Using Automated Clinical Data for Risk Adjustment
- 1 August 2007
- journal article
- research article
- Published by Wolters Kluwer Health in Medical Care
- Vol. 45 (8), 789-805
- https://doi.org/10.1097/mlr.0b013e31803d3b41
Abstract
Background: Clinically plausible risk-adjustment methods are needed to implement pay-for-performance protocols. Because billing data lacks clinical precision, may be gamed, and chart abstraction is costly, we sought to develop predictive models for mortality that maximally used automated laboratory data and intentionally minimized the use of administrative data (Laboratory Models). We also evaluated the additional value of vital signs and altered mental status (Full Models). Methods: Six models predicting in-hospital mortality for ischemic and hemorrhagic stroke, pneumonia, myocardial infarction, heart failure, and septicemia were derived from 194,903 admissions in 2000–2003 across 71 hospitals that imported laboratory data. Demographics, admission-based labs, International Classification of Diseases (ICD)-9 variables, vital signs, and altered mental status were sequentially entered as covariates. Models were validated using abstractions (629,490 admissions) from 195 hospitals. Finally, we constructed hierarchical models to compare hospital performance using the Laboratory Models and the Full Models. Results: Model c-statistics ranged from 0.81 to 0.89. As constructed, laboratory findings contributed more to the prediction of death compared with any other risk factor characteristic groups across most models except for stroke, where altered mental status was more important. Laboratory variables were between 2 and 67 times more important in predicting mortality than ICD-9 variables. The hospital-level risk-standardized mortality rates derived from the Laboratory Models were highly correlated with the results derived from the Full Models (average ρ = 0.92). Conclusions: Mortality can be well predicted using models that maximize reliance on objective pathophysiologic variables whereas minimizing input from billing data. Such models should be less susceptible to the vagaries of billing information and inexpensive to implement.Keywords
This publication has 36 references indexed in Scilit:
- Relationship Between Medicare’s Hospital Compare Performance Measures and Mortality RatesJAMA, 2006
- Hospital Quality for Acute Myocardial InfarctionPublished by American Medical Association (AMA) ,2006
- Payment for Quality: Guiding Principles and RecommendationsCirculation, 2006
- A Middle Ground on Public AccountabilityNew England Journal of Medicine, 2004
- Identifying Patient Preoperative Risk Factors and Postoperative Adverse Events in Administrative Databases: Results From The Department of Veterans Affairs National Surgical Quality Improvement ProgramJournal of the American College of Surgeons, 2002
- Why Do Hospital Death Rates Vary?New England Journal of Medicine, 2001
- Evaluating Quality of Care for Patients With Heart FailureCirculation, 2000
- Report Cards on Cardiac Surgeons — Assessing New York State's ApproachNew England Journal of Medicine, 1995
- Discordance of Databases Designed for Claims Payment versus Clinical Information Systems: Implications for Outcomes ResearchAnnals of Internal Medicine, 1993
- Looking for Answers in All the Wrong PlacesAnnals of Internal Medicine, 1993