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Title: 1.3. PROCESS ANALYSIS


1
Industrial MicrobiologyINDM 4005Lecture
923/02/04
2
PROCESS ANALYSIS
  • Lecture 9
  • (1) Kinetics and models - Predictive microbiology
  • (2) Growth kinetics (and product)
  • (3) Models - example, Continuous culture model

3
Overview
  • Fermentation Kinetics
  • Mathematic models
  • Stoichiometry
  • Chemical kinetics
  • Michaelis menten model
  • The Monod model
  • Yield coefficients
  • Modelling fermentation processes
  • Types of model

4
INTRODUCTION TO KINETICS and MODELS - PREDICTIVE
MICROBIOLOGY
  • Kinetics and/or Models describe the process or
    data
  • Used to make predictions
  • Enhances experimental design - cuts down on the
    number of experiments (allows process simulation)

5
Why study Fermentation Kinetics?
  • The overriding factor that propels biotechnology
    is profit. Without profit, there would be no
    money for research and development and
    consequently no new products.
  • A biotechnologist seeks to use biological systems
    to either maximize profits or maximize the
    efficiency of resource utilization.
  • The large scale cultivation of cells is central
    to the production of a large proportion of
    commercially important biological products.
  • Not surprisingly, the maximization of profits is
    closely linked to optimizing product formation by
    cellular catalysts ie. producing the maximum
    amount of product in the shortest time at the
    lowest cost.

6
Fermentation Kinetics
  • To achieve this objective, cell culture systems
    must be described quantitatively.
  • In other words, the kinetics of the process must
    be known. By determining the kinetics of the
    system, it is possible to predict yields and
    reaction times and thus permit the correct sizing
    of a bioreactor.
  • Obviously, reaction kinetics must be determined
    prior to the construction of the full scale
    system. In practice, kinetic data is obtained in
    small scale reactors and then used with mass
    transfer data to scale-up the process.
  • In this lecture, we shall learn how fermentation
    kinetics are determined and how they can be
    applied.

7
Fermentation Kinetics
  • Quantitative research is based on numerical data,
    i.e a precise measurement or determination
    expressed numerically
  • Considering the complex nature of microbial
    growth this is a difficult task
  • Product formation kinetics is also difficult
  • Increased understanding in cellular function has
    allowed advanced methods in modeling cellular
    growth kinetics
  • Mathematical models now describe gene expression,
    individual reactions in central pathways,
    macroscopic models of cell growth/product
    formation with simple mathematical expressions

8
Mathematical modelsWhat are they, why use them?
  • Cell culture systems are extremely complex. There
    are many inputs and many outputs.
  • Unlike most chemical systems, the catalysts
    themselves are self propagating.
  • To assist in both understanding quantifying cell
    culture systems, biotechnologists often use
    mathematical models.
  • A mathematical model is a mathematical
    description of a physical system.
  • A good mathematical model will focus on the
    important aspects of a particular process to
    yield useful results.

9
Framework for Kinetic models
  • Net result of many biochemical reactions within a
    single cell is the conversion of substrates to
    biomass and metabolic end-products

Metabolic products Extracellular macromolecules
Biomass constituents
Intracellular biochemical reactions
Substrates (Glucose)
10
Framework for Kinetic models
  • Conversion of glucose to biomass involves many
    reactions
  • Reactions can be structured as follows
  • (1) Assembly reactions
  • (2) Polymerisation reactions
  • (3) Biosynthetic reactions
  • (4) Fuelling reactions

11
Overall composition of an E. coli cell
Macromolecule of total dry Different
kinds weight of molecules Protein 55 1
050 RNA 20.5 rRNA 16.7 3 tRNA 3 60
mRNA 0.8 400 DNA 3.1 1 Lipid 9.1 4
Lipopolysaccaride 3.4 1 Peptidoglycan 2.5
1 Glycogen 2.5 1 Metabolic pool 3.9 Data
taken from Ingraham et al., (1983)
12
Control of metabolite levels
  • The number of cellular metabolites is therefore
    quite large, but still account for a small
    percentage of the total biomass
  • Due to en bloc control of individual reaction
    rates
  • Also high affinity of enzyme to substrate ensures
    reactants are at a low concentration
  • Therefore not important to consider kinetics of
    individual reactions, reduces complexity

13
  • To model a fermentation process, must consider
  • Bioreactor Performance e.g.
  • Flow patterns of liquids and mixing,
  • Mass Transfer of nutrients and gases
  • Microbial Kinetics e.g.
  • Cell model (growth rate / yields of the
    individual cell) and also
  • Population Models (e.g. mixed populations,
    competing microorganisms/ contamination etc.)

