Flow cytometry-based functional selection of RNA interference triggers for efficient epi-allelic analysis of therapeutic targets

David Micklem(University of Bergen), Magnus Blø(University of Bergen), Petra Bergström(Sahlgrenska University Hospital), Erlend Hodneland(University of Bergen), Crina Tiron(University of Bergen), Torill Høiby(University of Bergen), Christine Gjerdrum(University of Bergen), Ola Hammarsten(Sahlgrenska University Hospital), James B. Lorens(University of Bergen)
BMC Biotechnology
June 21, 2014
Cited by 2Open Access
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Abstract

BACKGROUND: The dose-response relationship is a fundamental pharmacological parameter necessary to determine therapeutic thresholds. Epi-allelic hypomorphic analysis using RNA interference (RNAi) can similarly correlate target gene dosage with cellular phenotypes. This however requires a set of RNAi triggers empirically determined to attenuate target gene expression to different levels. RESULTS: In order to improve our ability to incorporate epi-allelic analysis into target validation studies, we developed a novel flow cytometry-based functional screening approach (CellSelectRNAi) to achieve unbiased selection of shRNAs from high-coverage libraries that knockdown target gene expression to predetermined levels. Employing a Gaussian probability model we calculated that knockdown efficiency is inferred from shRNA sequence frequency profiles derived from sorted hypomorphic cell populations. We used this approach to generate a hypomorphic epi-allelic cell series of shRNAs to reveal a functional threshold for the tumor suppressor p53 in normal and transformed cells. CONCLUSION: The unbiased CellSelectRNAi flow cytometry-based functional screening approach readily provides an epi-allelic series of shRNAs for graded reduction of target gene expression and improved phenotypic validation.


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