RNA干扰
生物
基因敲除
小干扰RNA
基因沉默
反式siRNA
计算生物学
功能基因组学
基因
遗传学
核糖核酸
基因组学
基因组
作者
Qing Luo,Qi Kang,Wenxin Song,Hue H. Luu,Xingguang Luο,Naili An,Jinyong Luo,Zhong‐Liang Deng,Wei Jiang,Hong Yin,Chen Jin,Katie A. Sharff,Ni Tang,Erwin Bennett,Rex C. Haydon,Tong‐Chuan He
出处
期刊:Gene
[Elsevier]
日期:2007-06-01
卷期号:395 (1-2): 160-169
被引量:74
标识
DOI:10.1016/j.gene.2007.02.030
摘要
RNA interference (RNAi)-mediated gene silencing has become a valuable tool for functional studies, reverse genomics, and drug discoveries. One major challenge of using RNAi is to identify the most effective short interfering RNAs (siRNAs) sites of a given gene. Although several published bioinformatic prediction models have proven useful, the process to select and validate optimal siRNA sites for a given gene remains empirical and laborious. Here, we developed a fluorescence-based selection system using a retroviral vector backbone, namely pSOS, which was based on the premise that candidate siRNAs would knockdown the chimeric transcript between GFP and target gene. The expression of siRNA was driven by the opposing convergent H1 and U6 promoters. This configuration simplifies the cloning of duplex siRNA oligonucleotide cassettes. We demonstrated that GFP signal reduction was closely correlated with siRNA knockdown efficiency of human β-catenin, as well as with the inhibition of β-catenin/Tcf4 signaling activity. The pSOS should not only facilitate the selection and validation of candidate siRNA sites, but also provide efficient delivery tools of siRNAs via viral vectors in mammalian cells. Thus, the pSOS system represents an efficient and user-friendly strategy to select and validate siRNA target sites.
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