Inverse propensity weighting to adjust for bias in fatal crash samples

Accid Anal Prev. 2013 Jan:50:1244-51. doi: 10.1016/j.aap.2012.09.025. Epub 2012 Oct 22.

Abstract

Background: The Fatality Analysis Reporting System (FARS) has data from all areas of the United States, but is limited to fatal crashes. The National Automotive Sampling System-General Estimates System (NASS-GES) includes all types of serious traffic crashes, but is limited to a few sampling areas. Combining the strengths of these two samples might offset their limitations.

Methods: Logistic regression (allowing for sample design, and conditional upon selected person-, event-, and geographic-level factors) was used to determine the propensity (P(FC)) for each injured person in 2002-2008 NASS-GES data to be in a fatal crash sample. NASS-GES subjects injured in fatal crashes were then reweighted by a factor of W(FC)=(1/P(FC)) to create a "pseudopopulation". The weights (W(FC)) derived from NASS-GES were also applied to injured subjects in 2007 FARS data to create another pseudopopulation. Characteristics and mortality predictions from these artificial pseudopopulations were compared to those obtained using the original NASS-GES sample. The sum of W(FC) for FARS cases was also used to estimate the number of crash injuries for rural and urban locations, and compared to independently reported data.

Results: Compared to regression results using the original NASS-GES sample, unadjusted models based on fatal crash samples gave inaccurate estimates of covariate effects on mortality for injured subjects. After reweighting using W(FC), estimates based upon the pseudopopulations were similar to results obtained using the original NASS-GES sample. The sum of W(FC) for FARS cases gave reasonable estimates for the number of crash injuries in rural and urban locations, and provided an estimate of the rural effect on mortality after controlling for other factors.

Conclusions: Weights derived from analysis of NASS-GES data (the inverse propensity for selection into a fatal crash sample) allow appropriate adjustment for selection bias in fatal crash samples, including FARS.

Publication types

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

MeSH terms

  • Accidents, Traffic / mortality*
  • Bias
  • Databases, Factual
  • Female
  • Humans
  • Logistic Models
  • Male
  • Propensity Score*
  • Risk Factors
  • United States / epidemiology