Analysis of high-dimensional metabolomics data with complex temporal dynamics using RM-ASCA+

Balázs Erdős (Corresponding author), Johan A. Westerhuis, Michiel E. Adriaens, Shauna D. O’Donovan, Ren Xie, Cécile M. Singh-Povel, Age K. Smilde, Ilja C.W. Arts

Onderzoeksoutput: Bijdrage aan tijdschriftTijdschriftartikelAcademicpeer review

4 Citaten (Scopus)
32 Downloads (Pure)

Samenvatting

The intricate dependency structure of biological “omics” data, particularly those originating from longitudinal intervention studies with frequently sampled repeated measurements renders the analysis of such data challenging. The high-dimensionality, inter-relatedness of multiple outcomes, and heterogeneity in the studied systems all add to the difficulty in deriving meaningful information. In addition, the subtle differences in dynamics often deemed meaningful in nutritional intervention studies can be particularly challenging to quantify. In this work we demonstrate the use of quantitative longitudinal models within the repeated-measures ANOVA simultaneous component analysis+ (RM-ASCA+) framework to capture the dynamics in frequently sampled longitudinal data with multivariate outcomes. We illustrate the use of linear mixed models with polynomial and spline basis expansion of the time variable within RM-ASCA+ in order to quantify non-linear dynamics in a simulation study as well as in a metabolomics data set. We show that the proposed approach presents a convenient and interpretable way to systematically quantify and summarize multivariate outcomes in longitudinal studies while accounting for proper within subject dependency structures.

Originele taal-2Engels
Artikelnummere1011221
Aantal pagina's18
TijdschriftPLoS Computational Biology
Volume19
Nummer van het tijdschrift6
DOI's
StatusGepubliceerd - 23 jun. 2023

Bibliografische nota

Funding Information:
This project has been made possible by the Enabling Technologies Hotels programme of ZonMW (nr. 435005017, grant recipient I.C.W.A. and A.K.S.) with contributions from FrieslandCampina (https://www.frieslandcampina.com/). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

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