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Building insightful, memory-enriched models to capture long-time biochemical processes from short-time simulations

View ORCID ProfileAnthony J. Dominic III, View ORCID ProfileThomas Sayer, Siqin Cao, Thomas E. Markland, View ORCID ProfileXuhui Huang, View ORCID ProfileAndrés Montoya-Castillo
doi: https://doi.org/10.1101/2022.10.17.512620
Anthony J. Dominic III
1Department of Chemistry, University of Colorado Boulder, CO 80309, USA
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Thomas Sayer
1Department of Chemistry, University of Colorado Boulder, CO 80309, USA
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Siqin Cao
2Department of Chemistry, University of Wisconsin-Madison, WI 53706, USA
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Thomas E. Markland
3Department of Chemistry, Stanford University, CA 94305, USA
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Xuhui Huang
2Department of Chemistry, University of Wisconsin-Madison, WI 53706, USA
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Andrés Montoya-Castillo
1Department of Chemistry, University of Colorado Boulder, CO 80309, USA
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  • For correspondence: Andres.MontoyaCastillo@colorado.edu
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Abstract

The ability to predict and understand the complex molecular motions occurring over diverse timescales ranging from picoseconds to seconds and even hours occurring in biological systems remains one of the largest challenges to chemical theory. Markov State Models (MSMs), which provide a memoryless description of the transitions between different states of a biochemical system, have provided numerous important physically transparent insights into biological function. However, constructing these models often necessitates performing extremely long molecular simulations to converge the rates. Here we show that by incorporating memory via the time-convolutionless generalized master equation (TCL-GME) one can build a theoretically transparent and physically intuitive memory-enriched model of biochemical processes with up to a three orders of magnitude reduction in the simulation data required while also providing a higher temporal resolution. We derive the conditions under which the TCL-GME provides a more efficient means to capture slow dynamics than MSMs and rigorously prove when the two provide equally valid and efficient descriptions of the slow configurational dynamics. We further introduce a simple averaging procedure that enables our TCL-GME approach to quickly converge and accurately predict long-time dynamics even when parameterized with noisy reference data arising from short trajectories. We illustrate the advantages of the TCL-GME using alanine dipeptide, the human argonaute complex, and FiP35 WW domain.

Competing Interest Statement

The authors have declared no competing interest.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-ND 4.0 International license.
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Posted October 20, 2022.
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Building insightful, memory-enriched models to capture long-time biochemical processes from short-time simulations
Anthony J. Dominic III, Thomas Sayer, Siqin Cao, Thomas E. Markland, Xuhui Huang, Andrés Montoya-Castillo
bioRxiv 2022.10.17.512620; doi: https://doi.org/10.1101/2022.10.17.512620
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Building insightful, memory-enriched models to capture long-time biochemical processes from short-time simulations
Anthony J. Dominic III, Thomas Sayer, Siqin Cao, Thomas E. Markland, Xuhui Huang, Andrés Montoya-Castillo
bioRxiv 2022.10.17.512620; doi: https://doi.org/10.1101/2022.10.17.512620

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