified NO3--N) although at a low
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formation rate (0.023±0.007mmol-N gVSS-1 h-1) (Figure 1C). N2O consumption started only
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after NO2- exhaustion. NO2- spiking caused a drop in the acetate and NO3- removal rates,
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indicating a preferential reduction of NO2- over NO3-.
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COD:N ratio and NO2- addition redistribute pools of C & N storage metabolites
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A total of 53 intracellular metabolites were identified in 24 biomass samples (4
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experimental conditions each analyzed using 6 replicate samples), of which: five are
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tricarboxylic acid cycle (TCA) intermediates, fourteen are common amino acids, twenty are
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fatty acids (thirteen saturated and seven unsaturated), four are di-carboxylic organic acids,
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and ten are intermediates of amino acid metabolism. The complete list of identified
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metabolites is presented in Table S-1 of SI. The majority of the identified compounds are
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primary metabolites. Hydroxybutyric acid, the building block of PHB, was detected in only
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one sample, and therefore disregarded from the analysis. Of the 53 metabolites identified, 14
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had relative abundances without significant statistical difference among the four experimental
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conditions (α > 0.05, Table S-1 of SI), indicating activation of metabolic pathways common
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to all experimental conditions as explained in the discussion section.
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The relative abundances of intracellular metabolites were affected by the COD:N ratio
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and NO2- spikes having significant differences among the four tested conditions (Figure 2A).
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In general the relative abundances of metabolites in biomass samples from COD:N 4:1
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cultures were significantly lower than those from COD:N 11:1 cultures (Figure 2B), even
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though all biomass samples had the same dry weight (30 ± 1.6 mg).
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The initial COD:N ratios significantly changed the abundance of 39 metabolites
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(according to ANOVA tests at α = 0.05). Primary metabolites, i.e. TCA cycle intermediates,
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common amino acids and saturated and unsaturated fatty acids were abundant in COD:N11:1
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cultures (Figure 2B), indicating the soluble acetate was used to build up amino and lipids ,
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and to generate electron equivalents through TCA activation. Conversely, the cultures on
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COD:N 4:1 medium were acetate starved and did not accumulate large pools of amino and
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fatty acids (negative ). This famine condition generated low NO3- and acetate consumption
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rates which is consistent with the scarcity of TCA intermediates generating electron-
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equivalents.
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Nitrite spikes influenced the abundance of specific groups of metabolites depending
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on the metabolic state of cells determined by the initial COD:N ratio. COD:N 11:1 NO2-
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spiked cultures had higher relative abundance of TCA cycle intermediates and all amino
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acids (except serine, aspartic acid and glutamic acid) compared with the non-spike COD:N 11
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control (Figure 2C). At COD:N 4:1 the relative abundance of TCA intermediate and amino
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acids of control and NO2- spiked cultures were similar. However, long chain-saturated fatty
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acids (i.e. C8 to C20 fatty acids), were significantly lower in cultures spiked with NO2-
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(Figure 2C), indicating depletion of inner carbon and energy storage compounds in response
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to NO2- addition.
304 305 306
NO2- addition affects different metabolic pathways depending on initial COD:N ratio The activity of 36 metabolic pathways was estimated on basis of the observed profiles
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of metabolites using the PAPi analysis. Results indicate higher Activity Score (SA) per unit
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biomass in metabolic pathways of cells in COD:N 11:1 cultures in comparison to those in
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COD:N 4:1 (Figure S-2). As with the observed metabolite profiles the predicted SA scores
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indicate that biosynthetic pathways were down-regulated in COD:N 4:1 cultures, which is not
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surprising given the lack of environmental carbon source. Nevertheless the addition of NO2-
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generated specific responses in pathways activities depending on the COD:N ratio. For
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instance, Figure 3 shows the change of pathway activity of cells in NO2- spiked cultures in
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comparison to that of control cultures with the same initial COD:N ratio. In COD:N 11:1
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cultures, NO2- addition increased the metabolic activity of “pyruvate metabolism”,
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“glycolysis/gluconeogenesis” and “TCA cycle” pathways, while in the COD:N 4:1 cultures
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the metabolic activity of “fatty acids biosynthesis” decreased but “fatty acids degradation”
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increased (Figure 3).
