Team:Tsinghua/Modeling
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{{Tsinghua/Header2}} | {{Tsinghua/Header2}} | ||
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- | =GenSniper Production Modeling= | + | =Introduction= |
- | == | + | Our wetlab design is subdivided into three interrelated modules ('''in parallel''') according to the BioBrick principle. In contrast, our drylab design is '''in line'''. Three subdividions are proposed, with one of them just outlined due to lack of experimental evidence. |
- | === | + | |
- | [[Image:diagram phage.jpg|center]] | + | [[Image:dryoutline.png|800px|center|thumb|Modeling Scheme]] |
- | In a simple model, the assembly of proteins are considered negligible compared with the time of transcription and translation of these proteins precursors. The amount of | + | |
+ | =SynGenome Based GenSniper Production Modeling= | ||
+ | In this part, we will use mathematical methods(by solve a set of ODEs with proper parameters) to predict the amount of GenSnipers we can get in a given time(the zero point for time is set as the time when IPTG is added in). This model can inform us whether our system is efficient in industry production. | ||
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+ | ==Bottom-Up Strategy== | ||
+ | [[Image:BU.png|800px|center|thumb|Bottom-Up approach]] | ||
+ | |||
+ | ===Diagram of dynamic process=== | ||
+ | This figure is generated by Sim biology in matlab as a diagram of production modeling in phage vectors production | ||
+ | [[Image:diagram phage.jpg|center|600px|thumb|Production modeling in vector production]] | ||
+ | In a simple model, the assembly of proteins are considered negligible compared with the time of transcription and translation of these proteins precursors. The amount of product is the smaller one of the amount of package proteins of phage and the amount of targeted DNA ( to be packaged by phage) per bacterial cell. | ||
- | === | + | ===Results=== |
[[Image:result1111.jpg|600px|center]] | [[Image:result1111.jpg|600px|center]] | ||
Beginning with 50 plasmid per cell, the protein amount comes into equilibrium between synthesis and degradation about 10 hours later. The steady state amount of package proteins can reach the amount of about 10 in the orders of 7, given the parameters as showed in the figure, which means it is enough for packaging target DNAs. | Beginning with 50 plasmid per cell, the protein amount comes into equilibrium between synthesis and degradation about 10 hours later. The steady state amount of package proteins can reach the amount of about 10 in the orders of 7, given the parameters as showed in the figure, which means it is enough for packaging target DNAs. | ||
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[[Image:result1112.jpg|600px|center]] | [[Image:result1112.jpg|600px|center]] | ||
- | === | + | ===Paratmeters=== |
- | r_Translation 0.0833/second | + | Protein tranaslation rate: r_Translation 0.0833/second |
- | T7_trsc | + | T7promoter transcription rate: T7_trsc 5.0/second |
- | d_protein 1.93E-4/second | + | protein degradation rate: d_protein 1.93E-4/second |
- | d_mRNA 0.00578/second | + | mRNA degradation rate: d_mRNA 0.00578/second |
- | == | + | ==Top-Down Strategy== |
+ | [[Image:TD2132.png|800px|center|thumb|Top-Down approach]] | ||
- | Q protein is a native λ phage protein which regulates λ phage's late gene transcription. In our system, Q protein is transcripted under regulation of T7 promomter then regulates the transcription of λ phage package protein through its anti-termination property to | + | Q protein is a native λ phage protein which regulates λ phage's late gene transcription. In our system, Q protein is transcripted under regulation of T7 promomter then regulates the transcription of λ phage package protein through its anti-termination property to R'promoter. In this modeling section, we'll predict how much package proteins we will get using Pr'-Q regulatioin system. |
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+ | [[Image:Q.jpg|500px|center|thumb|Top-Down model outline]] | ||
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+ | |||
+ | ===Reaction kinetics=== | ||
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the production of Q protein | the production of Q protein | ||
[[Image:Q_protein1.gif]] | [[Image:Q_protein1.gif]] | ||
- | the production of target package proteins when | + | the production of target package proteins when R' promoter is fully activated |
[[Image:Q_protein2.gif]] | [[Image:Q_protein2.gif]] | ||
- | Q protein's influence on | + | Q protein's influence on R' promoter activity |
