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<h2>Short Summary</h2> | <h2>Short Summary</h2> | ||
<article> | <article> | ||
− | In our project, we | + | In our project, we introduced RNA interference (RNAi) and translation repression with small interfering RNAs (siRNAs) as an alternative to CRISPR/Cas. To use siRNA as silencing agents for the gene-of -interest, we proposed a two-step design process. At first, potential siRNAs for prokaryotic organisms must be designed. In the second step, the silencing effect of these siRNAs can be validated by our siRNA vector system <a href="https://2018.igem.org/Team:Bielefeld-CeBiTec/siRNA">TACE</a>. To facilitate the initial siRNA design step, we developed a siRNA construction tool which identifies possible siRNAs for a given gene sequence, calculates their probability to silence the target gene, and returns candidates ranked based on the calculated score. It consists of three modules: "siRNAs for RNAi", "siRNA", and "check siRNA". The siRNAs predicted by our software are perfectly compatible with our siRNA vector system. To the best of our knowledge, this is the first tool dedicated to predicting customized siRNA for application in prokaryotes. This Python tool comes in two versions: a command line application and an easy-to-use graphical interface. |
</article> | </article> | ||
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<article> | <article> | ||
− | siRNAs are small, non-coding single-stranded RNAs with an average length of 21-25 | + | siRNAs are small, non-coding single-stranded RNAs with an average length of 21-25 nucleotides which bind a specific complementary coding mRNA and silence its function. In eukaryotic RNAi, siRNAs are loaded to Argonaute proteins which carry out the repression, either by blocking mRNA translation or by degrading the mRNA (Siomi and Siomi, 2009). More detailed information on both possible siRNAs mechanisms is found <a href="https://2018.igem.org/Team:Bielefeld-CeBiTec/siRNA">here.</a> |
</article> | </article> | ||
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<article> | <article> | ||
− | In order to achieve effective gene silencing or | + | In order to achieve effective gene silencing or knock-down, the 19 nt binding sequence must be flanked by special, non-binding 5' and 3' extensions (Figure 1). To trigger mRNA degradation by RNase E, the 5’-terminal triphosphate of the siRNA needs to be converted to a monophosphate by RNA pyrophosphohydrolase (RppH). For the siRNA to be recognized by RppH, the 5’ end of the siRNA has to start with the tetranucleotide AGNN which is not allowed to match the targeted mRNA (Foley et al., 2015). At the 3’ end of the siRNA, the small MicC scaffold is added which facilitates the hybridization of siRNA and target mRNA and protects the siRNA from degradation (Na et al., 2013). |
</article> | </article> | ||
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<img class="figure hundred" src="https://static.igem.org/mediawiki/2018/4/46/T--Bielefeld-CeBiTec--RNAi_scaffolds_new2.png"> | <img class="figure hundred" src="https://static.igem.org/mediawiki/2018/4/46/T--Bielefeld-CeBiTec--RNAi_scaffolds_new2.png"> | ||
<figcaption> | <figcaption> | ||
− | <b>Figure 1:</b> Effects of siRNA design on RNAi effectiveness and siRNA stability. <b>A</b> If the siRNA does not carry suitable 5' or 3' extensions, it is quickly degraded. <b>B</b> siRNAs extended by the tetranucleotide AGNN are recognized and processed by the pyrophosphohydrolase RppH. This enzyme converts the 5' triphosphate to a monophosphate which greatly reduces siRNA degradation. This allows the siRNA to hybridize to its target mRNA which in turn is degraded by RNAse E, thus leading to effective mRNA silencing. <b>C</b> Extending siRNAs with | + | <b>Figure 1:</b> Effects of siRNA design on RNAi effectiveness and siRNA stability. <b>A</b> If the siRNA does not carry suitable 5' or 3' extensions, it is quickly degraded. <b>B</b> siRNAs extended by the tetranucleotide AGNN are recognized and processed by the pyrophosphohydrolase RppH. This enzyme converts the 5' triphosphate to a monophosphate which greatly reduces siRNA degradation. This allows the siRNA to hybridize to its target mRNA which in turn is degraded by RNAse E, thus leading to effective mRNA silencing. <b>C</b> Extending siRNAs with a 3' MicC scaffold in addition to the 5' tetranucleotide AGNN further enhances mRNA silencing. MicC facilitates the hybridization of siRNA and target mRNA and protects the siRNA from degradation. |
