Mapping highly complicated disulfide
linkages and free thiols via
liquid chromatography–tandem mass spectrometry (LC–MS2) is challenging because of the difficulties in optimizing
sample preparation to acquire critical MS data and detecting mispairings.
Herein, we report a highly efficient and comprehensive workflow using
an on-line UV-induced precolumn reduction tandem mass spectrometry
(UV-LC–MS2) coupled with two-stage data analysis
and spiked control. UV-LC–MS2 features a gradient
run of acetonitrile containing a tunable percentage of photoinitiators
(acetone/alcohol) that drives the sample to the MS through a UV-flow
cell and reverse phase column to separate UV-induced products for
subsequent fragmentation via low energy collision-induced dissociation.
This allowed the alkylated thiol-containing and UV-reduced cysteine-containing
peptides to be identified by a nontargeted database search. Expected
or unexpected disulfide/thiol mapping was then carried out based on
the search results, and data were derived from partially reduced species
by photochemical reaction. Complete assignments of native and scrambled
disulfide linkages of insulin, α-lactalbumin, and bovine serum
albumin (BSA) as well as the free C34-BSA were demonstrated using
none or single enzyme digestion. This workflow was applied to characterize
unknown disulfide/thiol patterns of the recombinant cyclophilin 1
monomer (rTvCyP1 mono) from the human pathogen Trichomonas vaginalis. α-Lactalbumin was judiciously
chosen as a spiked control to minimize mispairings due to sample preparation.
rTvCyP1 was determined to contain a high percentage
of thiol (>80%). The rest of rTvCyP1 mono were
identified
to contain two disulfide/thiol patterns, of which C41–C169
linkage was confirmed to exist as C53–C181 in rTvCyP2, a homologue of rTvCyP1. This platform identifies
heterogeneous protein disulfide/thiol patterns in a de-novo fashion with artifact control, opening up an opportunity to characterize
crude proteins for many applications.
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