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Local Parametric Sensitivity Analysis AMATH 882 Lecture 4, Jan 17, 2013
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Parametric Sensitivity Analysis Parametric sensitivity analysis investigates the relationship between the variables and parameters in a biochemical network. Variables 1. Concentrations 2. Pathway fluxes 3. Dynamic response 4. Growth rate 5..... Parameters 1. Enzyme activity levels 2. Kinetics constants 3. Decay rates 4. Boundary conditions 5.....
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Parametric Sensitivity Analysis: Example reaction kinetics: steady state:
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local sensitivity analysis: effect of perturbation/ intervention: relative sensitivity:
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steady state: sensitivity analysis: vector notation implicit differentiation
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complete sensitivity analysis:
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Sensitivity Analysis: General Computation model: steady state: differentiate: absolute sensitivity:
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Application: unregulated chain
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sensitivity of flux J to enzyme activities:
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Application: product feedback
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sensitivity of flux J to enzyme activities: Summation Theorem of Metabolic Control Analysis: conservation law for sensitivities p p=0
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Metabolic Control Analysis (MCA) Sensitivity Analysis in the absence of a quantitative model of the network glutamateSuccinate Succinate SemialdehydeGABA Relative response to a change in enzyme activity = Relative response to a direct change in reaction flux (by linearity) ? Control Coefficients: ????????
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Utility of MCA 1) If a quantitative (i.e. kinetic) model is available, equates with (local) parametric sensitivity analysis
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Utility of MCA 2) In absence of quantitation, allows qualitative analysis of sensitivities, e.g. comparing different topologies The Effect of Feedback Without feedback With feedback S 1 S 2 X 2 X 1 1 EEE 23 ?
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Utility of MCA 3) Regardless of quantitation, allows characterization of constraints on sensitivities (sensitivity invariants) The Summation Theorem: % Relative increase in flux J k glutamateSuccinate Succinate SemialdehydeGABA
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The Summation Theorem Similar results for more complex networks: % General results described in terms of the kernel of the stoichiometry matrix %
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Time-Varying Sensitivities Sensitivities can be addressed over transient or oscillatory behaviour Computation:
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Example Perturbation in S 1 (0) Perturbation in k 1
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Application to Phototransduction Pathway
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Global Sensitivity Analysis Addresses system behaviour over a wide range of parameter values Primarily statistical tools: efficient sampling methods Provides a broader view of behaviour, but… Results often difficult to interpret
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Applications of Sensitivity Analysis Trypanosome metabolism. Bakker et al., 1999,J. Biol. Chem Predicting the effect of interventions Drug development
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Applications of Sensitivity Analysis Predicting the effect of interventions Drug development Medicine Tumour growth and thiamine, Comin-Anduix et al., 2001, Eur. J. Biochem.
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Applications of Sensitivity Analysis Predicting the effect of interventions Drug development Medicine Metabolic engineering Diacetyl production in Lactococcus lactis, Hoefnagel et al. 2002, Microbiology
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Applications of Sensitivity Analysis Predicting the effect of interventions Drug development Medicine Metabolic engineering Model construction and analysis Identifying key variables NF- B pathway. Ihekwaba et al., 2004, IEE Sys. Biol.
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Applications of Sensitivity Analysis Predicting the effect of interventions Drug development Medicine Metabolic engineering Model construction and analysis Identifying key variables Model calibration Identifiability. Zak et al. 2003, Genome. Res.
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