Authors

  1. Hirozawa, Anne M. MPH
  2. Montez-Rath, Maria E. PhD
  3. Johnson, Elizabeth C. MD
  4. Solnit, Stephen A. BA
  5. Drennan, Michael J. MD
  6. Katz, Mitchell H. MD
  7. Marx, Rani PhD, MPH

Abstract

We compared prospective risk adjustment models for adjusting patient panels at the San Francisco Department of Public Health. We used 4 statistical models (linear regression, two-part model, zero-inflated Poisson, and zero-inflated negative binomial) and 4 subsets of predictor variables (age/gender categories, chronic diagnoses, homelessness, and a loss to follow-up indicator) to predict primary care visit frequency. Predicted visit frequency was then used to calculate patient weights and adjusted panel sizes. The two-part model using all predictor variables performed best (R2 = 0.20). This model, designed specifically for safety net patients, may prove useful for panel adjustment in other public health settings.