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Mathematical Representation of Reconstructed Networks

Mathematical Representation of Reconstructed Networks. The Left Null space The Row and column spaces of S. Introduction. The system biology paradigm: “components network in silico models phenotype”

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Mathematical Representation of Reconstructed Networks

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  1. Mathematical Representation of Reconstructed Networks The Left Null space The Row and column spaces of S

  2. Introduction • The system biology paradigm: “components network in silico models phenotype” • System biology focuses on the nature of the links and their associated functional states (~phenotypes). • Cells must select useful ‘functional states’.

  3. Functional states • H pylori: • Human gastric (Low PH) • E coli: • Outside the body (low O2, low temp) • Inside the body (high temp) • Stomach (Low PH) • Small intestine (low O2)

  4. Reaction / links ‘key properties’ 1. Stoichiometry. The stoichiometry is fixed, invariant between organisms for the same reactions and conditionindependent (pressure, pH, temp ..) 2. Relative rates. Fixed by basic thermodynamicproperties which depend on conditions such as pressure, pH, temp .. 3. Absolute rates. In contrast to stoichiometry and thermodynamics, highly manipulated by the cell enzymes.

  5. Reminder • The dynamic mass balance equation: Where, Xis a vector of m metabolites. V represent vector of n‘reaction rates’. S is m x n matrix of stoichiometric coefficients, rows represent metabolites and columns represent reactions. • The right null space • For most practical purposes metabolism is in a steady state. • The null space contains all the steady state flux distributions and is thus of special importance to us.

  6. Reminder Constraint-based analysis Linear programming (Simplex)

  7. Each one of the generating vectors corresponds to an extreme pathway which thecell could theoretically control to reach every point in the flux cone. • A particular point within this flux cone corresponds to a given flux distribution which represents a particular metabolic phenotype.

  8. The analysis of the left null space of S allow us to define the achievable states of the cell and their physiological relevance. • We look for ‘metabolic pools’ that have physiological meaningful interpretation.

  9. Definition: The Left Null space of S sj All are in the column space. (rank= r) li Span the left null space of S

  10. The Time invariants • A linear combination of individual metabolic concentrations that do not change over time is called a metabolic pool. • A dynamic motion along a reaction vector in the column space do not change the total mass in the pool.

  11. The concentrations space • a is a vector that gives the total concentrations of the pools. • i.e. • is the conservation vector. • The rows of L ( i.e. ) that span the left null space define a concentration space. • The time invariant metabolic pools resides in this concentration space. • defines an affine hyper plane. • This plane does not go through the origin. • The concentration vector x resides in this space.

  12. Classifying the pools e.g. the carbon backbone in glycolysis Co-Factors, carriers

  13. Reaction map Vs. Compound map • Groupings of chemical elements that move together.

  14. Classifying the pools Through flux pathways Primary moieties conservation Primary& secondary moieties conservation Futile cycle Internal cycle Cofactor conservation

  15. Simple reversible state One Type A Pool: Comment: The pool ‘AP+PA’ is constant both in SS and dynamic.

  16. Reference states • We can choose that lie in the left null space. • This reference state is orthogonal to • x is not orthogonal to the left null space, whereas and are. • Now we can span the concentration space using the reaction vectors

  17. Two conditions: (1) (2)

  18. Bilinear association Ordered by: A, P, AP The Pools Interpretation Type 1. A+AP : Total cofactor : A 2. P+AP : Total energy : B

  19. Carrier coupled reaction The entries of x ordered by: (CP, C, AP, A) • The pools: • C+CP : conservation of the substrate C. • A+AP : conservation of the cofactor A. • CP+AP : occupancy of P / total energy • C+A : vacancy of P / low energy state

  20. Redox carrier coupled reaction • The pools The pools interpretation Type • : Total R. : A • : Redox occupancy 1. : B • : Redox occupancy 2. : B • : Redox vacancy : B • : Total redox carrier : C • :Total redox carrier : C

  21. Multiple redox coupled reaction (1) (2) (3) • The pools The pools interpretation Type • : Total R. : A • : Redox occupancy 1. : B • : Redox occupancy 2. : B • : Redox vacancy : B • : Total redox carrier 1 : C • :Total redox carrier 2 : C

  22. Glycolysis Type B pools: High energy Conservation of P Low energy Stand alone inorganic P

  23. TCA cycle • Exchanging carbon group. • Recycled C4 moiety which ‘carries’ the two carbon group that is oxidized. • H group that contains the redox inventory in the system. • Redox vacancy. • Total cofactor pool.

  24. Summary: Left Null space of S • Contains dynamic invariants. • A convex basis for this space is biological meaningful and can be found. • Three basic types of convex basis vectors can be defined. • The metabolic pools can be displayed on the compound map –similar to pathways in a flux map. • Integration of time derivatives leads to bounded affine space of concentrations. Theaffinespace of concentrations • All the concentrations states, dynamic and steady, lie in this space. • A suitable reference state can be defined (parallel to the left null space and orthogonal to the column space). The shifted concentration space is spanned by the Si’s.

  25. The column space • Contain the time derivatives of the concentrations. • Spanned by the reaction vectors. • Change in the flux levels determine the location of in the column space. • Fast reactions that quickly come to SS reduce the column space dimension on slower time scales. • Reduction in the columns space dimension leads to effective additional dimension in the left null space. • Constraints on the fluxes induce constraints on the ‘s. Hence the column space is a closed space.

  26. O 2 2 1 H 2 0 2 Example 1 The left null space will be spanned by the elemental matrix LS = ES = 0 R is a group of concentrations changing over time

  27. Example 2

  28. Example 3 (Ignore the P for a moment) Note: If one reaction is fast compare to the other, we get ‘L’ shape

  29. The row space • The row space contain all the thermodynamic driving forces (i.e. fluxes). • The individual reaction fluxes form an orthogonal basis for the raw space. • Each reaction has a natural thermodynamic basis vector. • Since the fluxes are constrained, All the fluxes are in a rectangle in the positive orthant. • The null space lies within the rectangle and its orthogonal complement is the row space.

  30. Constraints on the flux values • The magnitude of the individual fluxes is constrained. • These constraints are derived from: • The limitation on the concentration. • Upper limit on the kinetic constants. • The turnover rate of an enzyme complex X: Where the total amount of enzyme ( ) present is limited to X + e. • Bilinear association of substrate to an enzyme: The rate is: Where is the size of the most limiting conservation pool of which Xi is a member. • The total amount of enzyme (alone) limits the flux through enzymatic pathway. • The release step of a product from enzyme is often the rate limiting step in enzyme catalysis.

  31. Thermodynamic driving forces • If the fluxes are imbalanced, there will be a net generation or elimination of compounds in the network. • Since the r’s are fixed and the V’s are bounded, the inner product is also bounded.

  32. Summary: The row and column spaces of S • The column space is naturally spanned by the reaction vectors. • The row space can be represented by an orthogonal basis formed by the individual fluxes with values only in the positive orthant. • The magnitude of the individual fluxes is limited by kinetics and caps on concentration values. • This limitation also limits the possible value of the time derivatives and thus the column space. • The column and row spaces are closed.

  33. Thanks

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