14
Formulating mathematical models
  • A model is a set of relationships between
    variables of interest in the system being studied
  • A set of relationships may be in the form of
    equations, graphs, or tables
  • The variables of interest depend upon the use to
    which the model is to be put
  • For example, a biotechnologist, electrical
    engineer, mechanical engineer, an accountant
    would have different variables of interest

15
Constructing a mathematical model
  • To construct a conventional mathematical model we
    write a set of equations for each control region
  • 1) Balance equations for each extensive property
    of the system, eg mass, energy or chemical
    elements
  • 2) Rate equations 1) rate of transfer of mass
  • 2) rates of generation or consumption,
  • substrate or product across boundaries of the
    region
  • 3) Thermodynamic equations relate thermodynamic
    properties (pressure, temperature, density,
    concentration) within the control region or
    across phases

16
Abstracted physical model of a batch fermenter
Indicates well mixed
Gas out
Gas phase Air/gas interface
Liquid phase Control region
Air in
17
Mathematical models - parameters, variables and
constraints
  • Differential equations describe rates of change
    within a system. Many mathematical models are
    formulated using differential equations.
  • Each equation contains variables and parameters.
    The variables in the Michaelis Menten model are
    S and P. The values of variables will change
    with time.
  • Vmax, Km and Y are assumed to not change with
    time. These expressions are examples of
    parameters. Parameters are terms which are
    assumed to be constant under a given set of
    conditions. With each different condition eg. pH
    or temperature, or a different calatalyst, a
    different set of parameters are required.
  • Variables are expressed as concentrations (eg.
    g.l-1) rather than as absolute values (eg. g).
    This is not obligatory but the use of relative
    expressions makes the model more useful when used
    to scale-up a process.

18
How kinetics fits into overall design and
operation of a process
Industrial Lab Fermenter
Test ideas
Scientific Experimental Engineering judgeme
nt data judgement
Determine model parameters
Validate model
Kinetic and Abstracted stoichiometric physic
al models model
Mathematical model
Use model for control process and economic
studies
19
Stoichiometry
  • First step in a quantitative description of
    cellular growth is to specify the stoichiometry
    for those reactions that are to be considered for
    analysis
  • Conversion of substrates into products and
    cellular materials is represented by chemical
    equations

20
Stoichiometric yield coefficients
  • Models describing biochemical reactions use
    stoichiometric yield coefficients to determine
    how much product (or biomass) will be produced
    from each unit of reactant or substrate utilized.
  • Yield coefficients describe how efficiently a
    reactant is converted into a product or biomass.
    The formation of lactic acid from glucose can be
    represented as
  • The yield of lactate from glucose (YLG) is 2
    moles of lactate (L) per mole of glucose (G). The
    relationship between lactate formation and
    glucose utilization would be

21
Chemical kinetic equations as mathematical models
  • Chemical reactions are similarly simplified. For
    example, a first order chemical reaction in which
    1 mole of reactant (S) is converted to a product
    (P)
  • S n P
  • Can be expressed as a differential equation of
    the form
  • dS kS
  • dt
  • where S is the concentration of the reactant
    and k is a rate constant.

22
Chemical kinetic equations as mathematical models
  • Note that for this reaction, a differential
    equation describing product formation is
  • where P is the concentration of the product and
    n is the stoichiometric yield constant describing
    the relationship between the removal of S and
    formation of P.
  • Note that as the concentration of S decreases,
    the concentration of P increases.
  • By solving this equation, it is possible to
    predict the values of S and P at any time.

23
The Michaelis Menten Model as a Mathematical Model
  • In enzyme studies, you will have learnt the
    Michaelis Menten equation which is a mathematical
    model describing activity of many different
    enzymes
  • where S is the substrate concentration, V is
    the rate of substrate removal, Vmax is the
    maximum specific rate and Km is the saturation
    constant.
  • The Michaelis Menten equation describes the rate
    of substrate breakdown by an enzyme and can be
    written as a differential equation

24
The Monod model and the Michaelis Menten model
The Monod Model looks similar to the Michaelis
Menten equation.
25
The Monod model and the Michaelis Menten model
  • The parameters µm and Ks are analogous to Vmax
    and Km. Both models predict that only when the
    concentration of a rate limiting substrate or
    nutrient becomes limiting, then the reaction rate
    will slow.
  • There is however one very distinct difference
    between the two models.
  • The Michaelis Menten equation was derived using
    the mechanism of enzyme action as a basis.
  • The Monod Model in contrast is used because it
    fits the typical curve shown in previous slide.
  • The Monod Model is therefore classified as an
    emperical model (based on experience or
    observational information and not necessarily on
    proven scientific data), while the Michaelis
    Menten equation is a mechanistic model.

