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Improved Discrimination of Mass Spectral Isomers Using the High‐Dimensional Consensus Mass Spectral Similarity Algorithm.

Authors :
McGlynn, Deborah F.
Rabe Andriamaharavo, Nirina
Kearsley, Anthony J.
Source :
Journal of Mass Spectrometry. Oct2024, Vol. 59 Issue 10, p1-9. 9p.
Publication Year :
2024

Abstract

This study employs a high‐dimensional consensus mass spectral (HDCMS) similarity scoring technique to discriminate isomers collected using an electron ionization mass spectrometer. The HDCMS method was previously introduced and applied to the discrimination of mass spectra of constitutional isomers, methamphetamine and phentermine, collected with direct analysis real‐time mass spectrometry (DART‐MS). The method formulates the problem of discriminating mass spectra in a mathematical Hilbert space and is hence called "high dimensional." It requires replicate mass spectra to build a Gaussian model and evaluate the inner products between these functions. The resulting measurement variability is used as a signature by which to discriminate spectra. In this work, HDCMS is tested on electron impact ionization (EI) mass spectra of 7 terpene and terpene‐related (C10H16 and C10H14) isomers with experimental retention indices that differ by less than 30 and with traditional cosine similarity scores greater than 0.9, on a scale of 0 to 1, when compared with at least one other compound in the test set. Using identical instrument parameters, 15 replicate gas chromatography–electron ionization–mass spectrometry (GC‐EI‐MS) spectra of each isomer were collected and separated into distinct library and query sets. The HDCMS algorithm discriminated each isomer, indicating the method's potential. Because the method requires replicate measurements, observations from a simple heuristic study of the number of replicates required to discriminate these isomers is presented. The paper concludes with a discussion of compound discrimination using HDCMS and the benefits and drawbacks of applying the method to EI‐MS data. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10765174
Volume :
59
Issue :
10
Database :
Academic Search Index
Journal :
Journal of Mass Spectrometry
Publication Type :
Academic Journal
Accession number :
180170662
Full Text :
https://doi.org/10.1002/jms.5084