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The use of models in biology

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1 The use of models in biology
Bas Kooijman Afdeling Theoretische Biologie Vrije Universiteit Amsterdam Eindhoven, 2003/02/15

2 Modelling 1 model: scientific statement in mathematical language
“all models are wrong, some are useful” aims: structuring thought; the single most useful property of models: “a model is not more than you put into it” how do factors interact? (machanisms/consequences) design of experiments, interpretation of results inter-, extra-polation (prediction) decision/management (risk analysis)

3 Empirical cycle

4 Modelling 2 language errors:
mathematical, dimensions, conservation laws properties: generic (with respect to application) realistic (precision) simple (math. analysis, aid in thinking) plasticity in parameters (support, testability) ideals: assumptions for mechanisms (coherence, consistency) distinction action variables/meausered quantities core/auxiliary theory

5 Dimension rules quantities left and right of = must have equal dimensions + and – only defined for quantities with same dimension ratio’s of variables with similar dimensions are only dimensionless if addition of these variables has a meaning within the model context never apply transcendental functions to quantities with a dimension log, exp, sin, … What about pH, and pH1 – pH2? don’t replace parameters by their values in model representations y(x) = a x + b, with a = 0.2 M-1, b = 5  y(x) = 0.2 x + 5 What dimensions have y and x? Distinguish dimensions and units!

6 Models with dimension problems
Allometric model: y = a W b y: some quantity a: proportionality constant W: body weight b: allometric parameter in (2/3, 1) Usual form ln y = ln a + b ln W Alternative form: y = y0 (W/W0 )b, with y0 = a W0b Alternative model: y = a L2 + b L3, where L  W1/3 Freundlich’s model: C = k c1/n C: density of compound in soil k: proportionality constant c: concentration in liquid n: parameter in (1.4, 5) Alternative form: C = C0 (c/c0 )1/n, with C0 = kc01/n Alternative model: C = 2C0 c(c0+c)-1 (Langmuir’s model) Problem: No natural reference values W0 , c0 Values of y0 , C0 depend on the arbitrary choice

7 Allometric functions Two curves fitted: a L2 + b L3
with a = μl h-1 mm-2 b = μl h-1 mm-3 a Lb with a = μl h-1 mm-2.437 b = 2.437 O2 consumption, μl/h Length, mm

8 Model without dimension problem
Arrhenius model: ln k = a – T0 /T k: some rate T: absolute temperature a: parameter T0: Arrhenius temperature Alternative form: k = k0 exp{1 – T0 /T}, with k0 = exp{a – 1} Difference with allometric model: no reference value required to solve dimension problem

9 Arrhenius relationship
ln pop growth rate, h-1 r1 = h-1 T1 = K TH = K TL = K TA = K TAL = K TAH = K 103/T, K-1 103/TH 103/TL

10 Biodegradation of compounds
n-th order model Monod model ; ; X : conc. of compound, X0 : X at time 0 t : time k : degradation rate n : order K : saturation constant

11 Biodegradation of compounds
n-th order model Monod model scaled conc. scaled conc. scaled time scaled time

12 Plasticity in parameters
If plasticity of shapes of y(x|a) is large as function of a: little problems in estimating value of a from {xi,yi}i (small confidence intervals) little support from data for underlying assumptions (if data were different: other parameter value results, but still a good fit, so no rejection of assumption)

13 Stochastic vs deterministic models
Only stochastic models can be tested against experimental data Standard way to extend deterministic model to stochastic one: regression model: y(x| a,b,..) = f(x|a,b,..) + e, with e N(0,2) Originates from physics, where e stands for measurement error Problem: deviations from model are frequently not measurement errors Alternatives: deterministic systems with stochastic inputs differences in parameter values between individuals parameter estimation methods become very complex

14 Statistics Deals with estimation of parameter values, and confidence in these values tests of hypothesis about parameter values differs a parameter value from a known value? differ parameter values between two samples? Deals NOT with does model 1 fit better than model 2 if model 1 is not a special case of model 2 Statistical methods assume that the model is given (Non-parametric methods only use some properties of the given model, rather than its full specification)

15 Dynamic systems Defined by simultaneous behaviour of
input, state variable, output Supply systems: input + state variables  output Demand systems input  state variables + output Real systems: mixtures between supply & demand systems Constraints: mass, energy balance equations State variables: span a state space behaviour: usually set of ode’s with parameters Trajectory: map of behaviour state vars in state space Parameters: constant, functions of time, functions of modifying variables compound parameters: functions of parameters

16 Embryonic development
O2 consumption, ml/h weight, g time, d time, d ;  : scaled time l : scaled length e : scaled reserve density g : energy investment ratio ::

17 C,N,P-limitation N,P reductions N reductions P reductions
Nannochloropsis gaditana (Eugstimatophyta) in sea water Data from Carmen Garrido Perez Reductions by factor 1/3 starting from 24.7 mM NO3, 1.99 mM PO4 CO HCO CO2 ingestion only No maintenance, full excretion 79.5 h-1 0.73 h-1

18 C,N,P-limitation Nannochloropsis gaditana in sea water
half-saturation parameters KC = mM for uptake of CO2 KN = mM for uptake of NO3 KP = mM for uptake of PO4 max. specific uptake rate parameters jCm = mM/OD.h, spec uptake of CO2 jNm = mM/OD.h, spec uptake of NO3 jPm = mM/OD.h, spec uptake of PO4 reserve turnover rate kE = h-1 yield coefficients yCV = mM/OD, from C-res. to structure yNV = mM/OD, from N-res. to structure yPV = mM/OD, from P-res. to structure carbon species exchange rate (fixed) kBC = h-1 from HCO3- to CO2 kCB = h-1 from CO2 to HCO3- initial conditions (fixed) HCO3- (0) = mM, initial HCO3- concentration CO2(0) = mM, initial CO2 concentration mC(0) = jCm/ kE mM/OD, initial C-reserve density mN(0) = jNm/ kE mM/OD, initial N-reserve density mP(0) = jPm/ kE mM/OD, initial P-reserve density OD(0) = initial biomass (free)

19 Further reading Basic methods of theoretical biology
freely downloadable document on methods Data-base with examples, exercises under construction Dynamic Energy Budget theory


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