When less is more - A fast TurboID KI approach for high sensitivity endogenous interactome mapping.
Alexander StockhammerCarissa SpaltAntonia KlemtLaila S BenzShelly HarelVini NataliaLukas WienchChristian FreundBenno KuropkaFrancesca BottanelliPublished in: Journal of cell science (2024)
In recent years, proximity labeling has established itself as an unbiased and powerful approach to map the interactome of specific proteins. While physiological expression of labeling enzymes is beneficial for the mapping of interactors, generation of the desired cell lines remains time-consuming and challenging. Using our established pipeline for rapid generation of C- and N-terminal CRISPR-Cas9 knock-ins (KIs) based on antibiotic selection, we were able to compare the performance of commonly used labeling enzymes when endogenously expressed. Endogenous tagging of the µ subunit of the AP-1 complex with TurboID allowed identification of known interactors and cargo proteins that simple overexpression of a labeling enzyme fusion protein could not reveal. We used the KI-strategy to compare the interactome of the different adaptor protein (AP) complexes and clathrin and were able to assemble lists of potential interactors and cargo proteins that are specific for each sorting pathway. Our approach greatly simplifies the execution of proximity labeling experiments for proteins in their native cellular environment and allows going from CRISPR transfection to mass spectrometry analysis and interactome data in just over a month.
Keyphrases
- crispr cas
- genome editing
- high resolution
- mass spectrometry
- transcription factor
- high density
- genome wide
- poor prognosis
- liquid chromatography
- squamous cell carcinoma
- electronic health record
- long non coding rna
- climate change
- lymph node
- risk assessment
- high performance liquid chromatography
- protein protein
- small molecule
- machine learning
- artificial intelligence
- amino acid
- deep learning