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Context influences on TALE-DNA binding revealed by quantitative profiling

  • Julia M. Rogers
  • , Luis A. Barrera
  • , Deepak Reyon
  • , Jeffry D. Sander
  • , Manolis Kellis
  • , J. Keith Joung
  • , Martha L. Bulyk

Research output: Contribution to journalArticlepeer-review

28 Scopus citations

Abstract

Transcription activator-like effector (TALE) proteins recognize DNA using a seemingly simple DNA-binding code, which makes them attractive for use in genome engineering technologies that require precise targeting. Although this code is used successfully to design TALEs to target specific sequences, off-target binding has been observed and is difficult to predict. Here we explore TALE-DNA interactions comprehensively by quantitatively assaying the DNA-binding specificities of 21 representative TALEs to ∼5,000-20,000 unique DNA sequences per protein using custom-designed protein-binding microarrays (PBMs). We find that protein context features exert significant influences on binding. Thus, the canonical recognition code does not fully capture the complexity of TALE-DNA binding. We used the PBM data to develop a computational model, Specificity Inference For TAL-Effector Design (SIFTED), to predict the DNA-binding specificity of any TALE. We provide SIFTED as a publicly available web tool that predicts potential genomic off-target sites for improved TALE design.

Original languageEnglish
Article number7440
JournalNature Communications
Volume6
DOIs
StatePublished - Jun 11 2015

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