Abstract
Word count: 301
Predictive biogeochemical modeling requires data-model integration that enables explicit representation of the sophisticated roles
of microbial processes that transform substrates. Data from high-resolution organic matter (OM) characterization are
increasingly available and can serve as a critical resource for this purpose, but their incorporation into biogeochemical models is
often prohibited due to an over-simplified description of reaction networks. To fill this gap, we proposed a new concept of
biogeochemical modeling—termed substrate-explicit modeling—that enables parameterizing OM-specific oxidative degradation
pathways and reaction rates based on the thermodynamic properties of OM pools. The resulting kinetic models are characterized
by only two parameters regardless of the complexity of OM profiles, which can greatly facilitate the integration with reactive
transport models for ecosystem simulations by alleviating the difficulty in parameter identification. For every detected organic
molecule in a given sample, our approach provides a systematic way to formulate reaction kinetics from chemical formula, which
enables the evaluation of the impact of OM character on biogeochemical processes across conditions. In a case study of two sites
with distinct OM thermodynamics, our method not only predicted oxidative degradation to be primarily driven by thermodynamic
efficiency of OM consistent with experimental rate measurements, but also revealed previously unknown critically important
aspects of biogeochemical reactions, including their condition-specific response to carbon and/or oxygen limitations. Lastly, we
showed that the proposed substrate-explicit modeling approach can be synergistically combined with enzyme-explicit approach to
provide improved predictions. This result led us to present integrative biogeochemical modeling as a unifying framework that can
ideally describe the dynamic interplay among microbes, enzymes, and substrates to address advanced questions and hypotheses in
future studies. Altogether, the new modeling concept we propose in this work provides a foundational platform for unprecedented
predictions of biogeochemical and ecosystem dynamics through enhanced integration with diverse experimental data and extant
modeling approaches.
Revised: December 1, 2020 |
Published: October 23, 2020
Citation
Song H., J.C. Stegen, E.B. Graham, J. Lee, V.A. Garayburu-Caruso, W.C. Nelson, and X. Chen, et al. 2020.Representing Organic Matter Thermodynamics in Biogeochemical Reactions via Substrate-Explicit Modeling.Frontiers in Microbiology 11.PNNL-SA-151734.doi:10.3389/fmicb.2020.531756