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The emergence of the reactivity continuum of organic matter from kinetics of a multitude of individual molecular constituents Alina Mostovaya, Jeffrey Alistair Hawkes, Birgit Koehler, Thorsten Dittmar, and Lars J. Tranvik Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b02876 • Publication Date (Web): 15 Sep 2017 Downloaded from http://pubs.acs.org on September 19, 2017
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Environmental Science & Technology
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The emergence of the reactivity continuum of
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organic matter from kinetics of a multitude of
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individual molecular constituents
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Alina Mostovaya*,1, Jeffrey A. Hawkes2, Birgit Koehler1, Thorsten Dittmar3, Lars J.
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Tranvik1
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1
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Uppsala University, Norbyvägen 18 D, 75236, Uppsala, Sweden
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2
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Husargatan 3, 75124, Uppsala, Sweden
Department of Ecology and Genetics/Limnology, Evolutionary Biology Centre,
Department of Chemistry – BMC, Analytical Chemistry, Uppsala University,
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for Chemistry and Biology of the Marine Environment, University of Oldenburg,
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Carl-von-Ossietzky-Str. 9-11, 26129, Oldenburg, Germany
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ABSTRACT: The reactivity continuum (RC) model is a powerful statistical approach
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for describing the apparent kinetics of bulk organic matter (OM) decomposition.
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Here, we used ultrahigh resolution mass spectrometry data to evaluate the main
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premise of the RC model, namely that there is a continuous spectrum of reactivity
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within bulk OM, where each individual reactive type undergoes exponential decay.
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We performed a 120 days OM decomposition experiment on lake water, with an
Research Group for Marine Geochemistry (ICBM-MPI Bridging Group), Institute
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untreated control and a treatment preexposed to UV light, and described the loss of
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bulk dissolved organic carbon (DOC) with RC modeling. The behavior of individual
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molecular formulae was described by fitting the single exponential model to the
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change in peak intensities over time. The range of the empirically-derived apparent
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exponential decay coefficients (kexp) was indeed continuous. The character of the
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corresponding distribution, however, differed from the conceptual expectations, due
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to the effects of intrinsic averaging, overlaps in formula-specific loss and formation
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rates, and the limitation of the RC model to include apparently accumulating
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compounds in the analysis. Despite these limitations, both the RC model-simulated
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and empirical (mass spectrometry-derived) distributions of kexp captured the effects of
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preexposure to UV light. Overall, we present experimental evidence that the reactivity
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continuum within bulk OM emerges from a range of reactivity of numerous
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individual components. This constitutes direct empirical support for the major
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assumption behind the RC model of natural OM decomposition.
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1. INTRODUCTION
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Organic matter (OM) is a major component of the carbon cycle. The complex
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nature of OM was suggested in multiple studies demonstrating that different fractions
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of OM decompose at differing rates.1–4 With the increasing understanding of OM
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complexity, OM was conceptualized as a continuous spectrum of constituents with
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differing reactivity,5–7 long before it was possible to identify the broad range of OM
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components. Recent advances in analytical chemistry, and particularly high-resolution
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mass spectrometry, have demonstrated that natural OM may consist of 104−106
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compounds, belonging to different chemical classes and groups,8–11 yet the emerging
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detailed insights into OM composition have not been explicitly connected to the
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concept of the reactivity continuum. 2 ACS Paragon Plus Environment
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The reactivity continuum (RC) model approach is gaining popularity as a tool for
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realistic description of decomposition in a variety of environments, including marine
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sediments,6,7,12 soil,13,14 aquatic dissolved OM15–17 and litter.18,19 The RC model was
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often shown to perform better than single- and multi-exponential models, based on
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mathematical indicators assessing accuracy and parsimony,14,16,18,20 as well as the
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predictive power of the model.15 A study analyzing the Long-term Intersite
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Decomposition Experiment (LIDET data) with RC modeling showed that the
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obtained RC model parameters were suitable to predict independent literature-derived
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decomposition time series for the majority of litter-biome combinations.18 Because
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the RC model can successfully track the effects of external regulators of
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decomposition,18,20 it has been proposed to improve the mechanistic understanding of
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decomposition at large spatial and temporal scales.18 Accordingly, Aumont et al.
