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A multivariate approach to investigate the combined biological effects of multiple exposures

Authors :
Jain, Pooja
Vineis, Paolo
Liquet, Benoit
Vlaanderen, Jelle
Bodinier, Barbara
van Veldhoven, Karin
Kogevinas, Manolis
Athersuch, Toby
Font-Ribera, Laia
Villanueva, Cristina
Vermeulen, Roel
Chadeau-Hyam, Marc
Jain, Pooja
Vineis, Paolo
Liquet, Benoit
Vlaanderen, Jelle
Bodinier, Barbara
van Veldhoven, Karin
Kogevinas, Manolis
Athersuch, Toby
Font-Ribera, Laia
Villanueva, Cristina
Vermeulen, Roel
Chadeau-Hyam, Marc
Source :
Journal of Epidemiology and Community Health
Publication Year :
2018

Abstract

Epidemiological studies provide evidence that environmental exposures may affect health through complex mixtures. Formal investigation of the effect of exposure mixtures is usually achieved by modelling interactions, which relies on strong assumptions relating to the identity and the number of the exposures involved in such interactions, and on the order and parametric form of these interactions. These hypotheses become difficult to formulate and justify in an exposome context, where influential exposures are numerous and heterogeneous. To capture both the complexity of the exposome and its possibly pleiotropic effects, models handling multivariate predictors and responses, such as partial least squares (PLS) algorithms, can prove useful. As an illustrative example, we applied PLS models to data from a study investigating the inflammatory response (blood concentration of 13 immune markers) to the exposure to four disinfection by-products (one brominated and three chlorinated compounds), while swimming in a pool. To accommodate the multiple observations per participant (n=60; before and after the swim), we adopted a multilevel extension of PLS algorithms, including sparse PLS models shrinking loadings coefficients of unimportant predictors (exposures) and/or responses (protein levels). Despite the strong correlation among co-occurring exposures, our approach identified a subset of exposures (n=3/4) affecting the exhaled levels of 8 (out of 13) immune markers. PLS algorithms can easily scale to high-dimensional exposures and responses, and prove useful for exposome research to identify sparse sets of exposures jointly affecting a set of (selected) biological markers. Our descriptive work may guide these extensions for higher dimensional data.

Details

Database :
OAIster
Journal :
Journal of Epidemiology and Community Health
Notes :
application/pdf
Publication Type :
Electronic Resource
Accession number :
edsoai.on1104091056
Document Type :
Electronic Resource