Litcius/Paper detail

Improving confidence in lipidomic annotations by incorporating empirical ion mobility regression analysis and chemical class prediction

Bailey S. Rose, Jody C. May, Jaqueline A. Picache, Simona G. Codreanu, Stacy D. Sherrod, John A. McLean

2022Bioinformatics13 citationsDOIOpen Access PDF

Abstract

MOTIVATION: Mass spectrometry-based untargeted lipidomics aims to globally characterize the lipids and lipid-like molecules in biological systems. Ion mobility increases coverage and confidence by offering an additional dimension of separation and a highly reproducible metric for feature annotation, the collision cross-section (CCS). RESULTS: We present a data processing workflow to increase confidence in molecular class annotations based on CCS values. This approach uses class-specific regression models built from a standardized CCS repository (the Unified CCS Compendium) in a parallel scheme that combines a new annotation filtering approach with a machine learning class prediction strategy. In a proof-of-concept study using murine brain lipid extracts, 883 lipids were assigned higher confidence identifications using the filtering approach, which reduced the tentative candidate lists by over 50% on average. An additional 192 unannotated compounds were assigned a predicted chemical class. AVAILABILITY AND IMPLEMENTATION: All relevant source code is available at https://github.com/McLeanResearchGroup/CCS-filter. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

Topics & Concepts

Computer scienceCompendiumClass (philosophy)AnnotationLipidomicsWorkflowMetric (unit)Filter (signal processing)Data miningMachine learningArtificial intelligenceBioinformaticsDatabaseBiologyArchaeologyOperations managementHistoryComputer visionEconomicsMetabolomics and Mass Spectrometry StudiesMass Spectrometry Techniques and ApplicationsAdvanced Proteomics Techniques and Applications