Variability of multi-omics profiles in a population-based child cohort

Gallego-Paüls, Marta and Hernández-Ferrer, Carles and Bustamante, Mariona and Basagaña, Xavier and Barrera-Gómez, Jose and Lau, Chung-Ho E. and Siskos, Alexandros P. and Vives-Usano, Marta and Ruiz-Arenas, Carlos and Wright, John and Slama, Remy and Heude, Barbara and Casas, Maribel and Grazuleviciene, Regina and Chatzi, Leda and Borràs, Eva and Sabidó, Eduard and Carracedo, Ángel and Estivill, Xavier and Urquiza, Jose and Coen, Muireann and Keun, Hector C. and González, Juan R. and Vrijheid, Martine and Maitre, Léa (2021) Variability of multi-omics profiles in a population-based child cohort. BMC Medicine, 19 (1). ISSN 1741-7015

[thumbnail of s12916-021-02027-z.pdf] Text
s12916-021-02027-z.pdf - Published Version

Download (2MB)

Abstract

Multiple omics technologies are increasingly applied to detect early, subtle molecular responses to environmental stressors for future disease risk prevention. However, there is an urgent need for further evaluation of stability and variability of omics profiles in healthy individuals, especially during childhood.

Methods
We aimed to estimate intra-, inter-individual and cohort variability of multi-omics profiles (blood DNA methylation, gene expression, miRNA, proteins and serum and urine metabolites) measured 6 months apart in 156 healthy children from five European countries. We further performed a multi-omics network analysis to establish clusters of co-varying omics features and assessed the contribution of key variables (including biological traits and sample collection parameters) to omics variability.

Results
All omics displayed a large range of intra- and inter-individual variability depending on each omics feature, although all presented a highest median intra-individual variability. DNA methylation was the most stable profile (median 37.6% inter-individual variability) while gene expression was the least stable (6.6%). Among the least stable features, we identified 1% cross-omics co-variation between CpGs and metabolites (e.g. glucose and CpGs related to obesity and type 2 diabetes). Explanatory variables, including age and body mass index (BMI), explained up to 9% of serum metabolite variability.

Conclusions
Methylation and targeted serum metabolomics are the most reliable omics to implement in single time-point measurements in large cross-sectional studies. In the case of metabolomics, sample collection and individual traits (e.g. BMI) are important parameters to control for improved comparability, at the study design or analysis stage. This study will be valuable for the design and interpretation of epidemiological studies that aim to link omics signatures to disease, environmental exposures, or both.

Item Type: Article
Subjects: ArticleGate > Medical Science
Depositing User: APLOS Lib
Date Deposited: 05 Jul 2022 04:24
Last Modified: 05 Jul 2022 04:24
URI: http://ebooks.pubstmlibrary.com/id/eprint/224

Actions (login required)

View Item
View Item