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- 2011 Annual Meeting
- Food, Pharmaceutical & Bioengineering Division
- Biomolecular Engineering
- (75f) Designing Highly Active siRNAs From Asymmetry-Based Selection Algorithm Predictions
We used this information to create an algorithm for predicting highly active siRNA sequences against desired proteins using only the mRNA sequence of the target. The algorithm uses end sequence and thermodynamic stability parameters, trained from existing siRNA activity databases, to rank the probability that an siRNA sequence has high, medium, and low activity for its target gene. We will discuss the applicability of the algorithm for predicting highly active sequences for enhanced green fluorescent protein, EGFP. Additionally, we will highlight comparisons between our technique and other selection approaches.