319 320
Metabolic response to NO2- addition modulates N2O accumulation
321
FBA simulations of the SMN model lumping biochemical reactions from four
322
denitrifying species provided estimates of metabolic fluxes in the many reactions occurring in
323
external and internal carbon oxidation and nitrogen reduction in the cultures. The
324
denitrification pathway is captured as four sequential reactions which are independent of the
325
quantity and co-occurrence of genes encoding for Nap, Nir, Nor and Nor enzymes present in
326
the microbial population. The fluxes are a snapshot quantification of the metabolic rates
327
occurring in cultures’ biomass at the moment of maximum N2O productivity (after NO2-
328
addition). Figure 4 presents a comparison of the metabolic fluxes estimated for the biomass in
329
the two tested COD:N ratios after NO2- spikes. The estimation of fluxes through the
330
denitrification reactions showed that NO2- addition both increased the flux of nitrogenous
331
compounds through Nir, Nor and Nos (by 30-50 %), and also inhibited the activity of Nos
332
reaction. Accordingly, the Nos flux was 93 % and 85 % respectively of the value of the Nor
333
flux for experiments in the initial COD:N ratios of 11:1 and 4:1. The model was not
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intentionally constrained to directly capture inhibition of Nos activity by NO2-/FNA spike.
335
However the difference between Nor and Nos rates found by fitting model to observed data
336
(rates of N2O, NO3-, NO2-, and acetate consumption/production) strongly suggest FNA
337
inhibition of Nos. Further, estimated rates show equal flux among Nir and Nor reactions in
338
both scenarios (COD:N of 11:1 and 4:1) and therefore no nitric oxide accumulation, which is
339
consistent with similar denitrification experiments.47,13
340
As shown in Figure 4, cells of cultures on COD:N = 11:1 rapidly assimilated acetate
341
and nitrate (at rates of 0.59±0.08 mmol-acetate gVSS-1 h-1 and 1.73±0.08 mmol-N gVSS-1 h-
342
1
343
serine and threonine) and C11 to C21 saturated fatty acid synthesis at rates ranging between
344
0.1 to 1 mmol-N gVSS-1 h-1. The central carbon pathway was active and, by reducing
345
ubiquinone-8 (UQ8) to ubiquinol-8 (UQ8H2), delivered electron equivalents to the
346
denitrifying electron transport chain via succinate, NADH and FADH2, at rates of 1.41, 3.5
347
and 0.06 mmol gVSS-1 h-1, respectively. None of our results supported the utilization of
348
lactate, glycerol-P or glycolate as electron donors for denitrification. In contrast, cells
349
growing in COD:N 4:1 medium responded to NO2-/FNA excess by consuming acetate and
350
nitrate slowly (respectively 0.038±0.004 mmol-acetate gVSS-1 h-1 and 0.11±0.022 mmol-N
351
gVSS-1 h-1) and depleting C17-C21 fatty acid instead of sCOD in growth medium (Figure
352
1B). β-oxidation of these fatty acids generated electron equivalents in the form of NADH and
353
FADH2 which further reduced UQ8 to UQ8H2 at rates of 0.17 and 0.14 mmol gVSS-1 h-1
354
respectively (Figure 4B). On the basis of NO3- and NO2- consumption rates, the contribution
355
of these compounds to N2O formation was estimated to be 77 % and 22 % respectively in
356
cultures for an initial COD:N of 11:1. In cultures with an initial COD:N of 4, the nitrite
357
contribution increased to 35 %, possibly due to partial inhibition of nitrite reductases
358
(Nar/Nap) by FNA.
) and actively synthesized amino acids (valine, leucine, isoleucine, arginine, proline, glycine,
359 360
Discussion
361 362
Synergistic effect between carbon limitation and nitrite accumulation on N2O
363
production
364
The reactor performance shows that carbon limitation and NO2- shock have a
365
synergistic effect on N2O accumulation. Based on our results, we inferred Nos inhibition by
366
NO2- (or FNA) triggered N2O accumulation in both non-limiting and limiting carbon
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conditions. However carbon availability determined the duration and amplitude of N2O
368
accumulation.