</figcaption> | </figcaption> | ||
</figure> | </figure> | ||
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<article> | <article> | ||
− | In addition to | + | In addition to degradation-based RNAi, siRNA can also be used to block mRNAs without degradation. This is achieved by adding the outer membrane protein A (OmpA) scaffold to the 5' end of the siRNA (Figure 2), enhancing its stability. In addition, the hybridization of the siRNA and the target mRNA can be facilitated by addition of MicC to the 3' terminus. |
</br> | </br> | ||
Both sequence extensions are also part of our vector system, enabling efficient design and construction of effective siRNAs. If our vector system is selected when using our tool, the fitting overlaps to our vectors are added automatically. More theoretical information about the overhangs and scaffolds can be found <a href="">here</a>. | Both sequence extensions are also part of our vector system, enabling efficient design and construction of effective siRNAs. If our vector system is selected when using our tool, the fitting overlaps to our vectors are added automatically. More theoretical information about the overhangs and scaffolds can be found <a href="">here</a>. | ||
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<article> | <article> | ||
− | Tom Tuschl’s method focuses mainly on the existence of 5’ and 3’ ‘TT’ overhangs (Figure 3) (Elbashir <i>et al.</i>, 2001). These are not compatible with overhangs and scaffold sequences required by the prokaryotic mechanisms. Therefore, we decided to use the rules published by Ui-Tei as an alternative design method (Naito and Ui-Tei, 2012). Furthermore, we adapted the | + | Tom Tuschl’s method focuses mainly on the existence of 5’ and 3’ ‘TT’ overhangs (Figure 3) (Elbashir <i>et al.</i>, 2001). These are not compatible with overhangs and scaffold sequences required by the prokaryotic mechanisms. Therefore, we decided to use the rules published by Ui-Tei as an alternative design method (Naito and Ui-Tei, 2012). Furthermore, we adapted the rational siRNA design as it was more suitable for our application (Reynolds <i>et al.</i>, 2004). Both design rules apply only to the 19 nt long target binding sequence. |
</article> | </article> | ||
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<article> | <article> | ||
− | By a systematic analysis of 180 eukaryotic siRNAs, Reynolds <i>et al.</i> identified eight criteria that are important for their functionality (Reynolds et al., 2004). Each criterion gets a score that is either positive or negative, corresponding to its effect on the siRNA. All siRNA candidates with a score above six are potential highly functional siRNAs. | + | By a systematic analysis of 180 eukaryotic siRNAs, Reynolds <i>et al.</i> identified eight criteria that are important for their functionality (Reynolds <i>et al.</i>, 2004). Each criterion gets a score that is either positive or negative, corresponding to its effect on the siRNA. All siRNA candidates with a score above six are potential highly functional siRNAs. |
</article> | </article> | ||
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$$ P(eff|X) = \frac{P^{eff} P(X|eff)}{P^{eff} P(X|eff) + P^{inf} P(X|inf)} \qquad (1)$$ | $$ P(eff|X) = \frac{P^{eff} P(X|eff)}{P^{eff} P(X|eff) + P^{inf} P(X|inf)} \qquad (1)$$ | ||
