Using electronic health record data to link families: an illustrative example using intergenerational patterns of obesity

Author:

Krefman Amy E1ORCID,Ghamsari Farhad2,Turner Daniel R3,Lu Alice4,Borsje Martin4,Wood Colby Witherup3,Petito Lucia C1,Polubriaginof Fernanda C G5,Schneider Daniel4,Ahmad Faraz16ORCID,Allen Norrina B1

Affiliation:

1. Department of Preventive Medicine, Northwestern University Feinberg School of Medicine , Chicago, Illinois, USA

2. Department of Internal Medicine, Tulane University School of Medicine , New Orleans, Louisiana, USA

3. IT Research Computing Services, Northwestern University , Evanston, Illinois, USA

4. Northwestern Medicine Enterprise Data Warehouse, Northwestern University Feinberg School of Medicine , Chicago, Illinois, USA

5. Memorial Sloan Kettering Cancer Center , New York, New York, USA

6. Division of Cardiology, Northwestern University Feinberg School of Medicine , Chicago, Illinois, USA

Abstract

Abstract Objective Electronic health record (EHR) data are a valuable resource for population health research but lack critical information such as relationships between individuals. Emergency contacts in EHRs can be used to link family members, creating a population that is more representative of a community than traditional family cohorts. Materials and Methods We revised a published algorithm: relationship inference from the electronic health record (RIFTEHR). Our version, Pythonic RIFTEHR (P-RIFTEHR), identifies a patient’s emergency contacts, matches them to existing patients (when available) using network graphs, checks for conflicts, and infers new relationships. P-RIFTEHR was run on December 15, 2021 in the Northwestern Medicine Electronic Data Warehouse (NMEDW) on approximately 2.95 million individuals and was validated using the existing link between children born at NM hospitals and their mothers. As proof-of-concept, we modeled the association between parent and child obesity using logistic regression. Results The P-RIFTEHR algorithm matched 1 157 454 individuals in 448 278 families. The median family size was 2, the largest was 32 persons, and 247 families spanned 4 generations or more. Validation of the mother–child pairs resulted in 95.1% sensitivity. Children were 2 times more likely to be obese if a parent is obese (OR: 2.30; 95% CI, 2.23–2.37). Conclusion P-RIFTEHR can identify familiar relationships in a large, diverse population in an integrated health system. Estimates of parent–child inheritability of obesity using family structures identified by the algorithm were consistent with previously published estimates from traditional cohort studies.

Funder

NIH

NCI Cancer Center Support

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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