4.7 Article

Proximity labeling in mammalian cells with TurboID and split-TurboID

Journal

NATURE PROTOCOLS
Volume 15, Issue 12, Pages 3971-3999

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41596-020-0399-0

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Funding

  1. NIH [R01-DK121409]
  2. Stanford Wu Tsai Neurosciences Institute Big Ideas Initiative
  3. NIH Training Grant [2T32CA009302-41]
  4. Blavatnik Graduate Fellowship

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This protocol describes the use of TurboID and split-TurboID in proximity labeling applications for mapping protein-protein interactions and subcellular proteomes in live mammalian cells. TurboID is an engineered biotin ligase that uses ATP to convert biotin into biotin-AMP, a reactive intermediate that covalently labels proximal proteins. Optimized using directed evolution, TurboID has substantially higher activity than previously described biotin ligase-related proximity labeling methods, such as BioID, enabling higher temporal resolution and broader application in vivo. Split-TurboID consists of two inactive fragments of TurboID that can be reconstituted through protein-protein interactions or organelle-organelle interactions, which can facilitate greater targeting specificity than full-length enzymes alone. Proteins biotinylated by TurboID or split-TurboID are then enriched with streptavidin beads and identified by mass spectrometry. Here, we describe fusion construct design and characterization (variable timing), proteomic sample preparation (5-7 d), mass spectrometric data acquisition (2 d), and proteomic data analysis (1 week). This protocol describes proximity labeling approaches using TurboID and split-TurboID, which can be used for mapping protein-protein interactions and organelle proteomes in live mammalian cells with nanometer spatial resolution.

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