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PLOS ONE  2012 

In Silico Target-Specific siRNA Design Based on Domain Transfer in Heterogeneous Data

DOI: 10.1371/journal.pone.0050697

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Abstract:

RNA interference via exogenous small interference RNAs (siRNA) is a powerful tool in gene function study and disease treatment. Designing efficient and specific siRNA on target gene remains the key issue in RNAi. Although various in silico models have been proposed for rational siRNA design, most of them focus on the efficiencies of selected siRNAs, while limited effort has been made to improve their specificities targeted on specific mRNAs, which is related to reducing off-target effects (OTEs) in RNAi. In our study, we propose for the first time that the enhancement of target specificity of siRNA design can be achieved computationally by domain transfer in heterogeneous data sources from different siRNA targets. A transfer learning based method i.e., heterogeneous regression (HEGS) is presented for target-specific siRNA efficacy modeling and feature selection. Based on the model, (1) the target regression model can be built by extracting information from related data in other targets/experiments, thus increasing the target specificity in siRNA design with the help of information from siRNAs binding to other homologous genes, and (2) the potential features correlated to the current siRNA design can be identified even when there is lack of experimental validated siRNA affinity data on this target. In summary, our findings present useful instructions for a better target-specific siRNA design, with potential applications in genome-wide high-throughput screening of effective siRNA, and will provide further insights on the mechanism of RNAi.

References

[1]  Hannon GJ (2002) RNA interference. Nature 418: 244–251.
[2]  Filipowicz W (2005) RNAi: the nuts and bolts of the RISC machine. Cell 122: 17–20.
[3]  Carthew RW, Sontheimer EJ (2009) Origins and Mechanisms of miRNAs and siRNAs. Cell 136: 642–655.
[4]  Castanotto D, Rossi JJ (2009) The promises and pitfalls of RNA-interference-based therapeutics. Nature 457: 426–433.
[5]  Jackson AL, Linsley PS (2010) Recognizing and avoiding siRNA off-target effects for target identification and therapeutic application. Nat Rev Drug Discov 9: 57–67.
[6]  Wilson JA, Jayasena S, Khvorova A, Sabatinos S, Rodrigue-Gervais IG, et al. (2003) RNA interference blocks gene expression and RNA synthesis from hepatitis C replicons propagated in human liver cells. Proceedings of the National Academy of Sciences 100: 2783.
[7]  Mahanthappa N (2005) Translating RNA interference into therapies for human disease. Pharmacogenomics 6: 879–883.
[8]  Jackson AL, Bartz SR, Schelter J, Kobayashi SV, Burchard J, et al. (2003) Expression profiling reveals off-target gene regulation by RNAi. Nature biotechnology 21: 635–637.
[9]  Ui-Tei K, Naito Y, Takahashi F, Haraguchi T, Ohki-Hamazaki H, et al. (2004) Guidelines for the selection of highly effective siRNA sequences for mammalian and chick RNA interference. Nucleic Acids Res 32: 936–948.
[10]  Shabalina SA, Spiridonov AN, Ogurtsov AY (2006) Computational models with thermodynamic and composition features improve siRNA design. BMC Bioinformatics 7: 65.
[11]  Reynolds A, Leake D, Boese Q, Scaringe S, Marshall WS, et al. (2004) Rational siRNA design for RNA interference. Nat Biotechnol 22: 326–330.
[12]  Jagla B, Aulner N, Kelly PD, Song D, Volchuk A, et al. (2005) Sequence characteristics of functional siRNAs. RNA 11: 864–872.
[13]  Patzel V, Rutz S, Dietrich I, Koberle C, Scheffold A, et al. (2005) Design of siRNAs producing unstructured guide-RNAs results in improved RNA interference efficiency. Nat Biotechnol 23: 1440–1444.
[14]  Pei Y, Tuschl T (2006) On the art of identifying effective and specific siRNAs. Nautre Meth 3: 670–676.
[15]  Kittler R, Surendranath V, Heninger AK, Slabicki M, Theis M, et al. (2007) Genome-wide resources of endoribonuclease-prepared short interfering RNAs for specific loss-of-function studies. Nat Methods 4: 337–344.
[16]  Braasch DA, Corey DR (2001) Locked nucleic acid (LNA): fine-tuning the recognition of DNA and RNA. Chem Biol 8: 1–7.
[17]  Huesken D, Lange J, Mickanin C, Weiler J, Asselbergs F, et al. (2005) Design of a genome-wide siRNA library using an artificial neural network. Nature Biotechnology 23: 995–1001.
[18]  Matveeva O, Nechipurenko Y, Rossi L, Moore B, Saetrom P, et al. (2007) Comparison of approaches for rational siRNA design leading to a new efficient and transparent method. Nucleic Acids Res 35: e63.
[19]  Klingelhoefer JW, Moutsianas L, Holmes C (2009) Approximate Bayesian feature selection on a large meta-dataset offers novel insights on factors that effect siRNA potency. Bioinformatics 25: 1594–1601.
[20]  Liu Q, Xu Q, Zheng VW, Xue H, Cao Z, et al. (2010) Multi-task learning for cross-platform siRNA efficacy prediction: an in-silico study. BMC bioinformatics 11: 181.
[21]  Liu Q, Zhou H, Cui J, Cao Z, Xu Y (2012) Reconsideration of In-Silico siRNA Design Based on Feature Selection: A Cross-Platform Data Integration Perspective. 7(5): Plos one e37879.
[22]  Li W, Cha L (2007) Predicting siRNA efficiency. Cellular and molecular life sciences: CMLS 64: 1785.
[23]  Saetrom P, Snove OJ (2004) A comparison of siRNA efficacy predictors. Biochem Biophys Res Commun 321: 247–253.
[24]  Arvey A, Larsson E, Sander C, Leslie CS, Marks DS (2010) Target mRNA abundance dilutes microRNA and siRNA activity. Mol Syst Biol 6: 363.
[25]  Larsson E, Sander C, Marks D (2010) mRNA turnover rate limits siRNA and microRNA efficacy. Mol Syst Biol 6: 433.
[26]  Zhong E, Fan W, Yang Q, Verscheure O, Ren J (2010) Cross Validation Framework to Choose amongst Models and Datasets for Transfer Learning. Proceedings of the 2010 European conference on Machine learning and knowledge discovery in databases Part III 547–562.
[27]  Shi X, Liu Q, Fan W, Yang Q, Yu PS (2010) Predictive Modeling with Heterogeneous Sources. 2010 SIAM International Conference on Data Mining 814–825.
[28]  Tamura K, Peterson D, Peterson N, Stecher G, Nei M, et al. (2011) MEGA5: molecular evolutionary genetics analysis using maximum likelihood, evolutionary distance, and maximum parsimony methods. Molecular Biology and Evolution 28: 2731–2739.
[29]  Pan SJ, Yang Q (2010) A survey on transfer learning. Knowledge and Data Engineering, IEEE Transactions on 22: 1345–1359.
[30]  Weinheim HKVC (1994) QSAR: Hansch Analysis and Related Approaches. J Med Chem 37: 2481–2486.

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