Bye bye, linearity, bye: quantification of the mean for linear CRNs in a random environment

J Math Biol. 2023 Aug 12;87(3):43. doi: 10.1007/s00285-023-01973-x.

Abstract

Molecular reactions within a cell are inherently stochastic, and cells often differ in morphological properties or interact with a heterogeneous environment. Consequently, cell populations exhibit heterogeneity both due to these intrinsic and extrinsic causes. Although state-of-the-art studies that focus on dissecting this heterogeneity use single-cell measurements, the bulk data that shows only the mean expression levels is still in routine use. The fingerprint of the heterogeneity is present also in bulk data, despite being hidden from direct measurement. In particular, this heterogeneity can affect the mean expression levels via bimolecular interactions with low-abundant environment species. We make this statement rigorous for the class of linear reaction systems that are embedded in a discrete state Markov environment. The analytic expression that we provide for the stationary mean depends on the reaction rate constants of the linear subsystem, as well as the generator and stationary distribution of the Markov environment. We demonstrate the effect of the environment on the stationary mean. Namely, we show how the heterogeneous case deviates from the quasi-steady state (Q.SS) case when the embedded system is fast compared to the environment.

Keywords: Analytic expression; Cellular heterogeneity; Chemical reaction networks; Discrete state Markov environment; Stationary mean; Zeroth-and first-order mass action kinetic.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Cells
  • Stochastic Processes*