Part 1. Statistical Learning Methods for the Effects of Multiple Air Pollution Constituents.

Sep 4, 2015Research report (Health Effects Institute)

Statistical Learning Approaches to Study the Effects of Multiple Air Pollutants

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Abstract

The analyses of the MOBILIZE data indicated a linear association of black carbon or copper exposure with standing diastolic blood pressure.

  • Component-wise variable selection effectively identifies important pollutants in mixtures when correlations among their concentrations are low to moderate.
  • The hierarchical variable-selection method is more effective in high-dimensional, high-correlation settings.
  • In the MOBILIZE study, black carbon and copper were associated with increased diastolic blood pressure, while sulfur exposure was linked to systolic blood pressure.
  • In the Harvard Chan School canine study, manganese concentrations were associated with increased heart rate, but no associations were found for blood pressure.
  • The proposed Bayesian kernel machine regression methods are the first to estimate health effects of multipollutant mixtures, addressing limitations in existing statistical methods.

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