| Literature DB >> 29078326 |
Leyuan Ma1,2, Jeffrey I Boucher3, Janet Paulsen3, Sebastian Matuszewski4,5, Christopher A Eide6,7, Jianhong Ou1, Garrett Eickelberg8, Richard D Press8, Lihua Julie Zhu1,9, Brian J Druker6,7, Susan Branford10,11,12,13, Scot A Wolfe1,3, Jeffrey D Jensen4,5, Celia A Schiffer3, Michael R Green14,2, Daniel N Bolon15.
Abstract
Developing tools to accurately predict the clinical prevalence of drug-resistant mutations is a key step toward generating more effective therapeutics. Here we describe a high-throughput CRISPR-Cas9-based saturated mutagenesis approach to generate comprehensive libraries of point mutations at a defined genomic location and systematically study their effect on cell growth. As proof of concept, we mutagenized a selected region within the leukemic oncogene BCR-ABL1 Using bulk competitions with a deep-sequencing readout, we analyzed hundreds of mutations under multiple drug conditions and found that the effects of mutations on growth in the presence or absence of drug were critical for predicting clinically relevant resistant mutations, many of which were cancer adaptive in the absence of drug pressure. Using this approach, we identified all clinically isolated BCR-ABL1 mutations and achieved a prediction score that correlated highly with their clinical prevalence. The strategy described here can be broadly applied to a variety of oncogenes to predict patient mutations and evaluate resistance susceptibility in the development of new therapeutics. Published under the PNAS license.Entities:
Keywords: BCR-ABL; CRISPR-Cas9–based genome editing; drug resistance; saturated mutagenesis; tyrosine kinase inhibitors
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Year: 2017 PMID: 29078326 PMCID: PMC5676903 DOI: 10.1073/pnas.1708268114
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205