Volume 38 | Number 4 | August 2003

Abstract List

Claire M. Spettell, Terry C. Wall, Jeroan Allison, Jaimee Calhoun, Richard Kobylinski, Rachel Fargason, Catarina I. Kiefe


Background

Multiple factors limit identification of patients with depression from administrative data. However, administrative data drives many quality measurement systems, including the Health Plan Employer Data and Information Set (HEDIS).


Methods

We investigated two algorithms for identification of physician‐recognized depression. The study sample was drawn from primary care physician member panels of a large managed care organization. All members were continuously enrolled between January 1 and December 31, 1997. required at least two criteria in any combination: (1) an outpatient diagnosis of depression or (2) a pharmacy claim for an antidepressant. included the same criteria as algorithm 1, but required a diagnosis of depression for all patients. With algorithm 1, we identified the medical records of a stratified, random subset of patients with and without depression (=465). We also identified patients of primary care physicians with a minimum of 10 depressed members by algorithm 1 (=32,819) and algorithm 2 (=6,837).


Results

The sensitivity, specificity, and positive predictive values were: Algorithm 1: 95 percent, 65 percent, 49 percent; : 52 percent, 88 percent, 60 percent. Compared to algorithm 1, profiles from algorithm 2 revealed higher rates of follow‐up visits (43 percent, 55 percent) and appropriate antidepressant dosage acutely (82 percent, 90 percent) and chronically (83 percent, 91 percent) (<0.05 for all).


Conclusions

Both algorithms had high false positive rates. Denominator construction (algorithm 1 versus 2) contributed significantly to variability in measured quality. Our findings raise concern about interpreting depression quality reports based upon administrative data.