Table II. Choosing the right spatial proteomics approach.
Research Question | Method | Strength | |||
---|---|---|---|---|---|
Single protein | Static | Where is protein X? | Localization database (Table I) | Fast, multiple sources for cross-referencing | |
Static/Dynamic | Where is protein X? | [Microscopy] | Multi-compartment localizations and transient interactions captured | ||
Is protein X associated with compartment Y? | Proximity labelling (APEX, BioID with protein X as bait) | ||||
Single subcellular compartment/location | Static/Dynamic | What is the composition of compartment Y? | Proximity labelling (APEX, BioID using organelle-specific markers as baits) | Very sensitive | |
Single organelle profiling | No constructs/cell lines | ||||
Global–all compartments and locations, the complete spatial proteome | Static | What is the composition of all organelles in a given cell type? | Multi organelle profiling (gradient centrifugation; long gradients for high resolution; differential centrifugation for higher throughput) | No labelling reagents, no tagging/cell line generation; relatively rapid; a single experiment covers thousands of proteins; peptide level data. | |
Proximity labelling (multiple baits for every compartment) | Very sensitive, multi-compartment localizations | ||||
Imaging (one cell line or antibody per protein) | Direct visualization, also in relation to other structures/proteins; multi-compartment localizations | ||||
Dynamic | Which proteins change subcellular localization upon a specific perturbation, drug treatment, genetic alteration etc? Which organelles change composition upon perturbation? | Low Resolution | Membrane-nucleus-cytosol split | Simple, robust, deep coverage from one experiment, little MS measurement time | |
High Resolution | Multi organelle profiling (most robust by differential centrifugation) (Proximity labelling) – no global study yet (Imaging–global studies with yeast GFP library) |
Sensitive, deep coverage from one experiment |
See also (5), including the supplemental data, for a detailed discussion.