369
The additional N from the NO2- spike increased the rates of Nir, Nor and Nos
370
reactions. However, the increase in Nos was less than that for Nir and Nor resulting in the
371
N2O accumulation. While it is not possible to corroborate the cause of these different rates of
372
increase from the model results, nitrite, in the form of FNA has been shown to partially
373
inhibit Nos activity at the applied concentration range (2.15-2.33 µg L-1 at experimental pH
374
and temperature).24 Further, the NO2- shock treatments exhibited traits typical of FNA
375
inhibition48,49 namely reduction in the rate of NO3- and SCOD removal and cell lysis (Figures
376
1A & 1B).
377
Carbon limitation may also have a compounding as well as synergistic role in N2O
378
accumulation. Firstly, Nar and Nir have shown a higher affinity for electron equivalents
379
(produced through methanol oxidation) than Nor or Nos.15 The low rate of electron
380
equivalent production at a high NO2- concentration should then result in the preferential
381
distribution of the limited available electron equivalents away from Nos, thereby
382
compounding the already inhibitory effect resulting from the NO2- concentrations alone.
383
Secondly, when N2O accumulation was observed, the COD:N ratios in the 11:1 and 4:1
384
cultures were ~2.44:1 and ~1.27:1 respectively. Low COD:N ratios between 4:1 to 1:1 have
385
previously been reported to induce N2O accumulation.15,28 However, at the moment of N2O
386
accumulation, the internal carbon (metabolites) of COD:N 11:1 NO2- spiked cultures
387
remained replete. This indicates the cell had sufficient carbon for the reduction of the
388
additional N introduced. This precludes the possibility of carbon limitation as the cause of the
389
N2O accumulation, and further stresses the importance of internal C:N ratio compared to
390
external COD:N ratio. In contrast, the combined effect of carbon limitation and NO2-
391
mediated inhibition of Nos accounted for the protracted N2O accumulation within the COD:N
392
4:1 cultures. Our results, and those from previous studies14,18,19 suggest that reliance on
393
internal carbon stores as a result of carbon limitation results in a lower rate of electron
394
equivalence production. Thus Nos inhibition by NO2- leads to N2O accumulation, while
395
carbon limitation results in a slower metabolic rate to clear the NO2-, leading to an extended
396
period of Nos inhibition and higher N2O accumulation. In principle, the mechanism described
397
above would be the same if different carbon sources such as ethanol, methanol or complex
398
mixtures were used. However different carbon sources provide different yields and rates of
399
electron equivalent generation.13,18 Therefore the proposed mechanism would result in
400
different durations and amplitudes of N2O accumulation curves.
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401 402 403
Modulation of denitrification activity by primary metabolites Metabolite profile results indicate that NO2- addition systemically affects the routes of
404
electron equivalent generation depending on the metabolic state of denitrifying cells, which
405
in this case was determined by acetate availability. NO2-/FNA toxicity is known to inactivate
406
electron carrier/generation enzymes.50 This phenomenon might have had an influence on the
407
observed profiles of metabolites and N2O accumulation. Indeed, nitrite addition induced N2O
408
accumulation in both conditions – carbon-substrate limited and feasted cultures (i.e., initial
409
COD:N = 4:1 and 11:1). But carbon limited cultures could not overcome NO2- toxicity and
410
the drop on COD:N ratio, therefore establishing a continuous N2O accumulation due to a lack
411
of electron equivalents to completely reduce the N2O to N2. According to our metabolite
412
results, the electron equivalents available for NO3- and NO2- reduction to N2 in COD:N 4:1
413
cultures would, need to be generated through oxidation (endogenous respiration) of C11 to
414
C21 saturated fatty acids. This is consistent with the null decrease of sCOD observed after the
415
NO2- spike in these cultures (Figure 1B). In COD:N 11:1 cultures, electron equivalents were
416
primarily produced through oxidation of extracellular acetate (sCOD curve in Figure 1A) and
417
subsequently TCA intermediates, and then dissipated via denitrification as well amino and
418
fatty acid synthesis. Metabolite profiles also show the constant presence of metabolites in all
419
tested conditions. These ubiquitous metabolites mediate cellular functions such as: redox
420
signaling (benzoic and pyroglutamic acid),51,52 nitrogen storage (putrescine, histidine),53
421
homolactic fermentation (lactic acid),54 and ω-oxidation of fatty acids (levulinic, pimelic,
422
suberic and azelaic di-carboxylic acids).55,56 Given the function of these compounds on
423
microbial metabolism, they potentially supported intracellular redox adjustments in cultures
424
biomass.
