| Literature DB >> 33707505 |
Nasim Bararpour1,2, Federica Gilardi1,2, Cristian Carmeli3,4, Jonathan Sidibe1, Julijana Ivanisevic5, Tiziana Caputo6, Marc Augsburger1, Silke Grabherr7, Béatrice Desvergne6, Nicolas Guex8, Murielle Bochud3, Aurelien Thomas9,10.
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.Entities:
Year: 2021 PMID: 33707505 PMCID: PMC7952378 DOI: 10.1038/s41598-021-84824-3
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379