26
Monod Model
  • Monod's model describes the relationship between
    the specific growth rate and the growth limiting
    substrate concentration as
  • where µm is the maximum specific growth rate and
    Ks is a saturation constant.
  • Despite its empirical nature Monod's model is
    widely used to describe the growth of many
    organisms. Basically because it does adequately
    describe fermentation kinetics.
  • Model has been modified to describe complex
    fermentation systems.

27
A simple mathematical model of a fermentation
process
  • Thus far, we have a model which describes biomass
    formation
  • However to complete the model, equations for
    substrate utilization and product formation need
    to be developed.
  • If biomass formation and product formation are
    assumed to be directly linked to substrate
    utilization by yield coefficients, therefore
  • Note the negative signs used. Substrate
    concentrations decrease during a fermentation and
    thus dS/dt has a negative value. In contrast,
    biomass and product concentrations generally
    increase in value.

28
Why solve the model?
  • When the model is solved numerically, a number of
    curves are obtained.
  • With the model, it is possible for example, to
    determine the number of fermentations that can be
    performed per year and consequently, the amount
    of profit that can be made.

29
Assumptions and constraints
  • Monod model represents a very simple model of
    cell growth and product formation. However,
    fermentation processes are often much more
    complex.
  • Modifications to the Monod model, may need to be
    introduced to handle more complicated systems.
    Additional equations would be required to handle
    multiple products and multiple organisms.
  • The model has also assumed that product formation
    is linked to biomass growth ie. growth
    associated. In reality, many commercially
    important products are produced in a non-growth
    associated manner.
  • The model assumes that biomass and product
    formation can be represented by averaged yield
    coefficients.
  • These assumptions may sometimes be an
    oversimplification and such a model would give
    unrealistic results.

30
Kinetic Models
  • The basis of kinetic modelling is to express
    functional relationships between the forward
    reaction rates and the levels of substrates,
    metabolic products, biomass constituents,
    intracellular metabolites and / or biomass
    concentration
  • Models vary with degree of complexity
  • Structured models
  • Model divides cell mass into components (by
    molecule or by element) and predicts how these
    components change as a result of growth. These
    models are very complex and not used very often.
  • Unstructured models
  • Models presume balanced growth where cell
    components do not change with time. Much less
    complex and much more commonly used. Valid for
    batch growth during exponential growth phase and
    also for continuous culture during steady state
    growth.

31
Bioreactor Modeling Terminology
  • Structured vs. unstructured
  • Structured detailed intracellular description
  • Unstructured - simple intracellular description
  • Segregated vs. unsegregated
  • Segregated differentiate individual cells
  • Unsegregated treat all cells as equivalent

32
Unstructured Growth Models
  • General characteristics
  • Simple description of cell growth product
    formation rates
  • No attempt to model intracellular events
  • Specific growth rate
  • Yield coefficients
  • Biomass/substrate YX/S -DX/DS
  • Product/substrate YP/S -DP/DS
  • Product/biomass YP/X DP/DX
  • Approximated as constants

33
Structured Metabolic Models
  • General characteristics
  • Mechanistic description of cell growth product
    formation rates
  • Detailed modeling of intracellular reactions
  • Advantages
  • Sound theoretical basis
  • Superior predictive capabilities
  • Extensible to new culture conditions cell
    strains
  • Disadvantages
  • Requires detailed knowledge of cellular
    metabolism
  • Experimentally intensive
  • Difficult to formulate

34
Deterministic v Stochastic modelling
  • Deterministic
  • Pertaining to a process, model, simulation or
    variable whose outcome, result, or value does not
    depend upon chance
  • Stochastic
  • Applied to processes that have random
    characteristics

35
Model types
  • 1) STOCHASTIC - considers individual cells
    (example - the distribution of plasmids within
    the individual cells in a culture)
  • 2) DETERMINISTIC - considers cell mass, can be
  • (i) distributed - cell mass part of the culture
  • (ii) segregated - separate phase (e.g. model of
    mass transfer)
  • (iii) structured - total biomass considered as
    sum of two or more components (e.g. series of
    enzyme reactions)
  • (iv) unstructured

