Team:British Columbia/Model1
From 2011.igem.org
Line 7: | Line 7: | ||
</html> | </html> | ||
- | + | I simplified the mevalonate pathway (Ignea et al. 2011) to only enzymes associated with our project – IDI1, HMG2 and ERG20. I created first order Michaelis-Menten differential equations for the simplified chemical reactions. For this, Dr. Eric Lagally referred me to 2 sources: “Writing Differential Equations” (Bourne 2010) and “Chapter 6- Transport and Kinetics” (Jakubowski 2011). However, many constants and concentrations must be known to solve these differential equations. An enzyme database “BRENDA” contains some kcat and km values (Scheer 2011). However, more research must be done to determine the currently unknown constants. These differential equations can be solved in MATLAB to plot monoterpene concentration as a function of substrate or time. | |
- | + | ||
- | I created differential equations | + | |
[[File:MODEL_1_-_Mevalonate_Pathway.jpg | frame | center | The Mevalonate Pathway as found in yeast. ]] | [[File:MODEL_1_-_Mevalonate_Pathway.jpg | frame | center | The Mevalonate Pathway as found in yeast. ]] | ||
Line 15: | Line 13: | ||
Our team wants to mass produce monoterpenes so we... | Our team wants to mass produce monoterpenes so we... | ||
- | 1) | + | 1) Replaced HMG2 with the mutant variant K6R-hmg2, which is stabilized against protein degration (Gardner RG, Hampton RY: A 'distributed degron' allows regulated entry into the ER degradation pathway. Embo J 1999, 18: 5994-6004.) |
- | 2) | + | 2) Replaced ERG20 with the mutant variant K197E erg20-2, which produces "25% FPP and 75% GPP instead of 75% FPP and 25% GPP" as compared to the wildtype ERG20 gene (Monoterpenoid biosynthesis in Saccharomyces cerevisiae.). We want more GPP than FPP because our goal is to produce monoterpenes and not diterpenoids (Pathway engineering for functional isoprenoids.). |
- | 3) | + | 3) Introduced a gene which encodes for a synthase to use GPP to form monoterpenes. We chose 5 different synthases that each produces different monoterpenes in different proportions (Transcriptome mining, functional characterization, and phylogeny of a large terpene synthase gene family in spruce). |
- | + | Based on these changes, I created a modified model: | |
[[File:MODEL_1_-_Simplified_Model_Final.jpg | frame | center | Simplified model of the mevalonate pathway with the K6R-hmg2 and erg20-2 genes.]] | [[File:MODEL_1_-_Simplified_Model_Final.jpg | frame | center | Simplified model of the mevalonate pathway with the K6R-hmg2 and erg20-2 genes.]] | ||
Line 35: | Line 33: | ||
<center> | <center> | ||
- | + | Block diagrams of biochemical pathway for <a href="JavaScript:newPopup('https://static.igem.org/mediawiki/2011/8/86/MODEL_1_-_PsTPS-Pin_Final.jpg');">PsTPS-Pin synthase</a>, <a href="JavaScript:newPopup('https://static.igem.org/mediawiki/2011/8/86/MODEL_1_-_PgTPS-Pin2_Final.jpg');">PgTPS-Pin2 synthase</a>, <a href="JavaScript:newPopup('https://static.igem.org/mediawiki/2011/3/37/MODEL_1_-_PsTPS-Car1_Final.jpg');">PsTPS-Car1 synthase</a>, <a href="JavaScript:newPopup('https://static.igem.org/mediawiki/2011/a/ab/MODEL_1_-_PgxeTPS-Cin_Final.jpg');">PgxeTPS-Cin synthase</a>, <a href="JavaScript:newPopup('https://static.igem.org/mediawiki/2011/b/ba/MODEL_1_-_PgTPS-Cin_Final.jpg');">PgTPS-Cin synthase</a>.</center></html> | |
+ | |||
+ | [[File:MODEL_1_-_Common_EquationsNEW.jpg | frame | center | Common chemical reactions in all products. ]] | ||
At this point, it is important to note 2 things: | At this point, it is important to note 2 things: | ||
+ | |||
1) The enzymes ERG12, ERG8 and MVD1 are NOT RATE LIMITING; therefore, we chose not to include them in our simplified model. However, these enzymes are accounted for in our simulations. | 1) The enzymes ERG12, ERG8 and MVD1 are NOT RATE LIMITING; therefore, we chose not to include them in our simplified model. However, these enzymes are accounted for in our simulations. | ||