− | The 19 nt siRNA binding sequence is represented by X, where \(x_i^n\) corresponds to the bases adenine, guanine, cytosine or thymine (indexes 1≤n≤4) at sequence position i. The probabilities P(X|eff) and P(X|inf) are calculated based on prior knowledge about siRNA sequences that were shown to be effective respectively ineffective in silencing their target mRNAs. Based on the analysis of 833 effective and 847 ineffective siRNAs, Takasaki et al. determined the likelyhood with which base n occures at position i in an effective/ineffective siRNA sequences, represented by the coefficients \(q_{x_i^n}^{eff}\) and \(q_{x_i^n}^{inf}\) respectively. These coeffecients are often referred to as frequency ratios of n at position i. | + | The 19 nt siRNA binding sequence is represented by X, where \(x_i^n\) corresponds to the bases adenine, guanine, cytosine or thymine (indexes 1≤n≤4) at sequence position i. The probabilities P(X|eff) and P(X|inf) are calculated based on prior knowledge about siRNA sequences that were shown to be effective respectively ineffective in silencing their target mRNAs. Based on the analysis of 833 effective and 847 ineffective siRNAs, Takasaki et al. determined the likelyhood with which base n occures at position i in an effective/ineffective siRNA sequences, represented by the coefficients \(q_{x_i^n}^{eff}\) and \(q_{x_i^n}^{inf}\) respectively (Takasaki, 2009). These coeffecients are often referred to as frequency ratios of n at position i. |
</article> | </article> | ||
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<article> | <article> | ||
− | In order to actually calculate the silencing probability, only the frequency ratios \(q_{x_i^n}^{eff}\) and \(q_{x_i^n}^{inf}\) of the individual nucleotides at positions 1 to 19 are missing. These could be taken from the same publication from Takasaki as the calculations. | + | In order to actually calculate the silencing probability, only the frequency ratios \(q_{x_i^n}^{eff}\) and \(q_{x_i^n}^{inf}\) of the individual nucleotides at positions 1 to 19 are missing. These could be taken from the same publication from Takasaki as the calculations (Takasaki, 2009). |
</article> | </article> | ||
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<h2>siRNA selection for RNAi and repression of translation</h2> | <h2>siRNA selection for RNAi and repression of translation</h2> | ||
<article> | <article> | ||
− | The procedures of siRNA selection for both mechanisms, RNAi and repression of translation, are very similar. Thus the first two modules, RNAi and siRNA, are similar. First the mRNA binding sequence is determined using the | + | The procedures of siRNA selection for both mechanisms, RNAi and repression of translation, are very similar. Thus the first two modules, RNAi and siRNA, are similar. First the mRNA binding sequence is determined using the rational design and the Ui-Tei rules. In the next step, the silencing probability is determined. At the end, the corresponding overhangs and scaffolds are added to the 19 nt long binding sequence to form the mature siRNA. |
</article> | </article> | ||
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<article> | <article> | ||
Used without input, a help message is displayed listing the mandatory and optional input parameters (Figure 4). For more information a README is available in our repository. | Used without input, a help message is displayed listing the mandatory and optional input parameters (Figure 4). For more information a README is available in our repository. | ||
− | All resulting siRNAs are saved in one FASTA file. This simplifies the integration into different workflows. For example, it is possible to test the siRNAs on off-target bindings site using | + | All resulting siRNAs are saved in one FASTA file. This simplifies the integration into different workflows. For example, it is possible to test the siRNAs on off-target bindings site using BLAST. An exemplary call of the application as well as the results returned can be seen in Figure 5. |