425
Pathway activity results of carbon abundant conditions indicates high activity in the
426
central carbon pathways and delivery of electrons for nitrogen reduction via succinate,
427
NADH and lactate oxidation. Also in this condition, “phenylalanine, valine and leucine
428
metabolism” was up-regulated. Dehydrogenase enzymes specific to such amino acids
429
incorporate inorganic nitrogen into organic compounds, which suggests an active NO3-
430
assimilation into biomass when carbon is abundant. This involves a depletion of storage
431
intracellular fatty acids through endogenous carbon respiration for ATP generation.
432
Additionally, the pathways “arginine and proline metabolism” and “glutathione metabolism”
433
obtained significantly high SA scores on COD:N 11 cultures (Figure S-2). Arginine and
434
glutathione are known to play a key role in the metabolic adaptation of bacteria cells to
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oxidative stress induced by NO2- and reactive oxygen species,52,57 which would explain why
436
cultures on COD:N 11 medium were less perturbed after NO2- spikes.
437
The fluxes are a snapshot quantification of the metabolic rates occurring in cultures’
438
biomass at the moment of maximum N2O productivity (after NO2- addition). Fluxes presented
439
in Figure 4 illustrate that cells in COD:N 11:1 cultures responded to NO2-/FNA excess by
440
increasing the delivery of electrons to nitrogen reduction reactions NADH and succinate
441
generated via the TCA cycle, and increasing the synthesis of amino acids; while cells in
442
COD:N 4:1 responded by generating electron-equivalents through endogenous respiration of
443
small (C6-C10) and long (C11 to C21) chain saturated fatty acids via β-oxidation. Because
444
oxidation of intracellular fatty acid is slower than that for soluble acetate,58 electron
445
equivalents were continuously delivered to nitrogen reduction reactions at a low rate for a
446
prolonged period of time (~48 h). This state of ‘chronic’ electron equivalent scarcity, together
447
with inhibition of Nos by NO2-/FNA, propitiated a slow but steady incomplete reduction of
448
NOx to N2, resulting in N2O to be formed at a low rate (0.023±0.006 mmol-N gVSS-1 h-1),
449
which eventually accumulated to concentration as high as 0.45±0.045 mmol-N L-1. In
450
comparison ‘chronic’ electron scarcity did not occur in cells in cultures with abundant acetate
451
(COD:N ratio 11:1). N2O production in these cultures was quick (at a rate of 0.14±0.002
452
mmol-N gVSS-1 h-1) but transient (active production spammed a window of 1 hour), yielding
453
a maximum accumulation of 0.13±0.02 mmol-N L-1. Denitrification gene diversity was not
454
studied herein. However genomes of several denitrifying microbes commonly found in
455
wastewater, including those species used as reference to develop our lumped SMN model,
456
encode the Nos gene (nosZ) clade I, which is associated to a high N2O emission potential.27
457
Metabolome and physiological data revealed that denitrifying bacteria respond to
458
nitrite additions by decreasing C and N uptakes and increasing/decreasing pools and fluxes of
459
metabolites in specific metabolic pathways in order to maintaining the intracellular C:N
460
balance. Identity of readjusted pathways depends on the metabolic state of cells determined
461
by environment’s carbon availability. While the abundance of metabolites involved in
462
nitrogen storage (putrescine, histidine) and oxidative stress regulation (benzoic and
463
pyroglutamic acid) and ω-oxidation of fatty acids (levulinic, pimelic, suberic and azelaic di-
464
carboxylic acids) remained constant in all tested conditions, fluctuations in COD:N ratio and
465
NO2- significantly affect N2O accumulation and the abundance of metabolites involved in the
466
TCA cycle, biomass synthesis (amino acids) and carbon & energy storage (C11-C21
467
saturated fatty acids). This reveals two properties of the metabolic response of cells in
468
denitrifying cultures: the presence of peripheral functions (not associated to central
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catabolism) which are independent to environmental fluctuations; and the presence of flexible
470
functions (i.e. electron equivalent generation, carbon storage) that adapt in response to
471
changing conditions.