[[Image:Q_protein3.gif]] | [[Image:Q_protein3.gif]] | ||
- | + | As indicated in Ref(13), the Hill coefficient fitted by experiment is 6.4-3.3~6.4+3.3, which means that Q protein is very efficient in antitermination. As we don't know exactly the other parameters in this function, so we can not mimic Q protein's regulation effect for R' promoter dynamically, instead we suppose when 90% percent of Q protein have been reached, the R' promoter is fully activated | |
- | + | ||
- | + | ===Parameters=== | |
- | '''k'''<sub> | + | T7 promoter transcription rate '''k'''<sub>t7</sub> = 5 molecule/second |
- | ''' | + | R' promoter transcription rate '''k'''<sub>pr'</sub>= 20 molecule/second (estimated according to the fact that it is faster than T7) |
- | ''' | + | mRNA degradation rate '''d'''<sub>m</sub> = 0.05 molecule/second |
- | ''' | + | protein translation rate '''k'''<sub>q</sub> = 0.1 molecule/second |
- | ''' | + | protein degradation rate '''d'''<sub>Q</sub> = 0.003 molecule/second |
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- | === | + | ===Results=== |
- | + | This is the Q protein level changing with time. When time= 1000s , 90% Q protein versus maximum amount haven been produced. At this time point, we assume that R' promoter is fully activated. | |
+ | [[Image:Q-result1.jpg|center]] | ||
+ | This figure is the Q protein level versus time, notice the zero point of time axis is set to the time point that R' promoter is fully activated. | ||
+ | [[Image:Q-result2.jpg|center]] | ||
+ | |||
+ | Defining the time of adding IPTG as t=0, the simulated Q concentration increases with the structral proteins. When t≈2000s, the desired proteins reach a maximum and their growth rate decrease, when the lytic apparatus is designated to open. The entire lytic cycle lasts 35 min, which is much shorter than the Bottom-Up strategy and in the same order with the wildtype bacteriophage lambda production. | ||
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+ | This modeling result matches our project design, where Top-Down approach uses the same transcription strategy (promoter R') as the wildtype lambda genome and Bottom-Up approach uses a engineered one (promoter T7). | ||
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+ | At the steady state, the concentration of the structral proteins reach at 1.3×10^4. Assuming that there are 420 D or E major structral protein on the surface of one GenSniper viroin, the packaged viroin number is 3.0×10^1 per cell, which is near to the wildtype bacteriophage lambda packaging. When the density of the cells is 10 in the orders of 9, the titer of synthetic GenSniper will be 3.0×10^10 Therapeutic DNA/ml, which also meets the standard for industrialization. | ||
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+ | Coupled with our wetlab observation, we outlined a production procedure regarding both Bottome-Up and Top-Down GenSniper Genome. | ||
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+ | [[Image:productionap.jpg|center|thumb|800px|Production Scheme of GenSniper]] | ||
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+ | =Plasmid GenSniper Production Modeling= | ||
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+ | One of our subproject is the use nakes plasmid bound with a specified protein as the vector of gene therapy DNA. The normal replication process of plasmid will be disrupted due to the binding of specified protein(in our model,lambda repressor). If the protein has a high affinity with the plasmid we will have more fraction of plasmid protein complex however with less plasmid substrates. Considering production of the plasmid protein complex, we want to maxize the amounts of plasmid protein complex, so a balance between the amounts of plasmid and protein is needed. In this model, we want to find out the optimized parameters for this plasmid vector production process. | ||
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+ | [[Image:TargetedBiobrick2220.png|600px|center|thumb|Plasmid GenSniper project design]] | ||
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== Dimmer formation and dissociation between λ rep-fiber == | == Dimmer formation and dissociation between λ rep-fiber == | ||
*[[Image:Eqn8.gif]] | *[[Image:Eqn8.gif]] | ||
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'''k'''<sub>doff</sub> =0.5/sec | '''k'''<sub>doff</sub> =0.5/sec | ||
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<br> | <br> | ||