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(2017) used the RC model in a global ocean biogeochemical model to account for
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variable reactivity of particulate organic carbon, and got a close match to empirical
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observations.12
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The RC model assumes that decomposition of bulk OM can be described as an
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integral of single-pool exponential decay functions weighed with an initial probability
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distribution of reactivity. When the chosen functional shape for the initial probability
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distribution of reactivity allows a simple analytical solution (e.g., gamma distribution)
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the RC model becomes a parameter-parsimonious and computationally simple
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approach to analyze decomposition data. The main gamma RC model assumptions6
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are:
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1)
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Each individual reactive type decays over time following a single-pool exponential model
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2)
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The individual reactive types form a continuous spectrum of initial reactivity towards decomposition, that can be described by a probability distribution
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3)
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The gamma distribution is a flexible and suitable function to describe the initial probability distribution of reactivity.
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Since the high-resolution analytical techniques that could provide detailed
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information on the behavior of OM constituents became only recently available, these
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RC model assumptions remain so far empirically untested. With the recent
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development of ultrahigh-resolution electrospray ionization Fourier transform ion
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cyclotron resonance mass spectrometry (FT-ICR-MS), which is currently one of the
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most powerful analytical techniques for molecular characterization of natural OM,21–
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23
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Further, the signal intensity of each molecular mass is essentially linearly proportional
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to the concentration of the corresponding isomeric mixture of compounds, provided
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that the sample matrix is similar.24 This allows interpreting the changes in signal
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intensity over time in a quantitative way. Therefore, using FT-ICR-MS, we were able
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to experimentally investigate one of the main assumptions of the RC model that
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individual reactive types form a continuum of decay rates within bulk OM.
thousands of molecular formulae can now be identified in environmental samples.
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Taking decomposition of lake water dissolved organic matter (DOM) as a case, we
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performed a 120 days long decomposition experiment. We incubated untreated lake
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water as well as lake water subjected to UV exposure to stimulate DOM
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decomposition. Decomposition of bulk DOM was analyzed with the gamma RC
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model, obtaining the respective probability distribution of initial decay coefficients
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k.20 In this study, we fitted the single-pool exponential model to each time series of
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intensities related to individual molecular formulae, and extracted the corresponding
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apparent exponential decay coefficients kexp. We compare the range of RC model-
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simulated and empirically-derived initial decay coefficients, and discuss our results
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with respect to the assumptions of the RC model. Our results support the existence of
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a reactivity continuum within DOM and provide an argument in favor of continuous
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models of OM decay. In the context of potential application of our approach, further
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discussion reveals the advantages and limitations of using ultrahigh resolution mass
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spectrometry for evaluating the kinetics of OM decay.
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2. METHODS
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2.1. Experimental setup
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Waters from Lakes Ramsjön (59°50'N, 17°13'E) and Övre Långsjön (59°52'N,
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18°01'E), located in east-central Sweden, were sampled in October 2013. Water
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samples were taken from the surface (0–0.5 m depth), 0.2 µm filtered (Supor 200, Pall
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Corporation) and kept in the dark at 4°C for three weeks prior to the start of
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decomposition experiments. These three weeks were required to expose portions of
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the filtered water we to artificial UV light (144 hours under an UV lamp providing an
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irradiance of 35 W m−2 between 300 and 400 nm), which resulted in photodegradation
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of about 30% of dissolved organic carbon (DOC).20 Prior to the incubations the
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filtered water was inoculated with a 64 µm plankton net filtered aliquot from the
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respective lake (5% of the volume), and amended with inorganic nutrients (480 µg N
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L−1 as KNO3 and 100 µg P L−1 as Na2HPO4). The water was incubated at 20°C in
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sealed 40 mL glass vials capped with PTFE-lined silicone septa. The vials were filled
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headspace free and submersed in water to minimize gas exchange. The incubations
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were conducted in the dark and lasted for 120 days. Each of the two treatments (non-
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manipulated and UV-manipulated) was duplicated within each lake, which yielded 8
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time series of DOC loss. In the course of decomposition experiment individual vials
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in each time series were sacrificed to measure DOC concentration and take 5 ACS Paragon Plus Environment
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subsamples for mass spectrometry analysis (Supporting Information (SI) Figure S1).
