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Using multiple data features improved the validity of osteoporosis case ascertainment from administrative databases
- Source :
- Journal of Clinical Epidemiology. 61:1250-1260
- Publication Year :
- 2008
- Publisher :
- Elsevier BV, 2008.
-
Abstract
- Objectives The aim was to construct and validate algorithms for osteoporosis case ascertainment from administrative databases and to estimate the population prevalence of osteoporosis for these algorithms. Study Design and Setting Artificial neural networks, classification trees, and logistic regression were applied to hospital, physician, and pharmacy data from Manitoba, Canada. Discriminative performance and calibration (i.e., error) were compared for algorithms defined from different sets of diagnosis, prescription drug, comorbidity, and demographic variables. Algorithms were validated against a regional bone mineral density testing program. Results Discriminative performance and calibration were poorer and sensitivity was generally lower for algorithms based on diagnosis codes alone than for algorithms based on an expanded set of data features that included osteoporosis prescriptions and age. Validation measures were similar for neural networks and classification trees, but prevalence estimates were lower for the former model. Conclusion Multiple features of administrative data generally resulted in improved sensitivity of osteoporosis case-detection algorithm without loss of specificity. However, prevalence estimates using an expanded set of features were still slightly lower than estimates from a population-based study with primary data collection. The classification methods developed in this study can be extended to other chronic diseases for which there may be multiple markers in administrative data.
- Subjects :
- Databases, Factual
Epidemiology
Calibration (statistics)
Population
Logistic regression
computer.software_genre
Drug Prescriptions
Set (abstract data type)
Discriminative model
Bone Density
placeholder
Statistics
Humans
Medicine
education
Osteoporosis, Postmenopausal
Aged
education.field_of_study
Data collection
Artificial neural network
Database
business.industry
Manitoba
Middle Aged
Drug Utilization
Socioeconomic Factors
Female
Forms and Records Control
Neural Networks, Computer
Diagnosis code
Epidemiologic Methods
business
computer
Algorithms
Subjects
Details
- ISSN :
- 08954356
- Volume :
- 61
- Database :
- OpenAIRE
- Journal :
- Journal of Clinical Epidemiology
- Accession number :
- edsair.doi.dedup.....c5e0cde86ec3f5d4c56a5579e12c4d05
- Full Text :
- https://doi.org/10.1016/j.jclinepi.2008.02.002