- | 2) The RATE LIMITING STEP at | + | 2) The RATE LIMITING STEP is at <html><a href="http://www.yeastgenome.org/cgi-bin/locus.fpl?locus=hmg2">HMG2</a></html>. |
- | + | We are using 5 different synthases for which tests have been performed in vitro: | |
- | Synthase PgTPS-Pin2 catalyzes GPP into producing 70.5% β-pinene and 29% α-pinene + other | + | Synthase PgTPS-Pin2 catalyzes GPP into producing 70.5% β-pinene and 29% α-pinene + other monoterpenes in negligible amounts. |
- | Synthase PsTPS-Car1 catalyzes GPP into producing 66.4% 3-carene and 2.7% α-pinene + other | + | Synthase PsTPS-Car1 catalyzes GPP into producing 66.4% 3-carene and 2.7% α-pinene + other monoterpenes in negligible amounts. |
- | Synthase PgxeTPS-Cin catalyzes GPP into producing 65.6% 1,8 cineole, 3.0% α-pinene and 2.6% β-pinene + other | + | Synthase PgxeTPS-Cin catalyzes GPP into producing 65.6% 1,8 cineole, 3.0% α-pinene and 2.6% β-pinene + other monoterpenes in negligible amounts. |
- | Synthase PgTPS-Cin catalyzes GPP into producing 81.1% 1,8 cineole, 1.9% α-pinene and 1.9% β-pinene + other | + | Synthase PgTPS-Cin catalyzes GPP into producing 81.1% 1,8 cineole, 1.9% α-pinene and 1.9% β-pinene + other monoterpenes in negligible amounts. |
- | Synthase PsTPS-Pin catalyzes GPP into producing 83.4% α-pinene and 12.6% β-pinene + other | + | Synthase PsTPS-Pin catalyzes GPP into producing 83.4% α-pinene and 12.6% β-pinene + other monoterpenes in negligible amounts. |
Source: Transcriptome mining, functional characterization, and phylogeny of large terpene synthase gene family in spruce (Picea spp.) | Source: Transcriptome mining, functional characterization, and phylogeny of large terpene synthase gene family in spruce (Picea spp.) | ||
- | |||
- | |||
- | |||
- | |||
- | |||
Now, I needed to model these chemical equations as a series of differential equations. As an engineer, I don't have a biochemistry background so this problem was new for me. This <html><a href="http://www.boomer.org/c/p3/c02/c0207.html">website</a></html> provided the basics to get started. 2 things to take into account are: | Now, I needed to model these chemical equations as a series of differential equations. As an engineer, I don't have a biochemistry background so this problem was new for me. This <html><a href="http://www.boomer.org/c/p3/c02/c0207.html">website</a></html> provided the basics to get started. 2 things to take into account are: |
Revision as of 06:14, 25 September 2011
MODEL 1: Secretion and Production of Monoterpenes in Yeast
OBJECTIVE: To create a model to assay the production of monoterpenes in our genetically engineered yeast cells given that they contain the metabolic genes IDI1, K6R-hmg2, erg20-2 and a monoterpene synthase. Model Creator: Gurpal Bisra
I simplified the mevalonate pathway (Ignea et al. 2011) to only enzymes associated with our project – IDI1, HMG2 and ERG20. I created first order Michaelis-Menten differential equations for the simplified chemical reactions. For this, Dr. Eric Lagally referred me to 2 sources: “Writing Differential Equations” (Bourne 2010) and “Chapter 6- Transport and Kinetics” (Jakubowski 2011). However, many constants and concentrations must be known to solve these differential equations. An enzyme database “BRENDA” contains some kcat and km values (Scheer 2011). However, more research must be done to determine the currently unknown constants. These differential equations can be solved in MATLAB to plot monoterpene concentration as a function of substrate or time.
Our team wants to mass produce monoterpenes so we...
1) Replaced HMG2 with the mutant variant K6R-hmg2, which is stabilized against protein degration (Gardner RG, Hampton RY: A 'distributed degron' allows regulated entry into the ER degradation pathway. Embo J 1999, 18: 5994-6004.)
