A Computational Algorithm to Predict shRNA Potency

作者:Knott Simon R V; Maceli Ashley R; Erard Nicolas; Chang Kenneth; Marran Krista; Zhou Xin; Gordon Assaf; El Demerdash Osama; Wagenblast Elvin; Kim Sun; Fellmann Christof; Hannon Gregory J*
来源:Molecular Cell, 2014, 56(6): 796-807.
DOI:10.1016/j.molcel.2014.10.025

摘要

The strength of conclusions drawn from RNAi-based studies is heavily influenced by the quality of tools used to elicit knockdown. Prior studies have developed algorithms to design siRNAs. However, to date, no established method has emerged to identify effective shRNAs, which have lower intracellular abundance than transfected siRNAs and undergo additional processing steps. We recently developed a multiplexed assay for identifying potent shRNAs and used this method to generate similar to 250,000 shRNA efficacy data points. Using these data, we developed shERWOOD, an algorithm capable of predicting, for any shRNA, the likelihood that it will elicit potent target knockdown. Combined with additional shRNA design strategies, shERWOOD allows the ab initio identification of potent shRNAs that specifically target the majority of each gene's multiple transcripts. We validated the performance of our shRNA designs using several orthogonal strategies and constructed genome-wide collections of shRNAs for humans and mice based on our approach.

  • 出版日期2014-12-18