</article> | </article> | ||
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<ol style="font-size:16px; line-height:1.5em; padding-left:5%; padding-bottom:10px;"> | <ol style="font-size:16px; line-height:1.5em; padding-left:5%; padding-bottom:10px;"> | ||
<li>Insert gene sequence</li> | <li>Insert gene sequence</li> | ||
− | <li>Choose | + | <li>Choose TACE vector system (optionally)</li> |
<li>Constructions of siRNAs</li> | <li>Constructions of siRNAs</li> | ||
<li>View resulting siRNAs (sense and antisense sequence) and their corresponding probability</li> | <li>View resulting siRNAs (sense and antisense sequence) and their corresponding probability</li> | ||
− | <li>Decide if siRNAs should be saved with MicC scaffold (only if | + | <li>Decide if siRNAs should be saved with MicC scaffold (only if TACE is not used)</li> |
<li>Save results as FASTA file</li> | <li>Save results as FASTA file</li> | ||
</ol> | </ol> | ||
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<ol style="font-size:16px; line-height:1.5em; padding-left:5%; padding-bottom:10px;"> | <ol style="font-size:16px; line-height:1.5em; padding-left:5%; padding-bottom:10px;"> | ||
<li>Insert gene sequence</li> | <li>Insert gene sequence</li> | ||
− | <li>Choose | + | <li>Choose TACE vector system (optionally)</li> |
<li>Constructions of siRNAs</li> | <li>Constructions of siRNAs</li> | ||
<li>View resulting siRNAs (sense and antisense sequence) and their corresponding probability</li> | <li>View resulting siRNAs (sense and antisense sequence) and their corresponding probability</li> | ||
− | <li>Decide if siRNAs should be saved with MicC scaffold (only if | + | <li>Decide if siRNAs should be saved with MicC scaffold (only if TACE is not used)</li> |
− | <li>Decide if siRNAs should be saved with OmpA scaffold (only if | + | <li>Decide if siRNAs should be saved with OmpA scaffold (only if TACE is not used)</li> |
<li>Save results as FASTA file</li> | <li>Save results as FASTA file</li> | ||
</ol> | </ol> | ||
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<li>Insert siRNA sequences</li> | <li>Insert siRNA sequences</li> | ||
<li>Choose method the siRNA was constructed for (siRNA for RNAi or siRNA for silencing)</li> | <li>Choose method the siRNA was constructed for (siRNA for RNAi or siRNA for silencing)</li> | ||
− | <li>Choose if siRNA was constructed for | + | <li>Choose if siRNA was constructed for TACE (optionally)</li> |
<li>Validation of entered siRNA for given target gene sequences</li> | <li>Validation of entered siRNA for given target gene sequences</li> | ||
<li>View results</li> | <li>View results</li> |
Revision as of 02:54, 18 October 2018
siRCon - A siRNA Constructor
Short Summary
siRNAs short introduction
siRNA design
Choosing appropriate design methods
Rational siRNA design
Rule | Score |
---|---|
30%-52% G/C content | +1 |
At least 3 'W' ('A' or 'T') at positions 15-19 | +1 (for each 'A' or 'T') |
Absence of internal repeats (\(T_m \lt 20\)) | +1 |
An 'A' at position 3 | +1 |
An 'A' at position 19 | +1 |
A 'T' at position 19 | +1 |
An 'A' or 'T' at position 19 | -1 |
An 'A', 'C' or 'T' at position 13 | -1 |
Ui-Tei rule
- An ‘A’ or ‘T’ at position 19
- A ‘G’ or ‘C’ at position 1
- At least five ‘T’ or ‘A’ residues from positions 13 to 19
- No ‘GC’ stretch more than 9 nt long
Calculating silencing probability
siRNA selection for RNAi and repression of translation
Check siRNA
Command line application
The command line application can be obtained directly here or downloaded from our GitHub repository. To run the command line application, Python 2.7 needs to be installed.
Graphical Interface usage
Like the command line application, the graphical interface version can either be downloaded directly here, or via our GitHub repository.
In the graphical interface, the modules are accessible via tabs (Figure 6). The last tab contains usage and copyright information.
