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Analyzing the systemic function of genes and proteins

Analyzing the systemic function of genes and proteins. Rui Alves. Organization of the talk. From networks to physiological behavior Network representations Mathematical formalisms Studying a mathematical model. In silico networks are limited as predictors of physiological behavior.

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Analyzing the systemic function of genes and proteins

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  1. Analyzing the systemic function of genes and proteins Rui Alves

  2. Organization of the talk • From networks to physiological behavior • Network representations • Mathematical formalisms • Studying a mathematical model

  3. In silico networks are limited as predictors of physiological behavior Probably a very sick mutant? What happens?

  4. How to predict behavior from network? • Build mathematical models!!!!

  5. Organization of the talk • From networks to physiological behavior • Network representations • Mathematical formalisms • Studying a mathematical model

  6. A B A B A B A B B A A B Function Function Function Function Function Network representation is fundamental for clarity of analysis What does this mean? Possibilities:

  7. Defining network conventions C - + A B Full arrow represents a flux between A and B Dashed arrow with a plus sign represents positive modulation of a flux Dashed arrow with a minus sign represents negative modulation of a flux Dashed arrow represents modulation of a flux

  8. Organization of the talk • From networks to physiological behavior • Network representations • Mathematical formalism • Studying a mathematical model

  9. Representing the time behavior of your system C + A B

  10. Flux Linear A or C Saturating Sigmoid What is the form of the function? C + A B

  11. What if the form of the function is unknown? C + A B Taylor Theorem: f(A,C) can be written as a polynomial function of A and C using the function’s mathematical derivatives with respect to the variables (A,C)

  12. Are all terms needed? C + A B f(A,C) can be approximated by considering only a few of its mathematical derivatives with respect to the variables (A,C)

  13. Linear approximation C + A B Taylor Theorem: f(A,C) is approximated with a linear function by its first order derivatives with respect to the variables (A,C)

  14. What if system is non-linear? • Use a first order approximation in a non-linear space.

  15. Logarithmic space is non-linear C + A B Use Taylor theorem in Log space g<0 inhibits flux g=0 no influence on flux g>0 activates flux

  16. Why log space? • Intuitive parameters • Simple, yet non-linear • Linearizes exponential space • Many biological processes are close to exponential → Linearizes mathematics

  17. Why is formalism important? • Reproduction of observed behavior • Tayloring of numerical methods to specific forms of mathematical equations

  18. Organization of the talk • From networks to physiological behavior • Network representations • Mathematical formalism • Studying a mathematical model

  19. A model of a biosynthetic pathway _ Constant X0 X1 X2 X3 + X4 Protein using X3

  20. What can you learn? • Steady state response • Long term or homeostatic systemic behavior of the network • Transient response • Transient of adaptive systemic behavior of the network

  21. What else can you learn? Sensitivity of the system to perturbations in parameters or conditions in the medium Stability of the homeostatic behavior of the system Understand design principles in the network as a consequence of evolution

  22. Steady state response analysis

  23. How is homeostasis of the flux affected by changes in X0? Increases in X0 always increase the homeostatic values of the flux through the pathway Log[V] Large g10 Medium g10 Low g10 Log[X0]

  24. How is flux affected by changes in demand for X3? Log[V] Large g13 Medium g13 Low g13 Log[X4]

  25. How is homeostasis affected by changes in demand for X3? Log[X3] Large g13 Medium g13 Low g13 Log[X4]

  26. What to look for in the analysis? • Steady state response • Long term or homeostatic systemic behavior of the network • Transient response • Transient of adaptive systemic behavior of the network

  27. Transient response analysis Solve numerically

  28. Specific adaptive response Get parameter values Get concentration values Substitution [X3] Solve numerically Change in X4 Time

  29. General adaptive response Normalize Unstable system, uncapable of homeostasis if feedback is strong!! Solve numerically with comprehensive scan of parameter values [X3] High g13 Increasing g13 Low g13 Threshold g13 Increase in X4 Time

  30. Sensitivity analysis • Sensitivity of the system to changes in environment • Increase in demand for product causes increase in flux through pathway • Increase in strength of feedback increases response of flux to demand • Increase in strength of feedback decreases homeostasis margin of the system

  31. Stability analysis • Stability of the homeostatic behavior • Increase in strength of feedback decreases homeostasis margin of the system

  32. How to do it • Download programs/algorithms and do it • PLAS, GEPASI, COPASI SBML suites, MatLab, Mathematica, etc. • Use an on-line server to build the model and do the simulation • V-Cell, Basis

  33. Design principles • Why is a given pathway design prefered over another? • Overall feedback in biosynthetic pathways • Why are there alternative designs of the same pathway? • Dual modes of gene control

  34. Why regulation by overall feedback? _ Overall feedback X0 X1 X2 X3 + _ _ _ X4 X0 X1 X2 X3 Cascade feedback + X4

  35. Overall feedback improves functionality of the system [C] [C] Overall Overall Cascade Cascade Overall Cascade Stimulus Spurious stimulation Proper stimulus Time

  36. Dual Modes of gene control

  37. Demand theory of gene control High demand for gene expression→ Positive Regulation Low demand for gene expression → Negative mode of regulation Wall et al, 2004, Nature Genetics Reviews

  38. How to do it • Download programs/algorithms and do it • BST Lab, Mathematica, Maple

  39. Summary • From networks to physiological behavior • Network representations • Mathematical formalism • Studying a mathematical model

  40. Papers to present • Vasquez et al, Nature • Alves et al. Proteins

  41. Computational tools in Molecular Biology • Predictions & Analysis • Identification of components • Organization of components • Conectivity of components • Behavior of systems • Evolution & Design • Prioritizing wet lab experiments • Most likely elements to test • Most likely processes to test

  42. The Taylor theorem f(C) ith order 1st order f(C) ith + jth order 0 order 2nd order C

  43. Are all terms needed? C + A B f(A,C) can be approximated by considering only a few of its mathematical derivatives with respect to the variables (A,C)

  44. Linear approximation C + A B Taylor Theorem: f(A,C) is approximated with a linear function by its first order derivatives with respect to the variables (A,C)

  45. What if flux is non linear? C + A B Use Taylor theorem with large number of terms or Use Taylor theorem in Non-Linear space!

  46. Y Y X X How does the transformation between spaces work?

  47. How does the Taylor approximation work in another space? Variables: A, B, C, … Variables: A, B, C, … Transform to new space f(A,B,…) f(A,B,…) ~f(A,B,…) ~f(A,B,…) Taylor theorem Return to original space

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