472 473 474
Practical implications of findings While previous studies have reported an influence of environmental carbon and nitrite
475
fluctuations in N2O production by denitrifying cultures,13,28,29 here we show that changes in
476
pools of primary metabolites influence the amount and rate of N2O accumulation under such
477
conditions. The metabolic state determined by carbon source availability and type predispose
478
the response of denitrifying cultures to NO2- fluctuations. When exposed to NO2- addition,
479
denitrifying cultures operating at low COD:N ratios (< 4:1) produce more N2O, and for
480
longer periods of time, than cultures operating at high COD:N ratios (> 4:1). These findings
481
indicate that conditions such as low COD:N ratios, long periods of carbon starvation (famine)
482
or utilization of hard to degrade organics (e.g. fats, proteins, complex carbohydrates, oil
483
derivatives and ligno-cellulosic material) as carbon sources increase the susceptibility of
484
denitrifying systems to accumulating and emitting nitrous oxide. In wastewater treatment
485
plants, these conditions can be avoided by supplying influent at various points in large
486
bioreactors to ensure a constant and homogenous delivery of carbon or by coordinating
487
carbon supplementation schedules with diurnal and weekly peaks of nitrogen in influent. In
488
agricultural soils, compost supply can provide carbon while cattle rotation in paddocks can be
489
used to avoid focal urine deposition, which decreases soil C:N ratios.
490 491
Acknowledgements
492 493
Dr. Ting-Li Han assisted with sample preparation and metabolic data analysis. Dr
494
Diana Spratt Casas assisted with editing of initial draft of the manuscript. OP-G was
495
supported by scholarships from The University of Auckland (No. 1523727) and The Mexican
496
National Council for Science and Technology (No. 214239) during his doctoral studies.
1
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(49) Ma, B.; Peng, Y.; Wei, Y.; Li, B.; Bao, P.; Wang, Y. Free nitrous acid pretreatment of wasted activated sludge to exploit internal carbon source for enhanced denitrification. Bioresour. Technol. 2015, 179, 20-25; DOI 10.1016/j.biortech.2014.11.054.
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(50) Zhou, Y.; Oehmen, A.; Lim, M.; Vadivelu, V.; Ng, W.J. The role of nitrite and free nitrous acid (FNA) in wastewater treatment plants. Water Res. 2011, 45 (15), 4672-4682; DOI 10.1016/j.watres.2011.06.025.
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(51) Teufel, R.; Mascaraque, V.; Ismail, W.; Voss, M.; Perera, J.; Eisenreich, W.; Haehnel, W.; Fuchs, G. Bacterial phenylalanine and phenylacetate catabolic pathway revealed. Proc. Natl. Acad. Sci. U. S. A. 2010, 107 (32), 14390-14395. DOI 10.1073/pnas.1005399107.
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(52) Masip, L.; Veeravalli, K.; Georgiou, G. The many faces of glutathione in bacteria. Antioxid. Redox Signal. 2006, 8 (5-6), 753-762; DOI 10.1089/ars.2006.8.753.
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(53) Schneider, B.L.; Hernandez, V.J.; Reitzer, L. Putrescine catabolism is a metabolic response to several stresses in Escherichia coli. Mol. Microbiol. 2013, 88 (3), 537-550; DOI 10.1111/mmi.12207.
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(54) Romero-Garcia, S.; Hernández-Bustos, C.; Merino, E.; Gosset, G.; Martinez, A. Homolactic fermentation from glucose and cellobiose using Bacillus subtilis. Microb. Cell Fact. 2009, 8, 23. DOI 10.1186/1475-2859-8-23.
