4.6 Article

A Bayesian Multi-Outcome Analysis of Fine Particulate Matter and Cardiorespiratory Hospitalizations

Journal

EPIDEMIOLOGY
Volume 33, Issue 2, Pages 176-184

Publisher

LIPPINCOTT WILLIAMS & WILKINS
DOI: 10.1097/EDE.0000000000001456

Keywords

Bayesian analysis; Multi-outcome regression; Particulate matter; Cardiovascular diseases; Respiratory tract diseases; Hospitalization

Funding

  1. National Institutes of Health (NIH) [R01 MD012769, R01 AG06023201A1]
  2. NIH [R01 ES026217, R01 ES030616, R01 ES028033]
  3. National Institute of Environmental Health Sciences (NIEHS)
  4. United States Environmental Protection Agency (US EPA) [83587201-0]
  5. Health Effects Institute (HEI) [4953-RFA14-3/16-4]
  6. US EPA [CR-83467701]

Ask authors/readers for more resources

This study used a new statistical approach to uncover variations in the association between short-term PM2.5 exposure and hospitalizations for cardiovascular and respiratory diseases, while controlling for patient characteristics, time trends, and environmental confounders.
Background: Short-term fine particulate matter (PM2.5) exposure is positively associated with acute cardiovascular and respiratory events. Understanding whether this association varies across specific cardiovascular and respiratory conditions has important biologic, clinical, and public health implications. Methods: We conducted a time-stratified case-crossover study of hospitalizations from 2000 through 2014 among United States Medicare beneficiaries aged 65+. The outcomes were hospitalizations with any of 57 cardiovascular and 32 respiratory discharge diagnoses. We estimated associations with two-day moving average PM2.5 as a piecewise linear term with a knot at PM2.5 = 25 g/m(3). We used Multi-Outcome Regression with Tree-structured Shrinkage (MOReTreeS) to identify de novo groups of related diseases such that PM2.5 associations are: (1) similar within outcome groups; but (2) different between outcome groups. We adjusted for temperature, humidity, and individual-level characteristics. We introduce an R package, moretrees. Results: Our dataset included 16,007,293 cardiovascular and 8,690,837 respiratory hospitalizations. Of 57 cardiovascular diseases, 51 were grouped and positively associated with PM2.5. We observed a stronger positive association for heart failure, which formed a separate group. We observed negative associations for groups containing the outcomes other aneurysm and intracranial hemorrhage. Of 32 respiratory outcomes, 31 were grouped and were positively associated with PM2.5. Influenza formed a separate group with a negative association. Conclusions: We used a new statistical approach, MOReTreeS, to uncover variation in the association between short-term PM2.5 exposure and hospitalizations for cardiovascular and respiratory causes controlling for patient characteristics, time trends, and environmental confounders.

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