| Literature DB >> 29879983 |
Brian C Ross1,2, Mayla Boguslav1,2, Holly Weeks3, James C Costello4,5.
Abstract
BACKGROUND: Certain biological processes, such as the development of cancer and immune activation, can be controlled by rare cellular events that are difficult to capture computationally through simulations of individual cells. Information about such rare events can be gleaned from an attractor analysis, for which a variety of methods exist (in particular for Boolean models). However, explicitly simulating a defined mixed population of cells in a way that tracks even the rarest subpopulations remains an open challenge.Entities:
Keywords: Boolean; Cell population; Heterogeneity; Network model; Simulation
Mesh:
Substances:
Year: 2018 PMID: 29879983 PMCID: PMC5992775 DOI: 10.1186/s12918-018-0591-9
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Fig. 1A population-level simulation. The plot shows how the population fractions displaying activation of variable A and variable A∧B evolve over time when the individuals in the population have heterogeneous states. No information about the substructure of the population is lost in the averaging process when one takes into account higher-order correlations (such as A∧B)
Fig. 2A 3-node Boolean network. The network used in Example 1. Arrows indicate the update rules for each variable: for example if either A or B is ON at time t then C will be ON at time t+1; otherwise C will be OFF
Fig. 3Simulation of a heterogeneous population of T-cell networks. a Boolean model of a T-cell activation, introduced in [27]. Model variables correspond to blue nodes; red nodes are introduced to describe loss-of-function alterations of the network. Model variables used in the example equations in the text are given boldface letters corresponding to their subscripts. b Time evolution of one individual modeled by the T-cell network, starting from a random initial state. White/black rectangles signify OFF/ON Boolean states. c Time evolution of the population fraction having activated CRE elements and/or expressing the transcription factor AP1 in a heterogeneous population of T-cell networks, computed using a product basis calculation. The heterogeneous population begins at t=0 as a uniform mixture of all possible 233≈1010 initial states of the upstream portion of the model. d The effect of a 10−4 knock-out mutation rate per gene in the heterogeneous population. Monte Carlo, but not the product basis calculation, required this high rate of mutations in order to detect persistent coactivation of CRE and AP1. e The co-occurrence of CRE activation and AP1 expression in mutated networks shown on a log10 scale (dotted red line), compared with the amount of this coexpression coincident with mutated cCbl (purple dots). The mutated fraction was computed by subtracting the time series of CRE ∧ AP1 ∧ WT-cCbl from the time series of CRE ∧ AP1