20. Lecture WS 2006/07Bioinformatics III1 V20 Extreme Pathways introduced into metabolic analysis by the lab of Bernard Palsson (Dept. of Bioengineering,

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20. Lecture WS 2006/07Bioinformatics III1 V20 Extreme Pathways introduced into metabolic analysis by the lab of Bernard Palsson (Dept. of Bioengineering, UC San Diego). The publications of this lab are available at The extreme pathway technique is based on the stoichiometric matrix representation of metabolic networks. All external fluxes are defined as pointing outwards. Schilling, Letscher, Palsson, J. theor. Biol. 203, 229 (2000)

20. Lecture WS 2006/07Bioinformatics III2 Feasible solution set for a metabolic reaction network (A) The steady-state operation of the metabolic network is restricted to the region within a cone, defined as the feasible set. The feasible set contains all flux vectors that satisfy the physicochemical constrains. Thus, the feasible set defines the capabilities of the metabolic network. All feasible metabolic flux distributions lie within the feasible set, and (B) in the limiting case, where all constraints on the metabolic network are known, such as the enzyme kinetics and gene regulation, the feasible set may be reduced to a single point. This single point must lie within the feasible set. Edwards & Palsson PNAS 97, 5528 (2000)

20. Lecture WS 2006/07Bioinformatics III3 Extreme Pathways – theorem Theorem. A convex flux cone has a set of systemically independent generating vectors. Furthermore, these generating vectors (extremal rays) are unique up to a multiplication by a positive scalar. These generating vectors will be called „extreme pathways“. (1) The existence of a systemically independent generating set for a cone is provided by an algorithm to construct extreme pathways (see below). (2) uniqueness? Let {p 1,..., p k } be a systemically independent generating set for a cone. Then follows that if p j = c´+ c´´ both c´and c´´ are positive multiples of p j. Schilling, Letscher, Palsson, J. theor. Biol. 203, 229 (2000)

20. Lecture WS 2006/07Bioinformatics III4 Extreme Pathways – uniqueness To show that this is true, write the two pathways c´and c´´ as non-negative linear combinations of the extreme pathways: Since the p i are systemically independent, Therefore both c´and c´´ are multiples of p j. If {c 1,..., c k } was another set of extreme pathways, this argument would show that each of the c i must be a positive multiple of one of the p i. Schilling, Letscher, Palsson, J. theor. Biol. 203, 229 (2000)

20. Lecture WS 2006/07Bioinformatics III5 Extreme Pathways – algorithm - setup The algorithm to determine the set of extreme pathways for a reaction network follows the pinciples of algorithms for finding the extremal rays/ generating vectors of convex polyhedral cones. Combine n  n identity matrix (I) with the transpose of the stoichiometric matrix S T. I serves for bookkeeping. Schilling, Letscher, Palsson, J. theor. Biol. 203, 229 (2000) S ISTST

20. Lecture WS 2006/07Bioinformatics III6 separate internal and external fluxes Examine constraints on each of the exchange fluxes as given by  j  b j   j If the exchange flux is constrained to be positive  do nothing. If the exchange flux is constrained to be negative  multiply the corresponding row of the initial matrix by -1. If the exchange flux is unconstrained  move the entire row to a temporary matrix T (E). This completes the first tableau T (0). T (0) and T (E) for the example reaction system are shown on the previous slide. Each element of this matrices will be designated T ij. Starting with x = 1 and T (0) = T (x-1) the next tableau is generated in the following way: Schilling, Letscher, Palsson, J. theor. Biol. 203, 229 (2000)

20. Lecture WS 2006/07Bioinformatics III7 idea of algorithm (1) Identify all metabolites that do not have an unconstrained exchange flux associated with them. The total number of such metabolites is denoted by . For the example, this is only the case for metabolite C (  = 1). What is the main idea? - We want to find balanced extreme pathways that don‘t change the concentrations of metabolites when flux flows through (input fluxes are channelled to products not to accumulation of intermediates). - The stochiometrix matrix describes the coupling of each reaction to the concentration of metabolites X. - Now we need to balance combinations of reactions that leave concentrations unchanged. Pathways applied to metabolites should not change their concentrations  the matrix entries need to be brought to 0. Schilling, Letscher, Palsson, J. theor. Biol. 203, 229 (2000)

