Biochemical Kinetics Made Easier Petr Kuzmič, Ph.D. BioKin, Ltd. 1.Theory: differential equations - DYNAFIT software 2.Example I: Initial rate experiment.

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Biochemical Kinetics Made Easier Petr Kuzmič, Ph.D. BioKin, Ltd. 1.Theory: differential equations - DYNAFIT software 2.Example I: Initial rate experiment - p56 lck kinase / “ATP analog” inhibitor 3.Example II: Time course experiment - p38 kinase / desatinib / competitive ligand displacement

Bio/Chemical Kinetics Made Easy2 The task of mechanistic enzyme kinetics SELECT AMONG MULTIPLE CANDIDATE MECHANISMS concentration initial rate DATA computer Select most plausible model MECHANISMS competitive ? uncompetitive ? mixed type ? competitive ?

Bio/Chemical Kinetics Made Easy3 From mechanistic to mathematical models DERIVE A MATHEMATICAL MODEL FROM BIOCHEMICAL IDEAS concentration initial rate DATA computer MATHEMATICAL MODEL MECHANISM

Bio/Chemical Kinetics Made Easy4 Problem: Simple mechanisms... MERELY FIVE REACTIONS... 2 reactants (A, B) 1 product (P) 5 reversible reactions 10 rate constant "RANDOM BI-UNI" MECHANISM

Bio/Chemical Kinetics Made Easy5... lead to complex algebraic models Segel, I. (1975) Enzyme Kinetics. John Wiley, New York, p "RANDOM BI-UNI" MECHANISM MERELY FIVE REACTIONS...

Bio/Chemical Kinetics Made Easy6 New approach: Numerical Enzyme Kinetics NO MORE ALGEBRA: LET THE COMPUTER DEAL WITH IT !

Bio/Chemical Kinetics Made Easy7 Theoretical foundations: Mass Action Law RATE IS PROPORTIONAL TO CONCENTRATION(S) MONOMOLECULAR REACTIONS rate is proportional to [A] BIMOLECULAR REACTIONS rate is proportional to [A]  [B] - d [A] / d t = k [A] - d [A] / d t = - d [B] / d t = k [A]  [B]

Bio/Chemical Kinetics Made Easy8 Theoretical foundations: Mass Conservation Law EXAMPLE COMPOSITION RULEADDITIVITY OF TERMS FROM SEPARATE REACTIONS mechanism: d [B] / d t = - k 2 [B] + k 1 [A] PRODUCTS ARE FORMED WITH THE SAME RATE AS REACTANTS DISAPPEAR - A = + P = + Q d[ ]/dt d[ ]/dt d[ ]/dt

Bio/Chemical Kinetics Made Easy9 Program DYNAFIT 1. Kuzmic P. (1996) Anal. Biochem. 237, “Program DYNAFIT for the analysis of enzyme kinetic data” REFERENCES 2. Kuzmic P. (2009) Methods in Enzymology, in press “DYNAFIT – A software package for enzymology” FREE TO ACADEMIC USERS Ref. [1] – total citations:

Bio/Chemical Kinetics Made Easy10 Initial rate kinetics TWO BASIC APPROXIMATIONS 1. Rapid-Equilibrium Approximation 2. Steady-State Approximation assumed very much slower than k 1, k 2 no assumptions made about relative magnitude of k 1, k 2, k 3 New in DynaFit Mathematical details in BBA – Proteins & Proteomics, submitted

Bio/Chemical Kinetics Made Easy11 Initial rate kinetics - Traditional approach DERIVE A MATHEMATICAL MODEL FROM BIOCHEMICAL IDEAS concentration initial rate DATA computer MATHEMATICAL MODEL MECHANISM derive equations

Bio/Chemical Kinetics Made Easy12 Initial rate kinetics in DynaFit GOOD NEWS: MODEL DERIVATION CAN BE FULLY AUTOMATED! [task] task = fit data = rates approximation = steady-state [mechanism] E + A E.A : k1 k2 E.A + B E.A.B : k3 k4 E + B E.B : k5 k6 E.B + A E.A.B : k7 k8 E.A.B E + P : k9 k10 [constants]... DynaFit input file computer concentration initial rate MATHEMATICAL MODEL MECHANISM DATA 0 = [E] + [E.A] + [E.B] + [E.A.B] – [E] tot 0 = [A] + [E.A] + [E.A.B] – [A] tot 0 = [B] + [E.B] + [E.A.B] – [B] tot 0 = + k 1 [E][A] – k 2 [E.A] – k 3 [E.A][B] + k 4 [E.A.B] 0 = + k 5 [E][B] – k 6 [E.B] – k 7 [E.B][A] + k 8 [E.A.B] 0 = + k 3 [E.A][B] + k 7 [E.B][A] + k 10 [E][P] – (k 4 +k 8 +k 9 )[E.A.B] push button