Tab 1: siRNA for RNAi
- Insert gene sequence
- Choose TACE vector system (optionally)
- Constructions of siRNAs
- View resulting siRNAs (sense and antisense sequence) and their corresponding probability
- Decide if siRNAs should be saved with MicC scaffold (only if TACE is not used)
- Save results as FASTA file
Tab 2: siRNA for silencing
- Insert gene sequence
- Choose TACE vector system (optionally)
- Constructions of siRNAs
- View resulting siRNAs (sense and antisense sequence) and their corresponding probability
- Decide if siRNAs should be saved with MicC scaffold (only if TACE is not used)
- Decide if siRNAs should be saved with OmpA scaffold (only if TACE is not used)
- Save results as FASTA file
Tab 3: Check siRNA
- Insert gene sequence
- Insert siRNA sequences
- Choose method the siRNA was constructed for (siRNA for RNAi or siRNA for silencing)
- Choose if siRNA was constructed for TACE (optionally)
- Validation of entered siRNA for given target gene sequences
- View results
- Save results (optionally)
Outlook
Elbashir, S.M., Harborth, J., Lendeckel, W., Yalcin, A., Weber, K., and Tuschl, T. (2001). Duplexes of 21-nucleotide RNAs mediate RNA interference in cultured mammalian cells. Nature 411: 494–498.
Foley, P.L., Hsieh, P., Luciano, D.J., and Belasco, J.G. (2015). Specificity and evolutionary conservation of the Escherichia coli RNA pyrophosphohydrolase RppH. J. Biol. Chem. 290: 9478–9486.
Kibbe, W.A. (2007). OligoCalc: an online oligonucleotide properties calculator. Nucleic Acids Res 35: W43–W46.
Na, D., Yoo, S.M., Chung, H., Park, H., Park, J.H., and Lee, S.Y. (2013). Metabolic engineering of Escherichia coli using synthetic small regulatory RNAs. Nat. Biotechnol. 31: 170–174.
Naito, Y. and Ui-Tei, K. (2012). siRNA Design Software for a Target Gene-Specific RNA Interference. Front Genet 3.
Reynolds, A., Leake, D., Boese, Q., Scaringe, S., Marshall, W.S., and Khvorova, A. (2004). Rational siRNA design for RNA interference. Nature Biotechnology 22: 326–330.
Siomi, H. and Siomi, M.C. (2009). On the road to reading the RNA-interference code. Nature 457: 396–404.
Takasaki, S. (2009). Selecting effective siRNA target sequences by using Bayes’ theorem. Computational Biology and Chemistry 33: 368–372.
Ui-Tei, K., Naito, Y., Takahashi, F., Haraguchi, T., Ohki-Hamazaki, H., Juni, A., Ueda, R. and Saigo, K. (2004). Guidelines for the selection of highly effective siRNA sequences for mammalian and chick RNA interference. Nucleic Acids Res. 32: 936-948.
Foley, P.L., Hsieh, P., Luciano, D.J., and Belasco, J.G. (2015). Specificity and evolutionary conservation of the Escherichia coli RNA pyrophosphohydrolase RppH. J. Biol. Chem. 290: 9478–9486.
Kibbe, W.A. (2007). OligoCalc: an online oligonucleotide properties calculator. Nucleic Acids Res 35: W43–W46.
Na, D., Yoo, S.M., Chung, H., Park, H., Park, J.H., and Lee, S.Y. (2013). Metabolic engineering of Escherichia coli using synthetic small regulatory RNAs. Nat. Biotechnol. 31: 170–174.
Naito, Y. and Ui-Tei, K. (2012). siRNA Design Software for a Target Gene-Specific RNA Interference. Front Genet 3.
Reynolds, A., Leake, D., Boese, Q., Scaringe, S., Marshall, W.S., and Khvorova, A. (2004). Rational siRNA design for RNA interference. Nature Biotechnology 22: 326–330.
Siomi, H. and Siomi, M.C. (2009). On the road to reading the RNA-interference code. Nature 457: 396–404.
Takasaki, S. (2009). Selecting effective siRNA target sequences by using Bayes’ theorem. Computational Biology and Chemistry 33: 368–372.
Ui-Tei, K., Naito, Y., Takahashi, F., Haraguchi, T., Ohki-Hamazaki, H., Juni, A., Ueda, R. and Saigo, K. (2004). Guidelines for the selection of highly effective siRNA sequences for mammalian and chick RNA interference. Nucleic Acids Res. 32: 936-948.