The isolation of an RNA aptamer targeting to p53 protein with single amino acid mutation

Liang Chen(University of Science and Technology of China), Farooq Rashid(University of Science and Technology of China), Abdullah Shah(University of Science and Technology of China), Hassaan Mehboob Awan(University of Science and Technology of China), Mingming Wu(University of Science and Technology of China), An Liu(University of Science and Technology of China), Jun Wang(University of Science and Technology of China), Tao Zhu(University of Science and Technology of China), Zhaofeng Luo(University of Science and Technology of China), Ge Shan(University of Science and Technology of China)
Proceedings of the National Academy of Sciences
July 27, 2015
Cited by 125Open Access
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Abstract

p53, known as a tumor suppressor, is a DNA binding protein that regulates cell cycle, activates DNA repair proteins, and triggers apoptosis in multicellular animals. More than 50% of human cancers contain a mutation or deletion of the p53 gene, and p53R175 is one of the hot spots of p53 mutation. Nucleic acid aptamers are short single-stranded oligonucleotides that are able to bind various targets, and they are typically isolated from an experimental procedure called systematic evolution of ligand exponential enrichment (SELEX). Using a previously unidentified strategy of contrast screening with SELEX, we have isolated an RNA aptamer targeting p53R175H. This RNA aptamer (p53R175H-APT) has a significantly stronger affinity to p53R175H than to the wild-type p53 in both in vitro and in vivo assays. p53R175H-APT decreased the growth rate, weakened the migration capability, and triggered apoptosis in human lung cancer cells harboring p53R175H. Further analysis actually indicated that p53R175H-APT might partially rescue or correct the p53R175H to function more like the wild-type p53. In situ injections of p53R175H-APT to the tumor xenografts confirmed the effects of this RNA aptamer on p53R175H mutation in mice.


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