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siRNAs are small single- or double-stranded RNAs with an average length of 21-25 nucleotides. They are non-coding RNAs which can bind a specific complementary coding mRNA and silence its function. During 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 are found <a href="https://2018.igem.org/Team:Bielefeld-CeBiTec/siRNA">here.</a> | siRNAs are small single- or double-stranded RNAs with an average length of 21-25 nucleotides. They are non-coding RNAs which can bind a specific complementary coding mRNA and silence its function. During 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 are found <a href="https://2018.igem.org/Team:Bielefeld-CeBiTec/siRNA">here.</a> | ||
</article> | </article> | ||
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+ | <a name="overh" id="overh" class="shifted-anchor"></a> | ||
+ | <h2>siRNA overhangs and scaffolds</h2> | ||
+ | |||
+ | <article> | ||
+ | In order to achieve effective gene silencing or knockdown, the 19 nt binding sequence must be supplemented with overhangs. There are different sequences that can be added to the binding sequence for different functionalities. </article> | ||
+ | |||
+ | |||
+ | <article> | ||
+ | In Figure 2, different siRNAs for RNAi are shown. To trigger the mRNA degradation by the RNase E, the 5’-terminal triphosphate of the siRNA is converted to a monophosphate by the RNA pyrophosphohydrolase (RppH). For the siRNA to be recognized by the RppH, the 5’ end of the siRNA have to start with the nucleotides adenine and guanine. Furthermore, the nucleotides at position three and four are not allowed to match with the target 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> | ||
+ | |||
+ | <figure role="group"> | ||
+ | <img class="figure sixty" src="https://static.igem.org/mediawiki/2018/9/9a/T--Bielefeld-CeBiTec--RNAi_scaffolds_new.png"> | ||
+ | <figcaption> | ||
+ | <b>Figure 2:</b> Different siRNAs for RNAi mechanism. <b>A</b> If siRNA is not supplemented with any overhang or scaffold, the siRNA is degraded. <b>B</b> siRNAs supplemented with the pyrophosphohydrolase (RppH) overhang can possibly silence a mRNA target. The RppH can recognize the siRNA and the 5’-terminal triphosphate of the siRNA is converted to a monophosphate and mRNA degradation by the RNase E is triggered. <b>C</b> If the siRNA is supplemented with RppH overhang and MicC scaffold the silencing is further enhanced. MicC facilitates the hybridization of siRNA and target mRNA and protects the siRNA from degradation. | ||
+ | </figcaption> | ||
+ | </figure> | ||
+ | |||
+ | |||
+ | <article> | ||
+ | Figure 3 shows the scheme of a siRNA that should only silence the mRNA target. To achieve a higher stability of the siRNA, the outer membrane protein (Omp) A scaffold is added at the 5’ end. In addition, the hybridization of the siRNA and the target mRNA should be facilitated by MicC again. | ||
+ | </br> | ||
+ | These overhang and scaffold sequences are also part of our vector system. 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>. | ||
+ | </article> | ||
+ | |||
+ | <figure role="group"> | ||
+ | <img class="figure sixty" src="https://static.igem.org/mediawiki/2018/f/f0/T--Bielefeld-CeBiTec--siRNA_scaffolds_new_vk.png"> | ||
+ | <figcaption> | ||
+ | <b>Figure 3:</b> Different siRNAs for . | ||
+ | </figcaption> | ||
+ | </figure> | ||
+ | |||
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<a name="check" id="check" class="shifted-anchor"></a> | <a name="check" id="check" class="shifted-anchor"></a> |
Revision as of 21:00, 17 October 2018
siRCon - A siRNA Constructor
siRNAS short introduction
siRNA overhangs and scaffolds
Choosing appropriate design methods
Rational siRNA design
Rule | Score |
---|---|
30%-52% G/C content | +1 |
At least 3 'A/U' bases at positions 15-19 | +1 (for each 'A/U' base) |
Absence of internal repeats (\(T_m \lt 20\)) | +1 |
An 'A' base at position 3 | +1 |
An 'A' base at position 19 | +1 |
An 'U' base at position 19 | +1 |
A base other than 'G' or 'C' at 19 | -1 |
A base other than 'G' at position 13 | -1 |
Ui-Tei rule
- An ‘A’ or ‘T’ at position 19
- A ‘G’ or ‘C’ at position 1
- At least five ‘U’ or ‘A’ residues from positions 13 to 19
- No ‘GC’ stretch more than 9nt long
Calculating silencing probability
Check siRNA
Command line application
The command line application can be obtained directly here or downloaded from our GitHub repository. For the execution of this command line application Python 2.7 needs to be installed.
Graphical Interface usage
As 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 divided into different tabs (Figure 6). The last tab contains usage and copyright information.
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
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
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.
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.