Andrea M Hussong1, Nisha C Gottfredson2, Dan J Bauer3, Patrick J Curran4, Maleeha Haroon5, Redonna Chandler6, Shoshana Y Kahana7, Joseph A C Delaney8, Frederick L Altice9, Curt G Beckwith10, Daniel J Feaster11, Patrick M Flynn12, Michael S Gordon13, Kevin Knight14, Irene Kuo15, Lawrence J Ouellet16, Vu M Quan17, David W Seal18, Sandra A Springer19. 1. University of North Carolina at Chapel Hill, United States. Electronic address: hussong@unc.edu. 2. University of North Carolina at Chapel Hill, United States. Electronic address: gottfredson@unc.edu. 3. University of North Carolina at Chapel Hill, United States. Electronic address: dbauer@email.unc.edu. 4. University of North Carolina at Chapel Hill, United States. Electronic address: curran@unc.edu. 5. University of North Carolina at Chapel Hill, United States. Electronic address: maleeha@unc.edu. 6. National Institute on Drug Abuse/National Institutes of Health, United States. 7. National Institute on Drug Abuse/National Institutes of Health, United States. Electronic address: shoshana.kahana@nih.gov. 8. University of Washington, Seattle, United States. Electronic address: jacd@uw.edu. 9. Yale School of Medicine, United States. Electronic address: frederick.altice@yale.edu. 10. Alpert Medical School of Brown University, United States. Electronic address: CBeckwith@Lifespan.org. 11. University of Miami, United States. Electronic address: dfeaster@biostat.med.miami.edu. 12. Texas Christian University, United States. Electronic address: ibr@tcu.edu. 13. Friends Research Institute, United States. Electronic address: mgordon@friendsresearch.org. 14. Texas Christian University, United States. Electronic address: k.knight@tcu.edu. 15. The George Washington University, United States. Electronic address: ikuo@gwu.edu. 16. University of Illinois at Chicago, United States. Electronic address: ljo@uic.edu. 17. Johns Hopkins University, United States. Electronic address: vquan1@jhu.edu. 18. Tulane University School of Public Health and Tropical Medicine, United States. Electronic address: dseal@tulane.edu. 19. Yale School of Medicine, United States. Electronic address: sandra.springer@yale.edu.
Abstract
BACKGROUND: With increasing data archives comprised of studies with similar measurement, optimal methods for data harmonization and measurement scoring are a pressing need. We compare three methods for harmonizing and scoring the AUDIT as administered with minimal variation across 11 samples from eight study sites within the STTR (Seek-Test-Treat-Retain) Research Harmonization Initiative. Descriptive statistics and predictive validity results for cut-scores, sum scores, and Moderated Nonlinear Factor Analysis scores (MNLFA; a psychometric harmonization method) are presented. METHODS: Across the eight study sites, sample sizes ranged from 50 to 2405 and target populations varied based on sampling frame, location, and inclusion/exclusion criteria. The pooled sample included 4667 participants (82% male, 52% Black, 24% White, 13% Hispanic, and 8% Asian/ Pacific Islander; mean age of 38.9 years). Participants completed the AUDIT at baseline in all studies. RESULTS: After logical harmonization of items, we scored the AUDIT using three methods: published cut-scores, sum scores, and MNLFA. We found greater variation, fewer floor effects, and the ability to directly address missing data in MNLFA scores as compared to cut-scores and sum scores. MNLFA scores showed stronger associations with binge drinking and clearer study differences than did other scores. CONCLUSIONS: MNLFA scores are a promising tool for data harmonization and scoring in pooled data analysis. Model complexity with large multi-study applications, however, may require new statistical advances to fully realize the benefits of this approach.
BACKGROUND: With increasing data archives comprised of studies with similar measurement, optimal methods for data harmonization and measurement scoring are a pressing need. We compare three methods for harmonizing and scoring the AUDIT as administered with minimal variation across 11 samples from eight study sites within the STTR (Seek-Test-Treat-Retain) Research Harmonization Initiative. Descriptive statistics and predictive validity results for cut-scores, sum scores, and Moderated Nonlinear Factor Analysis scores (MNLFA; a psychometric harmonization method) are presented. METHODS: Across the eight study sites, sample sizes ranged from 50 to 2405 and target populations varied based on sampling frame, location, and inclusion/exclusion criteria. The pooled sample included 4667 participants (82% male, 52% Black, 24% White, 13% Hispanic, and 8% Asian/ Pacific Islander; mean age of 38.9 years). Participants completed the AUDIT at baseline in all studies. RESULTS: After logical harmonization of items, we scored the AUDIT using three methods: published cut-scores, sum scores, and MNLFA. We found greater variation, fewer floor effects, and the ability to directly address missing data in MNLFA scores as compared to cut-scores and sum scores. MNLFA scores showed stronger associations with binge drinking and clearer study differences than did other scores. CONCLUSIONS: MNLFA scores are a promising tool for data harmonization and scoring in pooled data analysis. Model complexity with large multi-study applications, however, may require new statistical advances to fully realize the benefits of this approach.
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