4.8 Article

State-of-the-art methods for exposure-health studies: Results from the exposome data challenge event

期刊

ENVIRONMENT INTERNATIONAL
卷 168, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.envint.2022.107422

关键词

Exposome; Statistical models; Multi-omics; Multiple exposures; Environmental exposures

资金

  1. European Community [308333, 874583]
  2. Juan de la Cierva Incorporacion fellowship - Spanish Ministerio de Economia, Industria y Competitividad [IJC2018-035394-I]
  3. Spanish Ministry of Science and Innovation through the Centro de Excelencia Severo Ochoa 2019-2023 Program [CEX2018-000806-S]
  4. Generalitat de Catalunya through the CERCA Program
  5. CIFRE PhD fellowship from Meersens [2020/1297]
  6. National Institute of Environmental Health Sciences, US [P30ES023515]

向作者/读者索取更多资源

The exposome recognizes the simultaneous exposure of individuals to various environmental factors and aims to discover the factors behind diseases using a holistic approach. However, quantifying the health effects of complex exposure mixtures presents challenges. To address these challenges, the Barcelona Institute for Global Health organized a data challenge event where researchers from different disciplines could compete and apply state-of-the-art methods on a partially simulated exposome dataset.
The exposome recognizes that individuals are exposed simultaneously to a multitude of different environmental factors and takes a holistic approach to the discovery of etiological factors for disease. However, challenges arise when trying to quantify the health effects of complex exposure mixtures. Analytical challenges include dealing with high dimensionality, studying the combined effects of these exposures and their interactions, integrating causal pathways, and integrating high-throughput omits layers. To tackle these challenges, the Barcelona Institute for Global Health (ISGlobal) held a data challenge event open to researchers from all over the world and from all expertises. Analysts had a chance to compete and apply state-of-the-art methods on a common partially simulated exposome dataset (based on real case data from the HELIX project) with multiple correlated exposure variables (P > 100 exposure variables) arising from general and personal environments at different time points, biological molecular data (multi-omics: DNA methylation, gene expression, proteins, metabolomics) and multiple clinical phenotypes in 1301 mother-child pairs. Most of the methods presented included feature selection or feature reduction to deal with the high dimensionality of the exposome dataset. Several approaches explicitly searched for combined effects of exposures and/or their interactions using linear index models or response surface methods, including Bayesian methods. Other methods dealt with the multi-omits dataset in mediation analyses using multiple-step approaches. Here we discuss features of the statistical models used and provide the data and codes used, so that analysts have examples of implementation and can learn how to use these methods. Overall, the exposome data challenge presented a unique opportunity for researchers from different disciplines to create and share state-of-the-art analytical methods, setting a new standard for open science in the exposome and environmental health field.

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