Issue 16, 2020

Metabolite collision cross section prediction without energy-minimized structures

Abstract

Matching experimental ion mobility-mass spectrometry data to computationally-generated collision cross section (CCS) values enables more confident metabolite identifications. Here, we show for the first time that accurately predicting CCS values with simple models for the largest library of metabolite cross sections is indeed possible, achieving a root mean square error of 7.0 Å2 (median error of ∼2%) using linear methods accesible to most researchers. A comparison on the performance of 2D vs. 3D molecular descriptors for the purposes of CCS prediction is also presented for the first time, enabling CCS prediction without a priori knowledge of the metabolite's energy-minimized structure.

Graphical abstract: Metabolite collision cross section prediction without energy-minimized structures

Supplementary files

Article information

Article type
Communication
Submitted
29 Janv. 2020
Accepted
18 Jūn. 2020
First published
22 Jūn. 2020

Analyst, 2020,145, 5414-5418

Metabolite collision cross section prediction without energy-minimized structures

M. T. Soper-Hopper, J. Vandegrift, E. S. Baker and F. M. Fernández, Analyst, 2020, 145, 5414 DOI: 10.1039/D0AN00198H

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