Prenatal metal concentrations and childhood cardio-metabolic risk using Bayesian Kernel Machine Regression to assess mixture and interaction effects.

View Abstract

BACKGROUND

Trace metal concentrations may affect cardio-metabolic risk, but the role of prenatal exposure is unclear. We examined: 1) the relationship between blood metal concentrations during pregnancy and child cardio-metabolic risk factors; 2) overall effects of metals mixture (essential vs. nonessential); and 3) interactions between metals.

METHODS

We measured 11 metals in maternal 2 trimester whole blood in a prospective birth cohort in Mexico City. In children 4-6 years old, we measured body mass index (BMI), percent body fat, and blood pressure (N=609); and plasma hemoglobin A1C (HbA1c) , non-high density lipoprotein (HDL) cholesterol, triglycerides, leptin, and adiponectin (N=411). We constructed cardio-metabolic component scores using age- and sex-adjusted z-scores and averaged five scores to create a global risk score. We estimated linear associations of each metal with individual z-scores and used Bayesian Kernel Machine Regression to assess metal mixtures and interactions.

RESULTS

Higher total metals were associated with lower HbA1c, leptin, and systolic blood pressure, and with higher adiponectin and non-HDL cholesterol. We observed no interactions between metals. Higher selenium was associated with lower triglycerides in linear (β=-1.01 z-score units per 1 unit ln(Se), 95%CI = -1.84; -0.18) and Bayesian Kernel Machine Regression models. Manganese was associated with decreased HbA1c in linear models (β = -0.32 and 95% CI: -0.61, -0.03). Antimony and arsenic were associated with lower leptin in Bayesian Kernel Machine Regression models. Essential metals were more strongly associated with cardio-metabolic risk than were nonessential metals.

CONCLUSIONS

Low essential metals during pregnancy were associated with increased cardio-metabolic risk factors in childhood.

Investigators
Abbreviation
Epidemiology
Publication Date
2018-11-30
Pubmed ID
30507649
Medium
Print-Electronic
Full Title
Prenatal metal concentrations and childhood cardio-metabolic risk using Bayesian Kernel Machine Regression to assess mixture and interaction effects.
Authors
Kupsco A, Kioumourtzoglou MA, Just AC, Amarasiriwardena C, Estrada-Gutierrez G, Cantoral A, Sanders AP, Braun JM, Svensson K, Brennan KJ, Oken E, Wright RO, Baccarelli AA, Téllez-Rojo MM