Using information on clinical conditions to predict high-cost patients
- PMID: 20132341
- PMCID: PMC2838159
- DOI: 10.1111/j.1475-6773.2009.01080.x
Using information on clinical conditions to predict high-cost patients
Abstract
Objective: To compare the ability of different models to predict prospectively whether someone will incur high medical expenditures.
Data source: Using nationally representative data from the Medical Expenditure Panel Survey (MEPS), prediction models were developed using cohorts initiated in 1996-1999 (N=52,918), and validated using cohorts initiated in 2000-2003 (N=61,155).
Study design: We estimated logistic regression models to predict being in the upper expenditure decile in Year 2 of a cohort, based on data from Year 1. We compared a summary risk score based on diagnostic cost group (DCG) prospective risk scores to a count of chronic conditions and indicators for 10 specific high-prevalence chronic conditions. We examined whether self-rated health and functional limitations enhanced prediction, controlling for clinical conditions. Models were evaluated using the Bayesian information criterion and the c-statistic.
Principal findings: Medical condition information substantially improved prediction of high expenditures beyond gender and age, with the DCG risk score providing the greatest improvement in prediction. The count of chronic conditions, self-reported health status, and functional limitations were significantly associated with future high expenditures, controlling for DCG score. A model including these variables had good discrimination (c=0.836).
Conclusions: The number of chronic conditions merits consideration in future efforts to develop expenditure prediction models. While significant, self-rated health and indicators of functioning improved prediction only slightly.
References
-
- AHRQ PUF Data Files. MEPS HC-087: 2004 Medical Conditions. Rockville MD: Agency for Healthcare Research and Quality, November, 2006 [accessed on April 14, 2009]. Available at http://www.meps.ahrq.gov/mepsweb/data_stats/download_data/pufs/h87/h87do....
-
- AHRQ. Chronic Condition Indicator for ICD-9-CM. Agency for Healthcare Research and Quality [accessed on September 30, 2009]. Available at http://www.hcup-us.ahrq.gov/toolssoftware/chronic/chronic.jsp#download.
-
- Archer KJ, Lemeshow S. Goodness-of-Fit Test for a Logistic Regression Model Fitted Using Survey Sample Data. The Stata Journal. 2006;6:97–105.
Publication types
MeSH terms
LinkOut - more resources
Full Text Sources