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(55) Cintolesi, A.; Rodríguez-Moyá, M.; Gonzalez, R. Fatty acid oxidation: Systems analysis and applications. Wiley Interdiscip. Rev. Syst. Biol. Med. 2013, 5 (5), 575-585. DOI 10.1002/wsbm.1226.
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(56) Van Bogaert, I.N.A.; Groeneboer, S.; Saerens, K.; Soetaert, W. The role of cytochrome P450 monooxygenases in microbial fatty acid metabolism. FEBS Journal 2011, 278 (2), 206221. DOI 10.1111/j.1742-4658.2010.07949.x.
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Tables
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Table 1. Summary of main results from denitrifying cultures producing N2O.
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Initial COD:N = 11:1 with NO2spike
Variable
Significant Initial COD:N difference = 4:1 among with NO2treatments*(p spike values)
Total N2O-N produced (mmol-N)
0.54±0.11
1.47±0.29
0.019
Maximum N2O concentration (mmol-N L-1)
0.13±0.03
0.45±0.04
0.013
Fraction of total nitrogen accumulated as N2O-N (%)
3.3±0.57
8.5±0.9
0.028
Fraction of denitrified NO3--N accumulated as N2O-N (%)
5.9±0.92
20.4±2.6
0.01
∆sCOD/∆N before NO2- spike (mmol-O2/ mmol-N)
4.14±0.31
1.12±0.10
0.006
Approximate COD:N ratio after NO2- spike
2.44±0.13
1.27±0.38
0.04
N2O production rate (mmol-N gVSS-1 h-1)
0.14±0.002
0.023±0.006
0.005
NO3-consumption rate (mmol-N gVSS-1 h-1)
1.73±0.08
0.11±0.022
0.015
sCOD consumption rate (mmol-O2 gVSS-1 h-1) or (mmol-Acetate gVSS-1 h-1)*
37.9±5.1 0.69±0.08
2.7±0.23 0.038±0.004
0.015 0.017
5
96
Batch culture duration (h) 178
*according to t-test at α = 0.05
179 180
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Figures Captions
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Figure 1. Concentration curves for NO3-, NO2-, N2O and sCOD in denitrifying batch cultures.
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A) Cultures with initial COD:N ratio of 11:1. B) Cultures with initial COD:N ratio of 4:1. C)
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Comparison of N2O accumulation curves. Arrows indicates the addition (spike) of 5 mL of a
186
1.2 M NaNO2 solution that added 2 mmol-N of NO2- per liter of culture. Grey background
187
bars indicate periods when cultures were sampled from metabolome analysis. Graphs below
188
the main concentration curves present the average±st.dev. N2O liquid phase concentration.
189 190
Figure 2. Profile of metabolites obtained from biomass samples of denitrifying cultures. A)
191
scatter plot of PLS-DA scores obtained for the analyzed 24 samples (2 technical replicates *
192
3 biological replicates * 4 tested conditions). B) Heatmap of average relative abundances of
193
intracellular metabolites in samples (n = 6). Relative abundance values below -1 or above 1
194
(bright red) indicate that the metabolite abundance in that specific condition (column) is
195
below or above the mean of that of all the samples by more than one standard deviation.
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Values near zero (black) indicate an average relative abundance. C) Difference between the
197
relative abundance of metabolites observed in NO2- spiked and control cultures with the same
198
COD:N ratio; ∆ = − .
199 200
Figure 3. Change of activity in metabolic pathways of cells in denitrifying cultures provoked
201
by NO2- spikes. The pathway activities scores (SA) were predicted using the intracellular
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metabolite profile data obtained using the Pathway Activity Profiling (PAPi) algorithm.
203
Predicted activities of control cultures were set to zero (solid black line). Red triangles
204
(COD:N = 11) and green circles (COD:N = 4) indicate the change of predicted SA scores for
205
NO2- spiked cultures relative to SA scores predicted for control cultures at the same COD:N
206
ratio. SA scores relative to control cultures have been plotted using a log2 scale. Positive
207
values indicate the pathways had their activity up-regulated in response to NO2-addition. Data
208
points and whiskers respectively represent average scores ± standard deviation.