2) Replaced ERG20 with the mutant variant K197E erg20-2, which produces "25% FPP and 75% GPP instead of 75% FPP and 25% GPP" as compared to the wildtype ERG20 gene (Monoterpenoid biosynthesis in Saccharomyces cerevisiae.). We want more GPP than FPP because our goal is to produce monoterpenes and not diterpenoids (Pathway engineering for functional isoprenoids.).
3) Introduced a gene which encodes for a synthase to use GPP to form monoterpenes. We chose 5 different synthases that each produces different monoterpenes in different proportions (Transcriptome mining, functional characterization, and phylogeny of a large terpene synthase gene family in spruce).
Based on these changes, I created a modified model:
At this point, it is important to note 2 things:
1) The enzymes ERG12, ERG8 and MVD1 are NOT RATE LIMITING; therefore, we chose not to include them in our simplified model. However, these enzymes are accounted for in our simulations.
2) The RATE LIMITING STEP is at HMG2.
We are using 5 different synthases for which tests have been performed in vitro:
Synthase PgTPS-Pin2 catalyzes GPP into producing 70.5% β-pinene and 29% α-pinene + other monoterpenes in negligible amounts.
Synthase PsTPS-Car1 catalyzes GPP into producing 66.4% 3-carene and 2.7% α-pinene + other monoterpenes in negligible amounts.
Synthase PgxeTPS-Cin catalyzes GPP into producing 65.6% 1,8 cineole, 3.0% α-pinene and 2.6% β-pinene + other monoterpenes in negligible amounts.
Synthase PgTPS-Cin catalyzes GPP into producing 81.1% 1,8 cineole, 1.9% α-pinene and 1.9% β-pinene + other monoterpenes in negligible amounts.
Synthase PsTPS-Pin catalyzes GPP into producing 83.4% α-pinene and 12.6% β-pinene + other monoterpenes in negligible amounts.
Source: Transcriptome mining, functional characterization, and phylogeny of large terpene synthase gene family in spruce (Picea spp.)
Now, I needed to model these chemical equations as a series of differential equations. As an engineer, I don't have a biochemistry background so this problem was new for me. This website provided the basics to get started. 2 things to take into account are:
1) The direction of the arrow: -if the arrow goes into a component, the equation segment is positive -if the arrow leaves a component, the equation segment is negative
2) Types of Rate Processes -if the rate process is zeroth order, just enter the rate constant -if the rate process i first order, multiply the rate constant by the initial substrate concentration -for a Michaelis-Menten process, include the amount or concentration of the component at the tail of the arrow (call it X1 for example) and you will get: d(X1)/dt = (-Vm*X1)/(Km+X1)
Most of the equations fall under the main 2 types of Michaelis–Menten equations:
For the first type of reaction, I had to make 2 assumptions:
1) At steady state, [ES] does not change with time, therefore it's derivative with time is = 0. Therefore, k1[E][S] = (k2+k3)[ES]
2) S >> Eo
The second type of Michaelis-Menten kinetic equation applies to cases where I have 2 substrates combining into 1 product via a condensation reaction; DMA-PP and I-PP are condensed to generate geranyl diphosphate (GPP, C10), which is further converted with IPP into ferensyl diphosphate (FPP, C15), with prenyl transferase such as FPP synthase (Pathway engineering for functional isoprenoids.).
Below is the 2 step reaction which shows the catalyzation via FPP synthase,
To model these types of reactions, I found an expression for the reaction velocity to be: v = d(X)/dt = (Vmax)/( (kms1/[S1]) + (kms2/[S2]) + 1 ) where [S1] = concentration of substrate 1, [S2] = concentration of substrate 2. They have an associated kinetic value. Vmax = kcat*[E] where [E] = the concentration of enzyme.
The final thing I needed to consider before writing out the differential equations was how to use data indicating what percentage of monoterpenes were produced. These final steps also took the form of the Michaelis-Menten equations but I modified them by multiplying each by the fraction of product produced. For example, please look at equations 10 and 12 in the differential equations below to see fraction of products are produced for the PgTPS-Pin2 synthase.
These are the differential equations that are common to each biochemical pathway:
The differential equations specific to the PsTPS-Pin synthase, PgTPS-Pin2 synthase, PsTPS-Car1 synthase, PgxeTPS-Cin synthase, PgTPS-Cin synthase.