Fluctuation-preserving coarse graining for biochemical systems.

Finite stochastic Markov models play a major role in modeling biological systems. Such models are a coarse-grained description of the underlying microscopic dynamics and can be considered mesoscopic. The level of coarse-graining is to a certain extent arbitrary since it depends on the resolution of accommodating measurements. Here we present a systematic way to simplify such stochastic descriptions which preserves both the meso-micro and the meso-macro connections. The former is achieved by demanding locality, the latter by considering cycles on the network of states. Our method preserves fluctuations of observables much better than naïve approaches.

[1]  Henk A. van der Vorst,et al.  Numerical Algorithms , 2011, Encyclopedia of Parallel Computing.

[2]  S. Kalpazidou Cycle representations of Markov processes , 1995 .

[3]  R. Rosenfeld Nature , 2009, Otolaryngology--head and neck surgery : official journal of American Academy of Otolaryngology-Head and Neck Surgery.

[4]  Anthony Hill,et al.  Free Energy Transduction In Biology , 1977 .

[5]  Minping Qian,et al.  Mathematical Theory of Nonequilibrium Steady States , 2004 .

[6]  Società italiana di fisica,et al.  The European physical journal. E, Soft matter , 2000 .

[7]  Feller William,et al.  An Introduction To Probability Theory And Its Applications , 1950 .