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Gibbs free energy. We give all the three unbinding rate of cI dimer from three kinds of binding sites to find out the best site we want to use in the experiment. | Gibbs free energy. We give all the three unbinding rate of cI dimer from three kinds of binding sites to find out the best site we want to use in the experiment. | ||
- | == | + | ==Replication of plasmid== |
- | + | plasmid replication is a complex process, here we use decay rate replication as a simplified model to mimic negative regulation. Three general classes of regulatory mechanisms have been studied in depth, namely those that involve directly repeated sequences (iterons), those that use only antisense RNAs and those that use a mechanism involving an antisense RNA in combination with a protein. For more detailed info about ''Control of plasmid replication and copy-number'': [http://www.sci.sdsu.edu/~smaloy/MicrobialGenetics/topics/plasmids/plasmid-repln.html] . An detailed mathematical model is described in (12) | |
<br> | <br> | ||
*[[Image:Eqn3.gif]] | *[[Image:Eqn3.gif]] | ||
- | + | Suppose in the steady sate, the total number of plasmid per cell is a, and we will get | |
- | plasmid | + | |
+ | *[[Image:Eqn10.gif]] | ||
+ | We set a = 20 as usually the case in experiments, and λ = 0.001 (so that the time to get to steady state is 1000) and r = 15000 so that the initial amount of plasmid per cell is 5. | ||
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+ | Here's the figure of the number of plasmid per cell versus time without protein binding module. | ||
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+ | *[[Image:plasmid_ori.gif|600px]] | ||
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<br> | <br> | ||
The transcription of λ rep-fiber, notice that λ rep-fiber is coded in the plasmid, so the copy number of plasmid will affect the amount of λ rep-fiber. | The transcription of λ rep-fiber, notice that λ rep-fiber is coded in the plasmid, so the copy number of plasmid will affect the amount of λ rep-fiber. | ||
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The half-life of widetype λ repressor is 60 mins (10), however, with degradation tag, it could be as short as 4 min (11). | The half-life of widetype λ repressor is 60 mins (10), however, with degradation tag, it could be as short as 4 min (11). | ||
- | == | + | ==Plasmid-protein complex affect plasmid replication== |
+ | If a replication is already initiated but when the replication forks meet a lamda protein on the way, this replication will be aborted. So only when replication forks pass the protein binding point without lamda protein there, the replication processes are effective. This is a simplified model on how plasmid-protein complex affect plasmid replication, we will try to find out some more detailed mechanisms in the future. | ||
+ | The probability of a plasmid to become a protein-DNA complex is: | ||
+ | *[[Image:Eqn6.gif]] | ||
+ | Because of the DNA-protein complex, the effective replication rate of plasmid is | ||
+ | *[[Image:Eqn7.gif]] | ||
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+ | == Numerical simulation == | ||
+ | According to the previous analysis, the parameters which we can manipulate in the experiment is protein binding affinity(by choosing different binding sites) and protein degradation rate(by adding degradation tag). Here is the simulation results with a parameter of k and kdp | ||
+ | *[[Image:pp_result1.gif|center|900px]] | ||
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+ | == Parameter dependency == | ||
+ | final product plasmid_protein complex we got by using different protein_binding sites and protein degradation rates: | ||
+ | |||
+ | *[[Image:pp_3.gif|center]] | ||
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+ | We can see that higher binding affinity favors the final production of plasmid vectors(plasmid-protein complex). And the influence of protein degration rate is a little ambiguous: fast degradation may either favor or adverse to the production of plasmid vectors (compare when k= 0.021/1.626 and 0.021/5.197)according to the protein binding affinity. After all, both of the influence of protein binding affinity and protein degradation rate is minor and the binding of protein doesn't change the nature replication process much. | ||
+ | |||
+ | == Conclusions == | ||
+ | According to the analysis in the modeling section, we find that different parameters such as protein binding affinity and protein degradation rate won't affect the amount of the target protein significantly in the range of experimental values. However, it does give us the clue that protein with higher affinity and moderate degradation rate is suitable for large scale industry production. | ||
