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Transcript
Simulation of Prokaryotic
Genetic Circuits
Jonny Wells and Jimmy Bai
Overview

Organization of Genetic Regulatory
Circuits

Simulations of Cellular Regulation

Modelling
Regulatory circuits

Hierarchical organization
Regulons – control groups of operons
 Global regulons – multiple pathway
regulation (e.g. σ32)
 Often neglected in simulations
 However is needed in some circumstances
(e.g. 2 σ factors competing)

Regulatory feedback
Where output influences input signals
 Autoregulatory feedback loops
 In E.coli, over 100 σ70 promoters

68% autoregulating
 13% autoactivating


Specialized enzymes often under
regulatory control
Genetic Cascade
Regulatory mechanisms
Intergrating environmental signals
Eg. Chemotactic responses
 Attractant or repellent molecules bind
directly to specialized receptors leading
to phosphorylation cascade

Pulses of agents matched with behavioural
changes
 Mutants shown to have altered enzymatic
activity

Cell cycle models
Genetic regulation coupling to cell cycle
 Modelling of biochemical reactions that
support oscillations

p34activation, p34/cyclin interactions and
cyclin degradation suggested
 However shown to be far more elaborate

Developmental Switches
Different physiological states require
switching mechanisms
 Cell-density-dependent gene expression


Quorum-sensing


Higher density = higher pheromone conc.
Lysis/Lysogeny determination
Modelling
Promoter control Models
 Stochastic processes in regulatory
kinetics
 Modelling macromolecular complexes
 Uncertainty in intracellular environment
and reaction rates

Promoter control Models
Boolean threshold logic paradigm
 Generalised threshold model

Modelled as positive and negative
feedback loops
 Assumptions of Boolean network

Limitation of Boolean Network

Poor approximation
Other control mechanism




Besides promoter activation control
Termination sites activation control
Many posttranscriptional regulations
Many protein-mediated controls



Proteolysis
Phosphorylation
Methylation
Stochastic Process




Model macroscopic kinetics of chemical reactions
using ordinary differential equation
Difficult to achieve in genetic reaction due to low
concentration and slow reaction rates
Gillespie algorithm – calculating the probabilistic
outcome of each discrete chemical event
State vector
Stochastic Process
•Random burst of
numbers of protein
•Timing uncertainty
•Stronger promoter
•Higher gene dosage
•Lower signal threshold
Stochastic Process
Different Activation
time due to
variation of the
concentration
Modelling macromolecular complex
Realistic modelling -->central challenge
 Genetic network mechanism is more
complicated
 Dynamic behaviour
