Englander Institute for Precision Medicine

Systematic Evaluation of Normalization Methods for Glycomics Data Based on Performance of Network Inference.

TitleSystematic Evaluation of Normalization Methods for Glycomics Data Based on Performance of Network Inference.
Publication TypeJournal Article
Year of Publication2020
AuthorsBenedetti E, Gerstner N, Pučić-Baković M, Keser T, Reiding KR, L Ruhaak R, Štambuk T, Selman MHJ, Rudan I, Polašek O, Hayward C, Beekman M, Slagboom E, Wuhrer M, Dunlop MG, Lauc G, Krumsiek J
JournalMetabolites
Volume10
Issue7
Date Published2020 Jul 02
ISSN2218-1989
Abstract

Glycomics measurements, like all other high-throughput technologies, are subject to technical variation due to fluctuations in the experimental conditions. The removal of this non-biological signal from the data is referred to as normalization. Contrary to other omics data types, a systematic evaluation of normalization options for glycomics data has not been published so far. In this paper, we assess the quality of different normalization strategies for glycomics data with an innovative approach. It has been shown previously that Gaussian Graphical Models (GGMs) inferred from glycomics data are able to identify enzymatic steps in the glycan synthesis pathways in a data-driven fashion. Based on this finding, here, we quantify the quality of a given normalization method according to how well a GGM inferred from the respective normalized data reconstructs known synthesis reactions in the glycosylation pathway. The method therefore exploits a biological measure of goodness. We analyzed 23 different normalization combinations applied to six large-scale glycomics cohorts across three experimental platforms: Liquid Chromatography - ElectroSpray Ionization - Mass Spectrometry (LC-ESI-MS), Ultra High Performance Liquid Chromatography with Fluorescence Detection (UHPLC-FLD), and Matrix Assisted Laser Desorption Ionization - Furier Transform Ion Cyclotron Resonance - Mass Spectrometry (MALDI-FTICR-MS). Based on our results, we recommend normalizing glycan data using the 'Probabilistic Quotient' method followed by log-transformation, irrespective of the measurement platform. This recommendation is further supported by an additional analysis, where we ranked normalization methods based on their statistical associations with age, a factor known to associate with glycomics measurements.

DOI10.3390/metabo10070271
Alternate JournalMetabolites
PubMed ID32630764
PubMed Central IDPMC7408386
Grant List12076 / CRUK_ / Cancer Research UK / United Kingdom
MC_U127527198 / MRC_ / Medical Research Council / United Kingdom
305280 / / European Commission MIMOmics /
KK.01.1.1.01.0010 / / European Structural and Investment Funds /
721815 / / European Commission IMForFuture /
LSHG-CT-2006-018947 / / EUROSPAN /
01ZX1313C / / German Federal Ministry of Education and Research /
216-1080315-0302 / / Republic of Croatia Ministry of Science, Education and Sports /
MC_UU_00007/10 / MRC_ / Medical Research Council / United Kingdom
8875 / / Croatian Science Foundation /
MC_UU_00007/1 / MRC_ / Medical Research Council / United Kingdom
602936 / / European Commission CarTarDis /
MC_PC_U127527198 / MRC_ / Medical Research Council / United Kingdom
313010 / / BBMRI-LPC /

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