SCNANAMar 12, 2016

Multiscale modeling of diffusion in a crowded environment

arXiv:1603.0560516 citationsh-index: 8
Originality Incremental advance
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This work provides a computational framework for modeling diffusion and reaction kinetics in crowded biological environments, which is relevant for systems biology and cellular modeling.

The authors develop a multiscale model for diffusion in crowded environments, computing jump rates from local first exit times to account for crowding molecules. They show that crowding can either enhance or inhibit chemical reactions depending on local obstacle density fluctuations.

We present a multiscale approach to model diffusion in a crowded environment and its effect on the reaction rates. Diffusion in biological systems is often modeled by a discrete space jump process in order to capture the inherent noise of biological systems, which becomes important in the low copy number regime. To model diffusion in the crowded cell environment efficiently, we compute the jump rates in this mesoscopic model from local first exit times, which account for the microscopic positions of the crowding molecules, while the diffusing molecules jump on a coarser Cartesian grid. We then extract a macroscopic description from the resulting jump rates, where the excluded volume effect is modeled by a diffusion equation with space dependent diffusion coefficient. The crowding molecules can be of arbitrary shape and size and numerical experiments demonstrate that those factors together with the size of the diffusing molecule play a crucial role on the magnitude of the decrease in diffusive motion. When correcting the reaction rates for the altered diffusion we can show that molecular crowding either enhances or inhibits chemical reactions depending on local fluctuations of the obstacle density.

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