Mass Difference Maps and Their Application for the Recalibration of Mass Spectrometric Data in Nontargeted Metabolomics.


Journal

Analytical chemistry
ISSN: 1520-6882
Titre abrégé: Anal Chem
Pays: United States
ID NLM: 0370536

Informations de publication

Date de publication:
05 03 2019
Historique:
pubmed: 2 2 2019
medline: 20 8 2020
entrez: 2 2 2019
Statut: ppublish

Résumé

Modern high-resolution mass spectrometry provides the great potential to analyze exact masses of thousands of molecules in one run. In addition, the high instrumental mass accuracy allows for high-precision formula assignments narrowing down tremendously the chemical space of unknown compounds. The adequate values for a mass accuracy are normally achieved by a proper calibration procedure that usually implies using known internal or external standards. This approach might not always be sufficient in cases when systematic error is highly prevalent. Therefore, additional recalibration steps are required. In this work, the concept of mass difference maps (MDiMs) is introduced with a focus on the visualization and investigation of all the pairwise differences between considered masses. Given an adequate reference list of sufficient size, MDiMs can facilitate the detection of a systematic error component. Such a property can be potentially applied for spectral recalibration. Consequently, a novel approach to describe the process of the correction of experimentally derived masses is presented. The method is based on the estimation of the density of data points on MDiMs using Gaussian kernels followed by a curve fitting with an adapted version of the particle swarm optimization algorithm. The described recalibration procedure is examined on simulated as well as real mass spectrometric data. For the latter case, blood plasma samples were analyzed by Fourier transform ion cyclotron resonance mass spectrometry. Nevertheless, due to its inherent flexibility, the method can be easily extended to other low- and high-resolution platforms and/or sample types.

Identifiants

pubmed: 30707557
doi: 10.1021/acs.analchem.8b04555
doi:

Types de publication

Journal Article Research Support, Non-U.S. Gov't

Langues

eng

Sous-ensembles de citation

IM

Pagination

3350-3358

Auteurs

Kirill S Smirnov (KS)

Research Unit Analytical BioGeoChemistry , Helmholtz Zentrum München, German Research Center for Environmental Health , Ingolstädter Landstraße 1 , 85764 Neuherberg , Germany.

Sara Forcisi (S)

Research Unit Analytical BioGeoChemistry , Helmholtz Zentrum München, German Research Center for Environmental Health , Ingolstädter Landstraße 1 , 85764 Neuherberg , Germany.
German Center for Diabetes Research (DZD) , Ingolstädter Landstraße 1 , 85764 Neuherberg , Germany.

Franco Moritz (F)

Research Unit Analytical BioGeoChemistry , Helmholtz Zentrum München, German Research Center for Environmental Health , Ingolstädter Landstraße 1 , 85764 Neuherberg , Germany.

Marianna Lucio (M)

Research Unit Analytical BioGeoChemistry , Helmholtz Zentrum München, German Research Center for Environmental Health , Ingolstädter Landstraße 1 , 85764 Neuherberg , Germany.

Philippe Schmitt-Kopplin (P)

Research Unit Analytical BioGeoChemistry , Helmholtz Zentrum München, German Research Center for Environmental Health , Ingolstädter Landstraße 1 , 85764 Neuherberg , Germany.
German Center for Diabetes Research (DZD) , Ingolstädter Landstraße 1 , 85764 Neuherberg , Germany.
Chair of Analytical Food Chemistry , Technische Universität München , Alte Akademie 10 , 85354 Freising , Germany.

Articles similaires

Selecting optimal software code descriptors-The case of Java.

Yegor Bugayenko, Zamira Kholmatova, Artem Kruglov et al.
1.00
Software Algorithms Programming Languages
1.00
Humans Magnetic Resonance Imaging Brain Infant, Newborn Infant, Premature
Humans Algorithms Software Artificial Intelligence Computer Simulation

Unsupervised learning for real-time and continuous gait phase detection.

Dollaporn Anopas, Yodchanan Wongsawat, Jetsada Arnin
1.00
Humans Gait Neural Networks, Computer Unsupervised Machine Learning Walking

Classifications MeSH