209 210
Figure 4. Simplified metabolic network and predicted fluxes in biomass of NO2- spiked
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denitrifying cultures. All the calculated intracellular rates (fluxes) are represented as arrows
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an have mmol gVSS-1 h-1 units. Abbreviations meaning as follows: Sdh = succinate
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dehydrogenase; Nar/Nap = nitrate reductase, Nir = nitrite reductase, Nor = nitric oxide
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reductase, Nos = nitrous oxide reductase, Ldh = lactate dehydrogenase; NADHdh = NADH
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dehydrogenase; FADH2dh = FADH2 dehydrogenase G3Pdh = glycerol-3-P dehydrogenase;
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Gox = glycolate dehydrogenase; UQ8 = ubiquinone-8 (oxidized); UQ8H2 = ubiquinol-8
217
(reduced); Cyt550 = oxidized cytochrome c550; Cyt550e = reduced cytochrome c550.
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Figure 1. Concentration curves for NO3-, NO2-, N2O and sCOD in denitrifying batch cultures. A) Cultures with initial COD:N ratio of 11:1. B) Cultures with initial COD:N ratio of 4:1. C) Comparison of N2O accumulation curves. Arrows indicates the addition (spike) of 5 mL of a 1.2 M NaNO2 solution that added 2 mmol-N of NO2- per liter of culture. Grey background bars indicate periods when cultures were sampled from metabolome analysis. Graphs below the main concentration curves present the average±st.dev. N2O liquid phase concentration. 327x470mm (96 x 96 DPI)
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Figure 2. Profile of metabolites obtained from biomass samples of denitrifying cultures. A) scatter plot of PLS-DA scores obtained for the analyzed 24 samples (2 technical replicates * 3 biological replicates * 4 tested conditions). B) Heatmap of average relative abundances of intracellular metabolites in samples (n = 6). Relative abundance values below -1 or above 1 (bright red) indicate that the metabolite abundance in that specific condition (column) is below or above the mean of that of all the samples by more than one standard deviation. Values near zero (black) indicate an average relative abundance. C) Difference between the relative abundance of metabolites observed in NO2- spiked and control cultures with the same COD:N ratio; ∆x ̃=x ̃_NO2spiked-x ̃_control. 1067x586mm (96 x 96 DPI)
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Figure 3. Change of activity in metabolic pathways of cells in denitrifying cultures provoked by NO2- spikes. The pathway activities scores (SA) were predicted using the intracellular metabolite profile data obtained using the Pathway Activity Profiling (PAPi) algorithm. Predicted activities of control cultures were set to zero (solid black line). Red triangles (COD:N = 11) and green circles (COD:N = 4) indicate the change of predicted SA scores for NO2- spiked cultures relative to SA scores predicted for control cultures at the same COD:N ratio. SA scores relative to control cultures have been plotted using a log2 scale. Positive values indicate the pathways had their activity up-regulated in response to NO2-addition. Data points and whiskers respectively represent average scores ± standard deviation. 287x286mm (96 x 96 DPI)
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Figure 4. Simplified metabolic network and predicted fluxes in biomass of NO2- spiked denitrifying cultures. All the calculated intracellular rates (fluxes) are represented as arrows an have mmol gVSS-1 h-1 units. Abbreviations meaning as follows: Sdh = succinate dehydrogenase; Nar/Nap = nitrate reductase, Nir = nitrite reductase, Nor = nitric oxide reductase, Nos = nitrous oxide reductase, Ldh = lactate dehydrogenase; NADHdh = NADH dehydrogenase; FADH2dh = FADH2 dehydrogenase G3Pdh = glycerol-3-P dehydrogenase; Gox = glycolate dehydrogenase; UQ8 = ubiquinone-8 (oxidized); UQ8H2 = ubiquinol-8 (reduced); Cyt550 = oxidized cytochrome c550; Cyt550e = reduced cytochrome c550. 640x356mm (96 x 96 DPI)
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TOC art 313x202mm (96 x 96 DPI)
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