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Reinhard Laubenbacher Virginia Bioinformatics Institute and Mathematics Department Virginia Tech

Systems biology SAMSI Opening Workshop Algebraic Methods in Systems Biology and Statistics September 14, 2008. Reinhard Laubenbacher Virginia Bioinformatics Institute and Mathematics Department Virginia Tech.

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Reinhard Laubenbacher Virginia Bioinformatics Institute and Mathematics Department Virginia Tech

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  1. Systems biologySAMSI Opening WorkshopAlgebraic Methods in Systems Biology and StatisticsSeptember 14, 2008 Reinhard Laubenbacher Virginia Bioinformatics Institute and Mathematics Department Virginia Tech

  2. “Living systems, being nonlinear dynamical systems, have properties different from their constituents in isolation, properties which emerge from the interactions among the molecular constituents; accordingly, it is the organization of these intermolecular processes in organisms that underlies their characteristic living properties. A reductionist or antireductionist strategy alone does not do justice to this claim. A new strategy seems needed […] F. C. Boogerd et al., 2007

  3. Whole organism Tissue level processes complexity Interactions between molecules Intracellular networks Genomics/proteomics

  4. Y. Lazebnik, Cancer Cell, 2002

  5. G. Koh et al., Bioinformatics, 2006

  6. sdsddddddddddddddddddddddddd

  7. Model Types Ideker, Lauffenburger, Trends in Biotech 21, 2003

  8. Discrete models of molecular networks “[The] transcriptional control of a gene can be described by a discrete-valued function of several discrete-valued variables.” “A regulatory network, consisting of many interacting genes and transcription factors, can be described as a collection of interrelated discrete functions and depicted by a wiring diagram similar to the diagram of a digital logic circuit.” R. Karp, 2002

  9. Nature 406 2000

  10. Discrete modeling frameworks • Boolean networks and cellular automata (including probabilistic and sequential BNs) • Polynomial dynamical systems over finite fields • Logical models • Dynamic Bayesian networks

  11. Boolean networks Definition. Let f1,…,fn be Boolean functions in variables x1,…,xn. A Boolean network is a time-discrete dynamical system f = (f1,…,fn) : {0, 1}n→ {0, 1}n The state space of f is the directed graph with the elements of {0,1}n as nodes. There is a directed edge b → c iff f(b) = c.

  12. Boolean networks f1 = NOTx2 f2 = x4OR(x1 AND x3) f3 = x4 AND x2 f4 = x2 OR x3

  13. The phase plane dy = g(xo ,yo) dt (xo ,yo) dx = f (xo ,yo) dt Compound y dx /dt = f (x,y) dy /dt = g(x,y) Compound x Courtesy J. Tyson

  14. Boolean network models in biology Stuart A. Kauffman Metabolic stability and epigenesis in randomly constructed genetic nets J. Theor. Biol. 22 (1969) 437-467. Boolean networks as models for genetic regulatory networks: Nodes = genes, functions = gene regulation Variable states: 1 = ON, 0 = OFF

  15. x AND y = xy x OR y = x+y+xy NOT x = x+1 (x XOR y = x+y) Polynomial dynamical systems Note: {0, 1} = k has a field structure (1+1=0). Fact: Any Boolean function in n variables can be expressed uniquely as a polynomial function in k[x1,…,xn] / <xi2 – xi>, and conversely. Proof:

  16. Polynomial dynamical systems Let k be a finite field and f1, … , fn k[x1,…,xn] f = (f1, … , fn) : kn → kn is an n-dimensional polynomial dynamical system over k. Natural generalization of Boolean networks. Fact: Every function kn → k can be represented by a polynomial, so all finite dynamical systems kn → kn are polynomial dynamical systems.

  17. Example k = F3 = {0, 1, 2}, n = 3 f1 = x1x22+x3, f2 = x2+x3, f3 = x12+x22. Dependency graph (wiring diagram)

  18. Sequential polynomial systems k = F3 = {0, 1, 2}, n = 3 f1 = x1x22+x3 f2 = x2+x3 f3 = x12+x22 σ = (2 3 1) update schedule: First update f2. Then f3, using the new value of x2. Then f1, using the new values of x2 and x3.

  19. Sequential systems as biological models • Different regulatory processes happen on different time scales • Stochastic effects in the cell affect the “update order” of variables representing different chemical compounds at any given time Therefore, sequential update in models of regulatory networks adds realistic feature.

  20. Stochastic models Polynomial dynamical systems can be modified: • Choose random update order for each update (see Sontag et al. for Boolean case) • Choose an update function at random from a collection at each update (see Shmulevich et al. for Boolean case)

  21. Logical models E. Snoussi and R. Thomas Logical identification of all steady states: the concept of feedback loop characteristic states Bull. Math. Biol. 55 (1993) 973-991 Key model features: • Time delays of different lengths for different variables are important • Positive and negative feedback loops are important

  22. Model description Basic structure of logical models: • Sets of variables x1, … , xn; X1, … , Xn (Xi = genes and xi = gene products, e.g., proteins. A gene product x regulates a gene Y, with a certain time delay.) Each variable pair xi, Xi takes on a finite number of distinct states or thresholds (possibly different for different i), corresponding to different modes of action of the variables for different concentration levels.

  23. Model description (cont.) 2. A directed weighted graph with the xias nodes and threshold levels, indicating regulatory relationships and at what levels they occur. Each edge has a sign, indicating activation (+) or inhibition (-). 3. A collection of “logical parameters” which can be used to determine the state transition of a given node for a given configuration of inputs.

  24. Features of logical models • Sophisticated models that include many features of real networks • Ability to construct continuous models based on the logical model specification • Models encode intuitive network properties

  25. An Example y x z

  26. Features of logical models • Include many features of real biological networks • Intuitive but complicated formalism and model description • Difficult to study as a mathematical object • Difficult to study dynamics for larger models

  27. Equivalence of models Theorem. (A. Veliz-Cuba, A. Jarrah, L.) A logical model can be encoded as a PDS, without loss of information. (Boolean case: H. Siebert) (Similarly, certain types of Petri nets can be encoded as PDS.) This aids model analysis.

  28. Dynamic Bayesian networks Definition. A Bayesian network (BN) is a representation of a joint probability distribution over a set X1, … , Xn of random variables. It consists of • an acyclic graph with the Xi as vertices. A directed edge indicates a conditional dependence relation • a family of conditional distributions for each variable, given its parents in the graph

  29. BN models of gene regulatory networks Can use BNs to model gene regulatory networks: Random variables Xi↔ genes Directed edges ↔ regulatory relationships Problem: BNs cannot have directed loops. Hence cannot model feedback loops.

  30. Dynamic Bayesian networks Definition. A dynamic Bayesian network (DBN)is a representation of the stochastic evolution of a set of random variables{Xi},using discrete time. It has two components: • a directed graph (V, E) encoding conditional dependence conditions (as before); • a family of conditional probability distributions P(Xi(t) | Pai(t-1)), where Pai = {Xj | (Xj, Xi) E} (Doyer et al., BMC Bioinformatics 7 (2006) )

  31. Dynamic Bayesian networks DBNs generalize Hidden Markov Models. Recently used for inference of gene regulatory networks from time courses of microarray data.

  32. Open problems • Find good model inference methods (system identification) using “omics” data • Find experimental design strategies appropriate for systems biology • Formalize systems biology along the lines of mathematical systems theory

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