Privacy-protecting multivariable-adjusted distributed regression analysis for multi-center pediatric study
- PMID: 31578038
- PMCID: PMC7113085
- DOI: 10.1038/s41390-019-0596-0
Privacy-protecting multivariable-adjusted distributed regression analysis for multi-center pediatric study
Abstract
Background: Privacy-protecting analytic approaches without centralized pooling of individual-level data, such as distributed regression, are particularly important for vulnerable populations, such as children, but these methods have not yet been tested in multi-center pediatric studies.
Methods: Using the electronic health data from 34 healthcare institutions in the National Patient-Centered Clinical Research Network (PCORnet), we fit 12 multivariable-adjusted linear regression models to assess the associations of antibiotic use <24 months of age with body mass index z-score at 48 to <72 months of age. We ran these models using pooled individual-level data and conventional multivariable-adjusted regression (reference method), as well as using the more privacy-protecting pooled summary-level intermediate statistics and distributed regression technique. We compared the results from these two methods.
Results: Pooled individual-level and distributed linear regression analyses produced virtually identical parameter estimates and standard errors. Across all 12 models, the maximum difference in any of the parameter estimates or standard errors was 4.4833 × 10-10.
Conclusions: We demonstrated empirically the feasibility and validity of distributed linear regression analysis using only summary-level information within a large multi-center study of children. This approach could enable expanded opportunities for multi-center pediatric research, especially when sharing of granular individual-level data is challenging.
Conflict of interest statement
DISCLOSURE
The authors declare no conflict of interest. The funding organization was not involved in the design of the study; the collection, analysis, and interpretation of the data; or the decision to approve publication of the finished manuscript.
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Comment in
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Privacy-preserving statistical analyses in Learning Health Systems.Pediatr Res. 2020 May;87(6):978-979. doi: 10.1038/s41390-020-0835-4. Epub 2020 Mar 14. Pediatr Res. 2020. PMID: 32172277 No abstract available.
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- Curtis LH, Brown J, Platt R. Four health data networks illustrate the potential for a shared national multipurpose big-data network. Health Aff (Millwood) 2014; 33:1178–1186. - PubMed
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- Department of Health and Human Services. The Code of Federal Regulations. Title 45, Subtitle A, Subchapter A, Part 46: Protection of human subjects. (https://www.ecfr.gov/cgi-bin/retrieveECFR?gp=&SID=83cd09e1c0f5c6937cd9d7...).
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