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The DOC concentrations were measured on a Sievers 900 TOC Analyzer (General
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Electric Analytical Instruments, Manchester, UK) at 20 and 18 time points in the non-
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manipulated and UV-manipulated treatment, respectively.20 Samples for mass
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spectrometry analysis were taken at 12 time points: water was transferred into 2 mL
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glass vials with PTFE-lined silicone septa and stored at 4°C prior to analysis. Before
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use, 40 mL glass vials were acid-washed (10% HCl), rinsed with MilliQ water and
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pre-combusted for 4 h at 550°C. The 2 mL glass vials were pre-combusted for 4 h at
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450°C. All plastic caps and silicone septa were pre-soaked in methanol for 24 h and
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repeatedly rinsed with MilliQ water.
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2.2. Mass spectrometry analysis
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Lake water aliquot volumes were adjusted by diluting the sample with ultrapure
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water to a concentration of 10 mg C L−1. Further, the aliquots were mixed with
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methanol (HPLC-grade, Sigma-Aldrich) in a proportion of 2:1 (final concentration
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6.7 mg C L−1), re-filtered (0.2 µm PTFE), and introduced into a 15-T ultrahigh-
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resolution electrospray ionization Fourier transform ion cyclotron resonance mass
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spectrometer (FT-ICR-MS; Bruker Daltonics) at 360 µl h−1. Electrospray ionization
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(ESI) was performed in negative mode. Mass spectra were collected over 400 scans,
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with an ion accumulation time of 0.5 s, and within a range of 150–2000 m/z. Each
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sample was individually calibrated with an internal reference mass list generated from
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North Equatorial Pacific Intermediate Water (NEqPIW)25 using the Bruker Daltonics
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Data Analysis software package. Only peaks with a signal to noise ratio greater than
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four were considered. Where possible, peaks were assigned a formula containing C,
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H, O, N, S and P based on the following conditions: C ≥ O; O > (2P + S); N ≤ 4; S ≤ 4
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and P ≤ 1. CHO compounds had corresponding peaks at +1.0034 mass units due to 6 ACS Paragon Plus Environment
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1% abundance of
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confirming the single charge of the ion. Formulae containing S, P, and N>1 were not
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associated with any systematic patterns in apparent exponential coefficients kexp, i.e.,
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their presence did not affect the shape of empirical distribution of kexp (see section
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2.3). Therefore, to minimize false positives, i.e., possible incorrect assignments, we
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used a more conservative approach which does not consider S-, P- and N>1-
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containing formulae. Unassigned masses were not considered, as most of them
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represent either isotopologues (e.g.,
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S1). We did not observe any significant shift or systematic pattern in the amount and
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total intensity of unassigned peaks in the beginning versus the end of the incubations.
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Also, unassigned peaks were not associated with any specific patterns in kexp. Peaks
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detected in procedural blanks, as well as the peaks commonly identified as
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contaminants, and peaks with unusually and non-reproducibly high intensity in
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samples were removed from the dataset. In addition, the peaks with mass defect in the
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range of 0.3-0.8 were disregarded. The peaks present in only one of the two replicates
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of each of the four lake-treatment combinations (i.e., each lake with and without UV
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pretreatment) were disregarded as well. Examples of original mass spectra from
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different time points and graphical representations of formula assignment are
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presented in SI figures S2 and S3, respectively. The SI Table 1 gives details on data
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reduction procedures (total intensity of assigned versus unassigned peaks, etc.)
