A new look at quantifying tobacco exposure during pregnancy using fuzzy clustering

Hua Fang, Craig Johnson, Christian Stopp, Kimberly Andrews Espy

Research output: Contribution to journalArticle

23 Citations (Scopus)

Abstract

Background: Prenatal tobacco exposure is a risk factor for the development of externalizing behaviors and is associated with several adverse health outcomes. Because pregnancy smoking is a complex behavior with both daily fluctuations and changes over the course of pregnancy, quantifying tobacco exposure is a significant challenge. To better measure the degree of tobacco exposure, costly biological specimens and repeated self-report measures of smoking typically are collected throughout pregnancy. With such designs, there are multiple, and substantially correlated, indices that can be integrated via new statistical methods to identify patterns of prenatal exposure. Method: A multiple-imputation-based fuzzy clustering technique was designed to characterize topography of prenatal exposure. This method leveraged all repeatedly measured maternal smoking variables in our sample data, including (a) cigarette brand; (b) Fagerstrom nicotine dependence item scores; (c) self-reported smoking; and (d) cotinine level in maternal urine and infant meconium samples. Identified exposure groups then were confirmed using a suite of clustering validation indices based on multiple imputed datasets. The classifications were validated against irritable reactivity in the first month of life and birth weight of 361 neonates (Male_n=185; Female_n=176; Gestational Age_Mean=39weeks). Results: This proposed approach identified three exposure groups, non-exposed, lighter-tobacco-exposed, and heavier-tobacco-exposed based on high-dimensional attributes. Unlike cut-off score derived groups, these groupings reflect complex smoking behavior and individual variation of nicotine metabolism across pregnancy. The identified groups predicted differences in birth weight and in the pattern of change in neonatal irritable reactivity, as well as resulted in increased predictive power. Multiple-imputation-based fuzzy clustering appears to be a useful method to categorize patterns of exposure and their impact on outcomes.

Original languageEnglish (US)
Pages (from-to)155-165
Number of pages11
JournalNeurotoxicology and Teratology
Volume33
Issue number1
DOIs
StatePublished - Jan 2011
Externally publishedYes

Fingerprint

Tobacco
Fuzzy clustering
Cluster Analysis
Smoking
Pregnancy
Nicotine
Birth Weight
Mothers
Cotinine
Meconium
Tobacco Use Disorder
Metabolism
Tobacco Products
Self Report
Topography
Gestational Age
Statistical methods
Health
Urine
Newborn Infant

Keywords

  • Exposure pattern
  • Fuzzy clustering
  • Irritable reactivity
  • Multiple imputation
  • Prenatal tobacco exposure

ASJC Scopus subject areas

  • Developmental Neuroscience
  • Cellular and Molecular Neuroscience
  • Toxicology

Cite this

A new look at quantifying tobacco exposure during pregnancy using fuzzy clustering. / Fang, Hua; Johnson, Craig; Stopp, Christian; Espy, Kimberly Andrews.

In: Neurotoxicology and Teratology, Vol. 33, No. 1, 01.2011, p. 155-165.

Research output: Contribution to journalArticle

Fang, Hua ; Johnson, Craig ; Stopp, Christian ; Espy, Kimberly Andrews. / A new look at quantifying tobacco exposure during pregnancy using fuzzy clustering. In: Neurotoxicology and Teratology. 2011 ; Vol. 33, No. 1. pp. 155-165.
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