Metabolic engineering is the practice of optimizing genetic and
regulatory processes within cells
to increase the cells' production of a certain substance. These processes are
chemical networks that use a series of biochemical reactions and enzymes that
allow cells to convert raw materials into molecules necessary for the cell’s
survival. Metabolic engineering specifically seeks to mathematically model
these networks, calculate a yield of useful products, and pin point parts of
the network that constrain the production of these products.
Genetic engineering techniques can then be used
to modify the network in order to relieve these constraints. Once again this
modified network can be modeled to calculate the new product yield.
The ultimate goal of metabolic engineering is to be able to
use these organisms to produce valuable substances on an industrial scale in a
cost effective manner. Current examples include producing beer, wine, cheese, pharmaceuticals,
and other biotechnology products.
Since cells use these metabolic networks for their survival,
changes can have drastic effects on the cells' ability to survive. Therefore,
trade-offs in metabolic engineering arise between the cells ability to produce
the desired substance and its natural survival needs. Therefore, instead of
directly deleting and/or overexpressing the genes that encode for metabolic
enzymes, the current focus is to target the regulatory networks in a cell to
efficiently engineer the metabolism.
History and applications of metabolic engineering
In the past, to increase the productivity of a desired metabolite,
a microorganism
was genetically modified by chemically induced mutation, and
the mutant strain that overexpressed the desired metabolite
was then chosen.
However, one of the main problem with this technique was that the metabolic
pathway for the production of that metabolite was not analyzed, and as a
result, constraints to production and relevant pathway enzymes to be modified
were unknown.
In 1990s, a new technique called metabolic engineering emerged. This technique
analyzes the metabolic pathway of a microorganism,
and determines the constraints and their effects on the production of desired
compounds. It then uses genetic engineering to relieve these constraints. Some
examples of successful metabolic engineering are the following: (i)
Identification of constraints to lysine production in corynebacterium
glutamicum and insertion of new genes to relieve these constraints to
improve production
(ii) Engineering of a new fatty acid biosynthesis pathway, called
reversed beta oxidation pathway, that is more efficient than
the native pathway in producing fatty acids and alcohols which can potentially
be catalytically converted to chemicals and fuels
(iii) Improved production of DAHP an aromatic
metabolite produced by E.coli that is an intermediate in the production
of aromatic amino acids.
It was determined through metabolic flux analysis that the theoretical maximal
yield of DAHP per glucose molecule utilized, was 3/7. This is because some of
the carbon from glucose is lost as carbon dioxide, instead of being utilized to
produce DAHP. Also, one of the metabolites (PEP, or phosphoenolpyruvate) that are used to produce
DAHP, was being converted to pyruvate (PYR) to transport glucose into the cell, and
therefore, was no longer available to produce DAHP. In order to relieve the
shortage of PEP and increase yield, Patnaik et al. used genetic engineering on E.coli
to introduce a reaction that converts PYR back to PEP. Thus, the PEP used to
transport glucose into the cell is regenerated, and can be used to make DAHP.
This resulted in a new theoretical maximal yield of 6/7 - double that of the
native E.coli system.
At the industrial scale, metabolic engineering is becoming
more convenient and cost effective. According to the Biotechnology Industry Organization,
" more than 50 biorefinery facilities are being built across North
America to apply metabolic engineering to produce biofuels and chemicals from
renewable biomass
which can help reduce greenhouse gas emissions ". Potential biofuels
include short-chain alcohols and alkanes (to replace gasoline), fatty acid methyl esters and fatty
alcohols (to replace diesel), and fatty acid-and
isoprenoid-based
biofuels (to replace diesel).
Metabolic flux analysis
An analysis of metabolic flux can be found at Flux balance analysis
Setting up a metabolic pathway for analysis
The first step in the process is to identify a desired goal
to achieve through the improvement or modification of an organism's metabolism.
Reference books and online databases are used to research reactions and
metabolic pathways that are able to produce this product or result. These
databases contain copious genomic and chemical information including pathways
for metabolism and other cellular processes. Using this research, an organism
is chosen that will be used to create the desired product or result.
Considerations that are taken into account when making this decision are how
close the organism's metabolic pathway is to the desired pathway, the maintenance
costs associated with the organism, and how easy it is to modify the pathway of
the organism. Escherichia coli (E. coli) is widely used in metabolic
engineering to synthesize a wide variety of products such as amino acids
because it is relatively easy to maintain and modify.
If the organism does not contain the complete pathway for the desired product
or result, then genes that produce the missing enzymes must be incorporated
into the organism.
Analyzing a metabolic pathway
The completed metabolic pathway is modeled mathematically to
find the theoretical yield of the product or the reaction fluxes in the cell. A
flux is the rate at which a given reaction in the network occurs. Simple
metabolic pathway analysis can be done by hand, but most require the use of
software to perform the computations.
These programs use complex linear algebra algorithms to solve these models. To
solve a network using the equation for determined systems shown below, one must
input the necessary information about the relevant reactions and their fluxes.
Information about the reaction (such as the reactants and stoichiometry) are
contained in the matrices Gx and Gm. Matrices Vm
and Vx contain the fluxes of the relevant reactions. When solved,
the equation yields the values of all the unknown fluxes (contained in Vx).
Determining the optimal genetic manipulations
After solving for the fluxes of reactions in the network, it
is necessary to determine which reactions may be altered in order to maximize
the yield of the desired product. To determine what specific genetic
manipulations to perform, it is necessary to use computational algorithms, such
as OptGene or OptFlux.
They provide recommendations for which genes should be overexpressed, knocked
out, or introduced in a cell to allow increased production of the desired
product. For example, if a given reaction has particularly low flux and is
limiting the amount of product, the software may recommend that the enzyme
catalyzing this reaction should be overexpressed in the cell to increase the
reaction flux. The necessary genetic manipulations can be performed using
standard molecular biology techniques. Genes may be overexpressed or knocked
out from an organism, depending on their effect on the pathway and the ultimate
goal.
Experimental measurements
In order to create a solvable model, it is often necessary
to have certain fluxes already known or experimentally measured. In addition,
in order to verify the effect of genetic manipulations on the metabolic network
(to ensure they align with the model), it is necessary to experimentally
measure the fluxes in the network. To measure reaction fluxes, carbon flux
measurements are made using carbon-13
isotopic labeling.
The organism is fed a mixture that contains molecules where specific carbons
are engineered to be carbon-13 atoms, instead of carbon-12. After these
molecules are used in the network, downstream metabolites also become labeled
with carbon-13, as they incorporate those atoms in their structures. The
specific labeling pattern of the various metabolites is determined by the
reaction fluxes in the network. Labeling patterns may be measured using
techniques such as Gas chromatography-mass
spectrometry (GC-MS) along with computational algorithms to determine
reaction fluxes.
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Friday, 19 September 2014
Metabolic engineering / REF / 703 / 2014
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