4.3 Article

Estimating the health benefit of reducing indoor air pollution in a randomized environmental intervention

Publisher

OXFORD UNIV PRESS
DOI: 10.1111/rssa.12073

Keywords

Asthma; Bayesian; Clinical trial; Particulate matter; Principal stratification

Funding

  1. National Institute of Environmental Health Sciences [R01ES019560, R21ES020152, T32012871, P50ES015903, P01ES018176, P30ES03819]
  2. US Environmental Protection Agency [R832139]
  3. National Institute of Allergy and Infectious Diseases [R01AI070630, U01AI083238]
  4. Johns Hopkins University School of Medicine General Clinical Research Center from the National Center for Research Resources [M01-RR00052]

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Recent intervention studies targeted at reducing indoor air pollution have demonstrated both the ability to improve respiratory health outcomes and to reduce particulate matter (PM) levels in the home. However, these studies generally do not address whether it is the reduction in PM levels specifically that improves respiratory health. We apply the method of principal stratification to data from a randomized air cleaner intervention designed to reduce indoor PM in homes of children with asthma. We estimate the health benefit of the intervention among study subjects who would experience a substantial reduction in PM in response to the intervention. For those subjects we find an increase in symptom-free days that is almost three times as large as the overall intention-to-treat effect. We also explore the presence of treatment effects among those subjects whose PM levels would not respond to the air cleaner. This analysis demonstrates the usefulness of principal stratification for environmental intervention trials and its potential for much broader application in this area.

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