Bio/Chemical Kinetics Made Easy13 Initial rate kinetics in DynaFit vs. traditional method WHICH DO YOU LIKE BETTER? [task] task = fit data = rates approximation = steady-state [reaction] A + B --> P [mechanism] E + A E.A : k1 k2 E.A + B E.A.B : k3 k4 E + B E.B : k5 k6 E.B + A E.A.B : k7 k8 E.A.B E + P : k9 k10 [constants]... [concentrations]...

Biochemical Kinetics Made Easier DynaFit applications to protein kinases Case study #1: INITIAL RATES OF ENZYME REACTIONS inhibition constants and kinetic mechanism

Bio/Chemical Kinetics Made Easy15 WIN-61651: Presumably an ATP analog? TRADITIONAL STUDY: KINASE INHIBITOR ‘WIN-61651’ IS COMPETITIVE WITH ATP Faltynek et al. (1995) J. Enz. Inhib. 9,

Bio/Chemical Kinetics Made Easy16 Lineweaver-Burk plots for WIN LINEWEAVER-BURK PLOTS AT VARIED [PEPTIDE] AND FIXED [ATP] ARE NONLINEAR Faltynek et al. (1995) J. Enz. Inhib. 9, [I] = 0 [I] = 80 M

Bio/Chemical Kinetics Made Easy17 Direct plot for WIN-61651: Initial rate vs. [peptide] MIXED-TYPE INHIBITION MECHANISM: WHICH IS SMALLER, K is or K ii ? [mechanism] E + S ES ES ---> E + P E + I EI ES + I ESI Faltynek et al. (1995) J. Enz. Inhib. 9, – FIGURE 1B

Bio/Chemical Kinetics Made Easy18 Adding a substrate inhibition term improves fit GLOBAL NUMERICAL FIT IS BOTH MORE PRECISE AND MORE ACCURATE [mechanism] E + S ES ES ---> E + P ES + S ES2 E + I EI ES + I ESI [I] = 0

Bio/Chemical Kinetics Made Easy19 How do we know which mechanism is "best"? COMPARE ANY NUMBER OF MODELS IN A SINGLE RUN [task] task = fit | data = rates model = mixed-type ? [reaction] | S ---> P [enzyme] | E [modifiers] | I... [task] task = fit | data = rates model = competitive ?... [task] task = fit | data = rates model = uncompetitive ?... Akaike Information Criterion Review: Burnham & Anderson (2004)

Bio/Chemical Kinetics Made Easy20 WIN summary: Comparison of methods WIN IS A MIXED-TYPE INHIBITOR, NOT COMPETITIVE WITH ATP Faltynek DynaFit et al. (1995) K s 9100   140 K s  450 — K is 28  2 18  4 K ii 14  5 67  18 residual squares competitive: uncompetitive: parameter (mM)

Biochemical Kinetics Made Easier DynaFit applications to protein kinases Case study #2: REACTION PROGRESS rate constants for kinase-inhibitor interactions competitive ligand displacement FRET assay Preliminary experimental data: Bryan Marks, Invitrogen (life Technologies)

Bio/Chemical Kinetics Made Easy22 Kinase – Antibody – Tracer – Inhibitor assay A FOUR-COMPONENT MIXTURE 1234

Bio/Chemical Kinetics Made Easy23 Kinase – Antibody – Tracer – Inhibitor: mechanism PURPOSE: OBTAIN RATE CONSTANTS FOR INHIBITOR ASSOCIATION & DISSOCIATION EATIEATI... enzyme... antibody (FRET donor)... tracer (FRET acceptor)... inhibitor four components five complexes (3 binary, 2 ternary) six unique rate constants

Bio/Chemical Kinetics Made Easy24 Rate constants and receptor-ligand residence time IS IT WORTH CHASING AFTER RATE CONSTANTS? Mbalaviele et al. (2009) J. Pharm. Exp. Ther. 329, “PHA-408 is an ATP competitive inhibitor, which binds IKK-2 tightly with a relatively slow off rate.” Puttini et al. (2008) haematologica 93, “The present results suggest a slower off-rate (dissociation rate) of [a novel Abl kinase inhibitor] compared to imatinib as an explanation for the increased cellular activity of the former.” Tummino & Copeland (2008) Biochemistry 47, “... the extent and duration of responses to receptor-ligand interactions depend greatly on the time period over which the ligand is in residence on its receptor.”

