DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies

Abstract As a powerful phenotyping technology, metabolomics provides new opportunities in biomarker discovery through metabolome-wide association studies (MWAS) and the identification of metabolites having a regulatory effect in various biological processes. While mass spectrometry-based (MS) metabo...

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Main Authors: Nasim Bararpour, Federica Gilardi, Cristian Carmeli, Jonathan Sidibe, Julijana Ivanisevic, Tiziana Caputo, Marc Augsburger, Silke Grabherr, Béatrice Desvergne, Nicolas Guex, Murielle Bochud, Aurelien Thomas
Format: Article
Language:English
Published: Nature Publishing Group 2021-03-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-84824-3
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spelling doaj-90d0655bcafa4df9b625fb9bc7e818882021-03-11T12:23:38ZengNature Publishing GroupScientific Reports2045-23222021-03-0111111310.1038/s41598-021-84824-3DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studiesNasim Bararpour0Federica Gilardi1Cristian Carmeli2Jonathan Sidibe3Julijana Ivanisevic4Tiziana Caputo5Marc Augsburger6Silke Grabherr7Béatrice Desvergne8Nicolas Guex9Murielle Bochud10Aurelien Thomas11Unit of Forensic Toxicology and Chemistry, CURML, Lausanne University Hospital-Geneva University HospitalsUnit of Forensic Toxicology and Chemistry, CURML, Lausanne University Hospital-Geneva University HospitalsCenter for Primary Care and Public Health (Unisanté), University of LausanneUnit of Forensic Toxicology and Chemistry, CURML, Lausanne University Hospital-Geneva University HospitalsUnit of Metabolomics, Faculty of Biology and Medicine, University of LausanneCenter for Integrative Genomics, University of LausanneUnit of Forensic Toxicology and Chemistry, CURML, Lausanne University Hospital-Geneva University HospitalsCURML, Lausanne University Hospital-Geneva University HospitalsCenter for Integrative Genomics, University of LausanneBioInformatics Competence Center, University of LausanneCenter for Primary Care and Public Health (Unisanté), University of LausanneUnit of Forensic Toxicology and Chemistry, CURML, Lausanne University Hospital-Geneva University HospitalsAbstract As a powerful phenotyping technology, metabolomics provides new opportunities in biomarker discovery through metabolome-wide association studies (MWAS) and the identification of metabolites having a regulatory effect in various biological processes. While mass spectrometry-based (MS) metabolomics assays are endowed with high throughput and sensitivity, MWAS are doomed to long-term data acquisition generating an overtime-analytical signal drift that can hinder the uncovering of real biologically relevant changes. We developed “dbnorm”, a package in the R environment, which allows for an easy comparison of the model performance of advanced statistical tools commonly used in metabolomics to remove batch effects from large metabolomics datasets. “dbnorm” integrates advanced statistical tools to inspect the dataset structure not only at the macroscopic (sample batches) scale, but also at the microscopic (metabolic features) level. To compare the model performance on data correction, “dbnorm” assigns a score that help users identify the best fitting model for each dataset. In this study, we applied “dbnorm” to two large-scale metabolomics datasets as a proof of concept. We demonstrate that “dbnorm” allows for the accurate selection of the most appropriate statistical tool to efficiently remove the overtime signal drift and to focus on the relevant biological components of complex datasets.https://doi.org/10.1038/s41598-021-84824-3
collection DOAJ
language English
format Article
sources DOAJ
author Nasim Bararpour
Federica Gilardi
Cristian Carmeli
Jonathan Sidibe
Julijana Ivanisevic
Tiziana Caputo
Marc Augsburger
Silke Grabherr
Béatrice Desvergne
Nicolas Guex
Murielle Bochud
Aurelien Thomas
spellingShingle Nasim Bararpour
Federica Gilardi
Cristian Carmeli
Jonathan Sidibe
Julijana Ivanisevic
Tiziana Caputo
Marc Augsburger
Silke Grabherr
Béatrice Desvergne
Nicolas Guex
Murielle Bochud
Aurelien Thomas
DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies
Scientific Reports
author_facet Nasim Bararpour
Federica Gilardi
Cristian Carmeli
Jonathan Sidibe
Julijana Ivanisevic
Tiziana Caputo
Marc Augsburger
Silke Grabherr
Béatrice Desvergne
Nicolas Guex
Murielle Bochud
Aurelien Thomas
author_sort Nasim Bararpour
title DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies
title_short DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies
title_full DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies
title_fullStr DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies
title_full_unstemmed DBnorm as an R package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies
title_sort dbnorm as an r package for the comparison and selection of appropriate statistical methods for batch effect correction in metabolomic studies
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-03-01
description Abstract As a powerful phenotyping technology, metabolomics provides new opportunities in biomarker discovery through metabolome-wide association studies (MWAS) and the identification of metabolites having a regulatory effect in various biological processes. While mass spectrometry-based (MS) metabolomics assays are endowed with high throughput and sensitivity, MWAS are doomed to long-term data acquisition generating an overtime-analytical signal drift that can hinder the uncovering of real biologically relevant changes. We developed “dbnorm”, a package in the R environment, which allows for an easy comparison of the model performance of advanced statistical tools commonly used in metabolomics to remove batch effects from large metabolomics datasets. “dbnorm” integrates advanced statistical tools to inspect the dataset structure not only at the macroscopic (sample batches) scale, but also at the microscopic (metabolic features) level. To compare the model performance on data correction, “dbnorm” assigns a score that help users identify the best fitting model for each dataset. In this study, we applied “dbnorm” to two large-scale metabolomics datasets as a proof of concept. We demonstrate that “dbnorm” allows for the accurate selection of the most appropriate statistical tool to efficiently remove the overtime signal drift and to focus on the relevant biological components of complex datasets.
url https://doi.org/10.1038/s41598-021-84824-3
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