Disaggregating Latino nativity in equity research using electronic health records

Author:

Marino Miguel12ORCID,Fankhauser Katie13,Minnier Jessica2ORCID,Lucas Jennifer A.1,Giebultowicz Sophia4,Kaufmann Jorge1,Hwang Jun1,Bailey Steffani R.1,Crookes Danielle M.5,Bazemore Andrew6,Suglia Shakira F.7,Heintzman John14

Affiliation:

1. Department of Family Medicine Oregon Health & Science University Portland Oregon USA

2. Biostatistics Group, School of Public Health Oregon Health & Science University – Portland State University Portland Oregon USA

3. Mortenson Center in Global Engineering University of Colorado Boulder Boulder Colorado USA

4. OCHIN Portland Oregon USA

5. Bouvé College of Health Sciences and College of Social Sciences and Humanities Northeastern University Boston Massachusetts USA

6. American Board of Family Medicine Lexington Kentucky USA

7. Department of Epidemiology Emory University Atlanta Georgia USA

Abstract

AbstractObjectiveTo develop and validate prediction models for inference of Latino nativity to advance health equity research.Data Sources/Study SettingThis study used electronic health records (EHRs) from 19,985 Latino children with self‐reported country of birth seeking care from January 1, 2012 to December 31, 2018 at 456 community health centers (CHCs) across 15 states along with census‐tract geocoded neighborhood composition and surname data.Study DesignWe constructed and evaluated the performance of prediction models within a broad machine learning framework (Super Learner) for the estimation of Latino nativity. Outcomes included binary indicators denoting nativity (US vs. foreign‐born) and Latino country of birth (Mexican, Cuban, Guatemalan). The performance of these models was compared using the area under the receiver operating characteristics curve (AUC) from an externally withheld patient sample.Data Collection/Extraction MethodsCensus surname lists, census neighborhood composition, and Forebears administrative data were linked to EHR data.Principal FindingsOf the 19,985 Latino patients, 10.7% reported a non‐US country of birth (5.1% Mexican, 4.7% Guatemalan, 0.8% Cuban). Overall, prediction models for nativity showed outstanding performance with external validation (US‐born vs. foreign: AUC = 0.90; Mexican vs. non‐Mexican: AUC = 0.89; Guatemalan vs. non‐Guatemalan: AUC = 0.95; Cuban vs. non‐Cuban: AUC = 0.99).ConclusionsAmong challenges facing health equity researchers in health services is the absence of methods for data disaggregation, and the specific ability to determine Latino country of birth (nativity) to inform disparities. Recent interest in more robust health equity research has called attention to the importance of data disaggregation. In a multistate network of CHCs using multilevel inputs from EHR data linked to surname and community data, we developed and validated novel prediction models for the use of available EHR data to infer Latino nativity for health disparities research in primary care and health services research, which is a significant potential methodologic advance in studying this population.

Funder

National Cancer Institute

National Institute on Minority Health and Health Disparities

Publisher

Wiley

Subject

Health Policy

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