36
Deterministic v Stochastic modelling
  • In a description of cellular kinetics macroscopic
    (designating a size scale very much larger than
    that of atoms and molecules) balances are
    normally used, i.e the rates of the cellular
    reactions are functions of average concentrations
    of the intracellular components
  • Many cellular processes are stochastic in nature
    so assigning deterministic descriptions to them
    is incorrect
  • However the application of macroscopic or
    (deterministic) description is convenient and
    represents a typical engineering approximation
    for describing the kinetics in an average cell in
    a population of cells

37
  • Thus kinetics must be expressed at different
    levels
  • 1. Molecular or enzyme level i.e. rate of a
    single enzyme reaction
  • 2. Macromolecular or cellular components i.e. RNA
    or ribosome synthesis, plasmid segregation.
  • 3. Cellular level i.e. substrate uptake, biomass
    production.
  • 4. Population level (Logistic / Gompertz Eqs)
    i.e. competition between two cultures.
  • 5. Process level i.e. amount of product produced
    after fermentation and efficiency of recovery
    linked to cost, length of lag phase, secondary vs
    primary metabolite

38
Some limitations to above treatment of kinetics
  • The growth kinetics above generally refer to
    exponential rates - not always applicable to
    microbial systems e.g. hyphae.
  • Also exponential growth is the major process in
    the fermenter (most of the production phase re
    cell growth) however in other areas such as
    shelf-life predictions other phases may dominate
    (for example the lag phase - if cells are damaged
    during food "preservation"). Thus in this latter
    case kinetics must concentrate on other phases of
    the growth curve - the concept of the logistic or
    gompertz equations become important.
  • Equally in the case of secondary metabolites the
    concept of trophophase and idiophase must be
    considered re kinetic treatments. In this case
    the focus is on the effect of m on product
    formation.

39
Kinetics Of Product Formation
  • Product formation can be independent of growth
    rate and thus is only influenced by the amount of
    biomass present.
  • The kinetic treatment is usually simplified to
    calculation of yield. Effectively the amount of
    product parallels the amount of biomass e.g.
    ethanol produced by yeast.
  • However to obtain a clear picture one must
    consider amount of product produced as a function
    of the amount of biomass present (or the amount
    of substrate consumed) but also as a function of
    time.
  • For example 50 yield of product per unit
    substrate in 6 hours or 90 yield in 6 years !! -
    which is more efficient to the industrialist?

40
Summary of Models
  • Cyclical - involves formulation of a
    hypothesis, then experimental design followed by
    experiments and analysis of results, which
    ideally should further advance the original
    hypothesis. Thus the cycle is repeated etc.
  • Models are
  • set of hypotheses based on mathematical
    relations between measurable quantities within
    the system
  • used to (a) correlate data, (b) predict
    performance
  • generated by a combination of processes ranging
    from well established principles to educated
    guesses
  • tested by (a) comparison of predicted vs
    observed results (b) curve fitting - analysis of
    patterns

41
  • Summary of model development
  • Simplification of system - identify factors
    having an effect on overall behaviour. It is the
    foundation of project design, management and
    monitoring and it is the first part of a
    complete project plan
  • CONCEPTUAL MODEL
  • Correlate performance data - empirical
    mathematical relationships (black-box)
  • EMPIRICAL MODEL
  • Support relationships with theory - more
    fundamental approach
  • MECHANISTIC MODEL (example model of penicillin
    ferm. )

42
Modelling fermentation systems
  • Mathematical modelling of fermentation processes
    has been an intensely researched aspect of
    biotechnology.
  • Using models helps us to better understand the
    complex processes. They allow us to
    systematically analyze these systems and identify
    important variables and parameters.
  • Many complex models have been developed to
    describe complex fermentation systems.
    Unfortunately, more often than not, complex
    models are not used in the design process.
  • Firstly because they take a long time to develop
    and secondly because they use parameters which
    cannot be determined.

43
Summary
  • Mathematical models of fermentation systems are
    generally based on the model which relates the
    specific growth rate and substrate utilization
  • Numerical methods are available and used for
    solving differential equations
  • When applied to fermentation models, the computer
    programs used to implement these methods will
    show how biomass, substrate and product
    concentrations vary with time
  • One important piece of information that
    mathematical models of fermentation systems can
    provide is the time that the fermentation takes
  • This information is important in determining the
    required scale of the process and the potential
    costs and profits

44
Conclusions
  • Fermentation kinetics are determined through
    mathematical models to quantify rate of change in
    a fermentation process
  • Mathematical models must be formulated,
    constructed and solved to yield meaningful data
  • Kinetic modelling can be as complex or as simple
    as you make it
  • Models normally relate to exponential bacterial
    growth
  • Main model types include stochastic and
    deterministic
  • Modelling of fermentations enables process
    operators to determine the time it takes to
    produce a specified product
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