Toward a fine-scale population health monitoring system
- PMID: 33861964
- DOI: 10.1016/j.cell.2021.03.034
Toward a fine-scale population health monitoring system
Abstract
Understanding population health disparities is an essential component of equitable precision health efforts. Epidemiology research often relies on definitions of race and ethnicity, but these population labels may not adequately capture disease burdens and environmental factors impacting specific sub-populations. Here, we propose a framework for repurposing data from electronic health records (EHRs) in concert with genomic data to explore the demographic ties that can impact disease burdens. Using data from a diverse biobank in New York City, we identified 17 communities sharing recent genetic ancestry. We observed 1,177 health outcomes that were statistically associated with a specific group and demonstrated significant differences in the segregation of genetic variants contributing to Mendelian diseases. We also demonstrated that fine-scale population structure can impact the prediction of complex disease risk within groups. This work reinforces the utility of linking genomic data to EHRs and provides a framework toward fine-scale monitoring of population health.
Keywords: biobanks; computational genomics; electronic health records; genetic ancestry; genomic medicine; health disparities; machine learning; population health.
Copyright © 2021 Elsevier Inc. All rights reserved.
Conflict of interest statement
Declaration of interests N.S.A.-H. was previously employed by Regeneron Pharmaceuticals and has received a speaker honorarium from Genentech. E.E.K. has received speaker honoraria from Illumina and Regeneron Pharmaceuticals. S.W. is currently employed at Tempus. A.M. is currently employed at Regeneron. E.P.S. is currently employed at Calico. D.S.P. is currently employed at Ancestry. A.A. is currently employed at 23&Me. The remaining authors declare no competing interests.
Comment in
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Is genetic ancestry a tool to combat health disparities?Cell. 2021 Apr 15;184(8):1964-1965. doi: 10.1016/j.cell.2021.03.038. Cell. 2021. PMID: 33861960
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