Novel Real-Time Library Search Driven Data Acquisition Strategy for Identification and Characterization of Metabolites.
Brandon BillsWilliam D BarshopSeema SharmaJesse CanterburyAaron M RobitailleMichael GoodwinMichael W SenkoVlad ZabrouskovPublished in: Analytical chemistry (2022)
Structural characterization of novel metabolites in drug discovery or metabolomics is one of the most challenging tasks. Multilevel fragmentation (MS n ) based approaches combined with various dissociation modes are frequently utilized for facilitating structure assignment of unknown compounds. As each of the MS precursors undergoes MS n , the instrument cycle time can limit the total number of precursors analyzed in a single LC run for complex samples. This necessitates splitting data acquisition into several analyses to target lower concentration analytes in successive experiments. Here we present a new LC/MS data acquisition strategy, termed Met-IQ, where the decision to perform an MS n acquisition is automatically made in real time based on the similarity between the experimental MS 2 spectrum and a spectrum in a reference spectral library for the known compounds of interest. If similarity to a spectrum in the library is found, the instrument performs a decision-dependent event, such as an MS 3 spectrum. Compared to an intensity-based, data-dependent MS n experiment, only a limited number of MS 3 are triggered using Met-IQ, increasing the overall MS 2 instrument sampling rate. We applied this strategy to an Amprenavir sample incubated with human liver microsomes. The number of MS 2 spectra increased 2-fold compared to a data dependent experiment where MS 3 was triggered for each precursor, resulting in identification of 14-34% more unique potential metabolites. Furthermore, the MS 2 fragments were selected to focus likely sources of useful structural information, specifically higher mass fragments to maximize acquisition of MS 3 data relevant for structure assignment. The described Met-IQ strategy is not limited to metabolism experiments and can be applied to analytical samples where the detection of unknown compounds structurally related to a known compound(s) is sought.