Data-driven approach to decomposing complex enzyme kinetics with surrogate models

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Abstract

The temporal autocorrelation (AC) function associated with monitoring order parameters characterizing conformational fluctuations of an enzyme is analyzed using a collection of surrogate models. The surrogates considered are phenomenological stochastic differential equation (SDE) models. It is demonstrated how an ensemble of such surrogate models, each surrogate being calibrated from a single trajectory, indirectly contains information about unresolved conformational degrees of freedom. This ensemble can be used to construct complex temporal ACs associated with a "non-Markovian" process. The ensemble of surrogates approach allows researchers to consider models more flexible than a mixture of exponentials to describe relaxation times and at the same time gain physical information about the system. The relevance of this type of analysis to matching single-molecule experiments to computer simulations and how more complex stochastic processes can emerge from a mixture of simpler processes is also discussed. The ideas are illustrated on a toy SDE model and on molecular-dynamics simulations of the enzyme dihydrofolate reductase. © 2009 The American Physical Society.

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Calderon, C. P. (2009). Data-driven approach to decomposing complex enzyme kinetics with surrogate models. Physical Review E - Statistical, Nonlinear, and Soft Matter Physics, 80(6). https://doi.org/10.1103/PhysRevE.80.061118

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