Bio/Chemical Kinetics Made Easy25 Kinase - Antibody - Tracer - Inhibitor: data Data: Bryan Marks, Invitrogen EXPERIMENT: 1.incubate [E] = 4 nM [Ab] = 40 nM [In] = varied 30 minutes 2.dilute 1:20 with Tracer final concentrations [E] = 0.2 nM [Ab] = 2 nM [Tr] = 100 nM [In] = varied KINASE: p38 | ANTIBODY: anti-GST | TRACER: Invitrogen “Tracer-199” | INHIBITOR: desatinib nM [In]

Bio/Chemical Kinetics Made Easy26 Kinase - Antibody - Tracer - Inhibitor: fitting model AUTOMATICALLY DERIVED BY DYNAFIT d[E]/dt = - k aI [E][In] + k dI [E.In] - k aT [E][Tr] + k dT [E.Tr] - k aA [E][Ab] + k dA [E.Ab] d[In]/dt = - k aI [E][In] + k dI [E.In] - k aI [E.Ab][In] + k dI [E.In.Ab] d[E.In]/dt = + k aI [E][In] - k dI [E.In] - k aA [E.In][Ab] + k dA [E.In.Ab] d[Tr]/dt = - k aT [E][Tr] + k dT [E.Tr] - k aT [E.Ab][Tr] + k dT [E.Tr.Ab] d[E.Tr]/dt = + k aT [E][Tr] - k dT [E.Tr] - k aA [E.Tr][Ab] + k dA [E.Tr.Ab] d[Ab]/dt = - k aA [E][Ab] + k dA [E.Ab] - k aA [E.In][Ab] + k dA [E.In.Ab] - k aA [E.Tr][Ab] + k dA [E.Tr.Ab] d[E.Ab]/dt = + k aA [E][Ab] - k dA [E.Ab] - k aI [E.Ab][In] + k dI [E.In.Ab] - k aT [E.Ab][Tr] + k dT [E.Tr.Ab] d[E.In.Ab]/dt = + k aA [E.In][Ab] - k dA [E.In.Ab] + k aI [E.Ab][In] - k dI [E.In.Ab] d[E.Tr.Ab]/dt = + k aA [E.Tr][Ab] - k dA [E.Tr.Ab] + k aT [E.Ab][Tr] - k dT [E.Tr.Ab] [mechanism] DynaFit Input E + In E.In : kaI kdI E + Tr E.Tr : kaT kdT E + Ab E.Ab : kaA kdA E.In + Ab E.In.Ab : kaA kdA E.Ab + In E.In.Ab : kaI kdI E.Tr + Ab E.Tr.Ab : kaA kdA E.Ab + Tr E.Tr.Ab : kaT kdT system of simultaneous ordinary differential equations

Bio/Chemical Kinetics Made Easy27 Kinase - Antibody - Tracer - Inhibitor: rate constants ASSUMPTION: INDEPDENT BINDING SITES – ONLY TWO ADDITIONAL RATE CONSTANTS PARAMETERS k aI = k dI = 2.1  10 9 M -1.s s -1 LEAST-SQUARES FIT “RESIDENCE TIME”  = 0.05 sec DATA + MODEL

Bio/Chemical Kinetics Made Easy28 Kinase - Antibody - Tracer - Inhibitor: state variables EVOLUTION OF SPECIES CONCENTRATIONS DURING THE KINETIC EXPERIMENT EXPERIMENT: 1.incubate [E] = 4 nM [Ab] = 40 nM [In] = 370 nM 30 minutes 2.dilute 1:20 with Tracer final concentrations [E] = 0.2 nM [Ab] = 2 nM [Tr] = 100 nM [In] = 18.5 nM optimize design!

Bio/Chemical Kinetics Made Easy29 Acknowledgments Bryan Marks: all kinase experiments Invitrogen, a.k.a. Life Technologies, Madison, Wisconsin Steve Riddle: project management Invitrogen, a.k.a. Life Technologies, Madison, Wisconsin IPK2009 organizers, Jan Antosiewicz (IBB) ACADEMIC COLLABORATION: INVITATION TO PRESENT:

Bio/Chemical Kinetics Made Easy30 Questions ? biokin.com