C, with intensities confirming the formula assignment and
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C) or noise (SI Figures S2, S3, and SI Table
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Here, before proceeding to further analysis we checked whether the time series of
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total intensity followed the trends in bulk DOC concentration (SI Figure S4). One of
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the replicate incubations did not meet this criterion and was therefore removed from
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further analysis. Thereafter, to account for possible variable contamination between
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individual time series, data from each lake-treatment-replicate combination (seven in
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total) was processed separately. A detection limit was applied based on dynamic
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range. The dynamic range of assigned peaks was determined in each sample as a ratio
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between maximum and minimum assigned peak intensity. Detection limit was
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calculated by dividing maximum intensity in each sample by the dynamic range of the
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worst sample. All intensities below the detection limit were disregarded. The
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intensities were further normalized to the sum of signal intensities in each sample and
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multiplied to account for dilution, i.e., to estimate the equivalent intensity in the
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undiluted sample. This was done to correctly estimate the relative change in
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concentration over the course of the decomposition experiment.24,26 For the purpose
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of model fitting, only the peaks that were detected on at least eight days of the 12-
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points time series were considered.
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Our analysis strongly relies on the assumption of a linear relationship between
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intensity and concentration, which was documented previously24 in a series of dilution
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experiments where Amazon DOM was incrementally mixed with Atlantic DOM.
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Around 70% of molecular formulae in the terrestrial and marine endmembers showed
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a significant (p ≤ 0.05) linear response of signal intensity according to the
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experimental mixing.24 For most of the remaining 30% of formulae the linear
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response could not be tested because their initial intensity did not differ between the
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Amazon and Atlantic endmembers (Thorsten Dittmar, personal communication). In
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our samples the major peaks were inorganic and did not decay over time (SI Figure
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S2). This likely provided a stable matrix, and ensured a reliable comparison of OM
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peaks in each time series of our samples.
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To evaluate the instrument-specific noise variations we used the 26 time point
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measurements of an in-house DOM reference material (NEqPIW)25 (final
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concentration 15 mg C L−1). The standard was measured in the beginning and end of
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every day, on 13 days in total.
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2.3. Model fitting and statistical analysis
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The gamma RC model was fitted to the time series of relative DOC loss, as
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described in detail earlier.20 Briefly, the two model parameters, a and v, were
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estimated based on the following relationship:
DOCt a = DOC0 a + t
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v
(1)
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where a is a rate parameter indicating the average lifetime of the more reactive
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compounds (days) and v (unitless) is a shape parameter characterizing the shape of the
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distribution near k=0.6 The apparent decay coefficient kt (day−1) at a given time point
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is calculated as:
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kt =
v a+t
(2)
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.27 The initial apparent first-order decay coefficient k0 (expected value of the initial
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probability distribution of reactivity) is therefore defined as v/a.
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To approach the assumption of the RC model from the empirical end we used mass
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spectrometry-derived information on signal intensities of molecular formulae and its
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change over time. For each formula, the relative change in signal intensity was
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described with a single pool exponential model:28
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It = I0e
− kexpt
(3)
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where kexp is an apparent exponential decay coefficient (day−1) and It simulates the
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change in intensity over time. Model fitting was conducted using generalized least
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squares modeling to allow the errors to be correlated (R-function gnls). The goodness
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of model fit was evaluated using the normalized root-mean-square error (NRMSE).
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We used the NRMSE to filter the datasets from the time series containing a lot of
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noise. To establish an acceptable NRMSE we calculated the 95% quantile of the
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NRMSE distribution acquired from a 26-point series of measurements of DOM
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standard (NEqPIW) of stable concentration (15 mg C L−1). Based on these
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calculations, the threshold for NRMSE was established at 35.8%, and between 89.7%
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and 93.6% of formulae in the actual datasets passed this criterion.
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To verify that our datasets are based on non-random time series of intensities we
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compared the distribution of kexp in our datasets to the distribution of kexp derived from
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an analogous but artificial dataset based on random numbers. The distribution of kexp
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in the actual datasets was more narrow and skewed towards positive values (SI Figure
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S5), as was also indicated by the non-parametric Mann-Whitney U test (P