posted on 2021-01-21, 18:37authored byJia-Liang Shen, Min-Yeh Tsai, Nicholas P. Schafer, Peter G. Wolynes
The
nucleation of protein aggregates and their growth are important
in determining the structure of the cell’s membraneless organelles
as well as the pathogenesis of many diseases. The large number of
molecular types of such aggregates along with the intrinsically stochastic
nature of aggregation challenges our theoretical and computational
abilities. Kinetic Monte Carlo simulation using the Gillespie algorithm
is a powerful tool for modeling stochastic kinetics, but it is computationally
demanding when a large number of diverse species is involved. To explore
the mechanisms and statistics of aggregation more efficiently, we
introduce a new approach to model stochastic aggregation kinetics
which introduces noise into already statistically averaged equations
obtained using mathematical moment closure schemes. Stochastic moment
equations summarize succinctly the dynamics of the large diversity
of species with different molecularity involved in aggregation but
still take into account the stochastic fluctuations that accompany
not only primary and secondary nucleation but also aggregate elongation,
dissociation, and fragmentation. This method of “second stochasticization”
works well where the fluctuations are modest in magnitude as is often
encountered in vivo where the number of protein copies
in some computations can be in the hundreds to thousands. Simulations
using second stochasticization reveal a scaling law that correlates
the size of the fluctuations in aggregate size and number with the
total number of monomers. This scaling law is confirmed using experimental
data. We believe second stochasticization schemes will prove valuable
for bridging the gap between in vivo cell biology
and detailed modeling. (The code is released on https://github.com/MYTLab/stoch-agg.)