20. Lecture WS 2006/07Bioinformatics III8 keep pathways that do not change concentrations of internal metabolites (2) Begin forming the new matrix T (x) by copying all rows from T (x – 1) which contain a zero in the column of S T that corresponds to the first metabolite identified in step 1, denoted by index c. (Here 3rd column of S T.) Schilling, Letscher, Palsson, J. theor. Biol. 203, 229 (2000) T (0) = T (1) = +

20. Lecture WS 2006/07Bioinformatics III9 balance combinations of other pathways (3) Of the remaining rows in T (x-1) add together all possible combinations of rows which contain values of the opposite sign in column c, such that the addition produces a zero in this column. Schilling, et al. JTB 203, T (0) = T (1) =

20. Lecture WS 2006/07Bioinformatics III10 remove “non-orthogonal” pathways (4) For all of the rows added to T (x) in steps 2 and 3 check to make sure that no row exists that is a non-negative combination of any other sets of rows in T (x). One method used is as follows: let A(i) = set of column indices j for with the elements of row i = 0. For the example above Then check to determine if there exists A(1) = {2,3,4,5,6,9,10,11} another row (h) for which A(i) is a A(2) = {1,4,5,6,7,8,9,10,11}subset of A(h). A(3) = {1,3,5,6,7,9,11} A(4) = {1,3,4,5,7,9,10}If A(i)  A(h), i  h A(5) = {1,2,3,6,7,8,9,10,11}where A(6) = {1,2,3,4,7,8,9}A(i) = { j : T i,j = 0, 1  j  (n+m) } then row i must be eliminated from T (x) Schilling et al. JTB 203, 229

20. Lecture WS 2006/07Bioinformatics III11 repeat steps for all internal metabolites (5) With the formation of T (x) complete steps 2 – 4 for all of the metabolites that do not have an unconstrained exchange flux operating on the metabolite, incrementing x by one up to . The final tableau will be T (  ). Note that the number of rows in T (  ) will be equal to k, the number of extreme pathways. Schilling et al. JTB 203, 229

20. Lecture WS 2006/07Bioinformatics III12 balance external fluxes (6) Next we append T (E) to the bottom of T (  ). (In the example here  = 1.) This results in the following tableau: Schilling et al. JTB 203, 229 T (1/E) =

20. Lecture WS 2006/07Bioinformatics III13 balance external fluxes (7) Starting in the n+1 column (or the first non-zero column on the right side), if T i,(n+1)  0 then add the corresponding non-zero row from T (E) to row i so as to produce 0 in the n+1-th column. This is done by simply multiplying the corresponding row in T (E) by T i,(n+1) and adding this row to row i. Repeat this procedure for each of the rows in the upper portion of the tableau so as to create zeros in the entire upper portion of the (n+1) column. When finished, remove the row in T (E) corresponding to the exchange flux for the metabolite just balanced. Schilling et al. JTB 203, 229

20. Lecture WS 2006/07Bioinformatics III14 balance external fluxes (8) Follow the same procedure as in step (7) for each of the columns on the right side of the tableau containing non-zero entries. (In this example we need to perform step (7) for every column except the middle column of the right side which correponds to metabolite C.) The final tableau T (final) will contain the transpose of the matrix P containing the extreme pathways in place of the original identity matrix. Schilling et al. JTB 203, 229

20. Lecture WS 2006/07Bioinformatics III15 pathway matrix T (final) = P T = Schilling et al. JTB 203, v 1 v 2 v 3 v 4 v 5 v 6 b 1 b 2 b 3 b 4 p1p7p3p2p4p6p5p1p7p3p2p4p6p5

20. Lecture WS 2006/07Bioinformatics III16 Extreme Pathways for model system Schilling et al. JTB 203, v 1 v 2 v 3 v 4 v 5 v 6 b 1 b 2 b 3 b 4 p1p7p3p2p4p6p5p1p7p3p2p4p6p5 2 pathways p 6 and p 7 are not shown (right below) because all exchange fluxes with the exterior are 0. Such pathways have no net overall effect on the functional capabilities of the network. They belong to the cycling of reactions v 4 /v 5 and v 2 /v 3.