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+ | =Molecular Docking for Targeted Biobrick= | ||
+ | [[Image:receptor.jpg|600px|center|thumb|Integrin structure]] | ||
+ | [[Image:fiber.jpg|700px|center|thumb|Fiber structure]] | ||
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+ | We used ZDOCK software to conduct the molecular docking day experiment. In the generated docking graph, the ligand (we used the crystalized fiber protein to substitute the targeted biobrick) and the receptor (integrin) are both in a stretched confirmation in which the spacial clash is relatively small. Moreover, in the fiber confirmation, the positions for both RGD domain and cell-specific peptide are exposed to the surface to faciliate the specific interaction with the cell specific receptor and integrin. | ||
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+ | =Outline of SynGenome Based GenSniper Intercellular Trafficking Modeling= | ||
+ | Since the intercellular process of GenSniper is quite complicated, we just outline a model for this process according to the established modeling on adenovirus. | ||
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+ | [[Image:interce.jpg|900px|center|thumb|Intercellular Trafficking Mechanism of GenSniper]] | ||
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+ | According to the adenovirus trafficking model, GenSniper enters the cell from the top. In the nuclear region (r , RN), it can only diffuse. In the cytoplasmic region (RN , r , RC), GenSniper intermittently switches between diffusion and motor-assisted transport. As an approximation, we can assume uniform concentration of endosomal and cytosolic GenSnipers along the vertical direction. | ||
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+ | [[Image:interce2.jpg|600px|center|thumb|Schematic representation of a model cell for GenSniper trafficking]] | ||
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+ | [[Image:interce3.jpg|600px|center|thumb|Transition map of GenSniper trafficking]] | ||
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+ | As for this model, it is of note that the nuclear localization signal has not been incorporated into GenSniper. Thus, the trafficking process is hard to predict. Since naked plasmid can also work even without such signals and protein capsid, the design of GenSniper without such signals seems to be OK. In addition, as for a newly proposed approach, this design is recommended for a well-defined wetlab system and a simplified modeling. As for practical use, the NLS is highly recommended to be added by phage display on E of lambda head. | ||
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+ | [[Image:interce4.jpg|700px|center|thumb|GenSniper Intracellular trafficking model can be ensured by display NLS sequence on E]] | ||
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+ | =References= | ||
[1] Burz, D.S., et al., ''Self-assembly of bacteriophage lambda cI repressor: effects of single-site mutations on the monomer-dimer equilibrium.'' Biochemistry, 1994. '''33'''(28): p. 8399-405. | [1] Burz, D.S., et al., ''Self-assembly of bacteriophage lambda cI repressor: effects of single-site mutations on the monomer-dimer equilibrium.'' Biochemistry, 1994. '''33'''(28): p. 8399-405. | ||
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[11] Andersen, J. B. et al.'' New unstable variants of green ¯uorescent protein for studies of transient gene expression in bacteria.'' Appl. Environ. Microbiol. 64, 2240±2246 (1998). | [11] Andersen, J. B. et al.'' New unstable variants of green ¯uorescent protein for studies of transient gene expression in bacteria.'' Appl. Environ. Microbiol. 64, 2240±2246 (1998). | ||
- | + | [12] Brendel, V. and A.S. Perelson, ''Quantitative model of ColE1 plasmid copy number control.'' J Mol Biol, 1993. 229(4): p. 860-72. | |
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- | + | [13] Kobiler, O., et al., ''Quantitative kinetic analysis of the bacteriophage lambda genetic network.'' Proc Natl Acad Sci U S A, 2005. 102(12): p. 4470-5. | |
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- | [12] Brendel, V. and A.S. Perelson, Quantitative model of ColE1 plasmid copy number control. J Mol Biol, 1993. 229(4): p. 860-72. | + | |
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- | + | [14] Anh-Tuan Dinh, Theo Theofanous, and Samir Mitragotri. A Model for Intracellular Trafficking of Adenoviral Vectors. Biophysical Journal, 2005. 89: 1574–1588. | |
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- | + | {{Tsinghua/Pic}} |
Latest revision as of 23:49, 21 October 2009
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