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Cell-type-directed design of synthetic enhancers

Output Details

Published December 11, 2023

Transcriptional enhancers act as docking stations for combinations of transcription factors and thereby regulate spatiotemporal activation of their target genes. It has been a long-standing goal in the field to decode the regulatory logic of an enhancer and to understand the details of how spatiotemporal gene expression is encoded in an enhancer sequence. Here we show that deep learning models can be used to efficiently design synthetic, cell-type-specific enhancers, starting from random sequences, and that this optimization process allows detailed tracing of enhancer features at single-nucleotide resolution. We evaluate the function of fully synthetic enhancers to specifically target Kenyon cells or glial cells in the fruit fly brain using transgenic animals. We further exploit enhancer design to create ‘dual-code’ enhancers that target two cell types and minimal enhancers smaller than 50 base pairs that are fully functional. By examining the state space searches towards local optima, we characterize enhancer codes through the strength, combination and arrangement of transcription factor activator and transcription factor repressor motifs. Finally, we apply the same strategies to successfully design human enhancers, which adhere to enhancer rules similar to those of Drosophila enhancers. Enhancer design guided by deep learning leads to better understanding of how enhancers work and shows that their code can be exploited to manipulate cell states.
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  • Original Research

Meet the Authors

  • User avatar fallback logo

    Ibrahim I Taskiran

    External Collaborator

  • User avatar fallback logo

    Katina I Spanier

    External Collaborator

  • User avatar fallback logo

    Hannah Dickmanken

    External Collaborator

  • User avatar fallback logo

    Niklas Kempynck

    External Collaborator

  • Alexandra Pančíková, MSc

    Key Personnel: Team Voet

    KU Leuven

  • User avatar fallback logo

    Eren Can Eksi

    External Collaborator

  • User avatar fallback logo

    Gert Hulselmans

    External Collaborator

  • User avatar fallback logo

    Joy N Ismail

    External Collaborator

  • User avatar fallback logo

    Koen Theunis, MSc

    Key Personnel: Team Voet

    KU Leuven

  • User avatar fallback logo

    Roel Vandepoel

    External Collaborator

  • User avatar fallback logo

    Valerie Christiaens

    External Collaborator

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    David Mauduit

    External Collaborator

  • Stein Aerts, PhD

    Co-PI (Core Leadership): Team Voet

    KU Leuven

Aligning Science Across Parkinson's
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