20. Lecture WS 2006/07Bioinformatics III17 How reactions appear in pathway matrix In the matrix P of extreme pathways, each column is an EP and each row corresponds to a reaction in the network. The numerical value of the i,j-th element corresponds to the relative flux level through the i-th reaction in the j-th EP. Papin, Price, Palsson, Genome Res. 12, 1889 (2002)

20. Lecture WS 2006/07Bioinformatics III18 Papin, Price, Palsson, Genome Res. 12, 1889 (2002) A symmetric Pathway Length Matrix P LM can be calculated: where the values along the diagonal correspond to the length of the EPs. Properties of pathway matrix The off-diagonal terms of P LM are the number of reactions that a pair of extreme pathways have in common.

20. Lecture WS 2006/07Bioinformatics III19 Papin, Price, Palsson, Genome Res. 12, 1889 (2002) One can also compute a reaction participation matrix P PM from P: where the diagonal correspond to the number of pathways in which the given reaction participates. Properties of pathway matrix

20. Lecture WS 2006/07Bioinformatics III20 EP Analysis of H. pylori and H. influenza Amino acid synthesis in Heliobacter pylori vs. Heliobacter influenza studied by EP analysis. Papin, Price, Palsson, Genome Res. 12, 1889 (2002)

20. Lecture WS 2006/07Bioinformatics III21 Extreme Pathway Analysis Calculation of EPs for increasingly large networks is computationally intensive and results in the generation of large data sets. Even for integrated genome-scale models for microbes under simple conditions, EP analysis can generate thousands of vectors! Interpretation: - the metabolic network of H. influenza has an order of magnitude larger degree of pathway redundancy than the metabolic network of H. pylori Found elsewhere: the number of reactions that participate in EPs that produce a particular product is poorly correlated to the product yield and the molecular complexity of the product. Possible way out? Papin, Price, Palsson, Genome Res. 12, 1889 (2002)

20. Lecture WS 2006/07Bioinformatics III22 Linear Matrices Transpose of a linear matrix A: U is a unitary n  n matrix  with the n  n identity matrix I n. In linear algebra singular value decomposition (SVD) is an important factorization of a rectangular real or complex matrix, with several applications in signal processing and statistics. This matrix decomposition is analogous to the diagonalization of symmetric or Hermitian square matrices using a basis of eigenvectors given by the spectral theorem.

20. Lecture WS 2006/07Bioinformatics III23 Diagonalisation of pathway matrix? Suppose M is an m  n matrix with real or complex entries. Then there exists a factorization of the form M = U  V* where U : m  m unitary matrix, Σ : is an m  n matrix with nonnegative numbers on the diagonal and zeros off the diagonal, V* : the transpose of V, an n  n unitary matrix of real or complex numbers. Such a factorization is called a singular-value decomposition of M. U describes the rows of M with respect to the base vectors associated with the singular values. V describes the columns of M with respect to the base vectors associated with the singular values. Σ contains the singular values One commonly insists that the values Σ i,i be ordered in non-increasing fashion. In this case, the diagonal matrix Σ is uniquely determined by M (though the matrices U and V are not).

20. Lecture WS 2006/07Bioinformatics III24 Single Value Decomposition of EP matrices For a given EP matrix P  n  p, SVD decomposes P into 3 matrices Price et al. Biophys J 84, 794 (2003) where U  n  n : orthonormal matrix of the left singular vectors, V  p  p : an analogous orthonormal matrix of the right singular vectors,   r  r :a diagonal matrix containing the singular values  i=1..r arranged in descending order where r is the rank of P. The first r columns of U and V, referred to as the left and right singular vectors, or modes, are unique and form the orthonormal basis for the column space and row space of P. The singular values are the square roots of the eigenvalues of P T P. The magnitude of the singular values in  indicate the relative contribution of the singular vectors in U and V in reconstructing P. E.g. the second singular value contributes less to the construction of P than the first singular value etc.

20. Lecture WS 2006/07Bioinformatics III25 Single Value Decomposition of EP: Interpretation Price et al. Biophys J 84, 794 (2003) The first mode (as the other modes) corresponds to a valid biochemical pathway through the network. The first mode will point into the portions of the cone with highest density of EPs.

20. Lecture WS 2006/07Bioinformatics III26 SVD applied for Heliobacter systems Price et al. Biophys J 84, 794 (2003) Cumulative fractional contributions for the singular value decomposition of the EP matrices of H. influenza and H. pylori. This plot represents the contribution of the first n modes to the overall description of the system.