Team:WHU-China/templates/standardpage modeling
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4.The promoter region is accessible for RNAP(and all kinds of its subunits), which means it’s not in heterochromatin region or any other condition that hamper a normal RNAP-DNA interaction. </li><li> | 4.The promoter region is accessible for RNAP(and all kinds of its subunits), which means it’s not in heterochromatin region or any other condition that hamper a normal RNAP-DNA interaction. </li><li> | ||
5.The probability of RNAP binding on the region between two sub-promoter within the tandem promoter system is neglected. As it contributes too little to final ptot. </li> | 5.The probability of RNAP binding on the region between two sub-promoter within the tandem promoter system is neglected. As it contributes too little to final ptot. </li> | ||
- | <div style="text-align:center;"><img src="https://static.igem.org/mediawiki/2013/4/47/WHUTable1b.png" align=right /></div> | + | <div style="width:100%;text-align:center;"><img src="https://static.igem.org/mediawiki/2013/4/47/WHUTable1b.png" align=right /></div> |
<li> | <li> | ||
6.The RNAP-DNA binding is assumed to stay on equilibrium in the model. This is reasonable because the open complex formation is a slow rate limiting step of transcription. So in the time scale of open complex formation, RNAP-DNA binding can always reach its equilibrium in neglectable time[1][2]. It’s also observed that the inactive RNAP-DNA complex can be detected on the DNA[3]. </li><li> | 6.The RNAP-DNA binding is assumed to stay on equilibrium in the model. This is reasonable because the open complex formation is a slow rate limiting step of transcription. So in the time scale of open complex formation, RNAP-DNA binding can always reach its equilibrium in neglectable time[1][2]. It’s also observed that the inactive RNAP-DNA complex can be detected on the DNA[3]. </li><li> |
Revision as of 04:51, 23 September 2013
1. Overview
This model aims at predicting the final output of a tandem promoter system, which can be constituted of any number of and any type of sub-promoter(including sub-tandem promoter) in any order and any species. The Key idea of the model is that the strength of a promoter system is proportional to the probability of at least one RNA Polymerase (mentioned as RNAP latter) binding on the promoter.For a pdf version of the tandem promoter modeling part,click here
2. Symbol table, Assumption and reasons.
- 1.It’s assumed that the promoter strength is measured in the same species, with identical environment and growing stage. This ensure the assumption that the concentration of all subunits of RNAP, all subunits of ribosome, all RNA degradation enzymes, all kind of proteases and all transportation protein are thermodynamically identical. Otherwise, the model may fail to work properly.
- 2.In all measurement, the contexts of the promoter are the same. i.e. same RBS, terminator, protein sequence, up stream element, down stream element and DNA supercoiling.
- 3.All transcriptional factors are not considered in this version of the model, but can be included in the model with some modification to the equations.
- 4.The promoter region is accessible for RNAP(and all kinds of its subunits), which means it’s not in heterochromatin region or any other condition that hamper a normal RNAP-DNA interaction.
- 5.The probability of RNAP binding on the region between two sub-promoter within the tandem promoter system is neglected. As it contributes too little to final ptot.
- 6.The RNAP-DNA binding is assumed to stay on equilibrium in the model. This is reasonable because the open complex formation is a slow rate limiting step of transcription. So in the time scale of open complex formation, RNAP-DNA binding can always reach its equilibrium in neglectable time[1][2]. It’s also observed that the inactive RNAP-DNA complex can be detected on the DNA[3].
- 7.We assume different RNAP-Promoter complexes have a transcription rate α for simplicity. Because if they do not, the difference of α can be incorporated in pi. For derivation, see section 4.2 and 4.3.
3. Modeling result
We found that the strength of a tandem promoter system can be interpreted by a simple equation:
Figure 1. Model fitting result
Y-axis represent the normalized promoter strength, X-axis the number of sub-promoter
The blue dot is data extracted from ref.[4] fig.2, the red line is the prediction made by our model,the red dotted line is the 95% prediction bound
This model explains 99% of the tandem promoter strength variation caused by
- 1.number of sub-promoter,
- 2.kind of sub-promoter,
- 3.order of sub-promoter .
4.Model derivation
The promoter strength may be influenced by various factors. We need to simplify the system into some reasonable toy model by wiping out all relatively trivial factor. 4.1 Expression level Measurement We use the fluorescence strength to indicate the strength of the promoter(Normalized by a inner reference fluorescence protein(FP) - mCherry. Please check details at the experiment part 网址). Because when the exciting light is fixed, the fluorescence is proportional to the concentration of FP. And FP can be lighted up in a short time after they are synthesis. 4.2 Translation and transcription According to the Central Dogma
Figure 2.Model fitting result of the simpler model
As only one RNAP is needed to initiate the transcription in a tandem promoter system (the other RNAP will be blocked by the RNAP closest to the transcription initiation point). So the probability of at least one RNAP binding to the promoter is
Figure 3. Curve fitting residual plot of the simpler model
Data analysis shows that the data increase in y much quicker than our prediction, which indicate there will be some kind of cooperation among sub-promoters. This results in pij>pipj. The cooperation can be explained by the fact that the binding possibility of each sub-promoter is actually not completely independent. The Clustering of promoter make a RNAP that falls out from one promoter has a slightly great possibility to bind with the promoter surrounding the former promoter. This phenomenon has not been catched by the Boltzmann factor we used to calculate the relationship between pij and pipj. So in order to fix this failure, it’s alright to add a cooperative term into the model. Therefore equation 2 comes out, with nj as the cooperative factor.
Figure 4. Curve fitting residual plot of the final model