Evaluating effects of prenatal exposure to phthalate mixtures on birth weight: A comparison of three statistical approaches

Environ Int. 2018 Apr:113:231-239. doi: 10.1016/j.envint.2018.02.005. Epub 2018 Feb 20.

Abstract

Objectives: We applied three statistical approaches for evaluating associations between prenatal urinary concentrations of a mixture of phthalate metabolites and birth weight.

Methods: We included 300 women who provided 732 urine samples during pregnancy and delivered a singleton infant. We measured urinary concentrations of metabolites of di(2-ethylhexyl)-phthalate, di-isobutyl-, di-n-butyl-, butylbenzyl-, and diethyl phthalates. We applied 1) linear regressions; 2) classification methods [principal component analysis (PCA) and structural equation models (SEM)]; and 3) Bayesian kernel machine regression (BKMR), to evaluate associations between phthalate metabolite mixtures and birth weight adjusting for potential confounders. Data were presented as mean differences (95% CI) in birth weight (grams) as each phthalate increased from the 10th to the 90th percentile.

Results: When analyzing individual phthalate metabolites using linear regressions, each metabolite demonstrated a modest inverse association with birth weight [from -93 (-206, 21) to -49 (-164, 65)]. When simultaneously including all metabolites in a multivariable model, inflation of the estimates and standard errors were noted. PCA identified two principal components, both inversely associated with birth weight [-23 (-68, 22), -27 (-71, 17), respectively]. These inverse associations were confirmed when applying SEM. BKMR further identified that monoethyl and mono(2-ethylhexyl) phthalate and phthalate concentrations were linearly related to lower birth weight [-51(-164, 63) and -122 (-311, 67), respectively], and suggested no evidence of interaction between metabolites.

Conclusions: While none of the methods produced significant results, we demonstrated the potential issues arising using linear regression models in the context of correlated exposures. Among the other selected approaches, classification techniques identified common sources of exposures with implications for interventions, while BKMR further identified specific contributions of individual metabolites.

Keywords: Bayesian Kernel Machine Regression; Chemical mixtures; Principal component analysis; Structural equation models.

Publication types

  • Comparative Study
  • Research Support, N.I.H., Extramural

MeSH terms

  • Adult
  • Bayes Theorem
  • Birth Weight / drug effects*
  • Environmental Exposure / statistics & numerical data*
  • Environmental Pollutants / toxicity*
  • Female
  • Humans
  • Linear Models
  • Male
  • Phthalic Acids / toxicity*
  • Phthalic Acids / urine
  • Pregnancy
  • Prenatal Exposure Delayed Effects*
  • Principal Component Analysis
  • Prospective Studies

Substances

  • Environmental Pollutants
  • Phthalic Acids
  • phthalic acid
  • diethyl phthalate