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Measuring Exposure to Incarceration Using the Electronic Health Record.

Publication ,  Journal Article
Wang, EA; Long, JB; McGinnis, KA; Wang, KH; Wildeman, CJ; Kim, C; Bucklen, KB; Fiellin, DA; Bates, J; Brandt, C; Justice, AC
Published in: Medical care
June 2019

Electronic health records (EHRs) are a rich source of health information; however social determinants of health, including incarceration, and how they impact health and health care disparities can be hard to extract.The main objective of this study was to compare sensitivity and specificity of patient self-report with various methods of identifying incarceration exposure using the EHR.Validation study using multiple data sources and types.Participants of the Veterans Aging Cohort Study (VACS), a national observational cohort based on data from the Veterans Health Administration (VHA) EHR that includes all human immunodeficiency virus-infected patients in care (47,805) and uninfected patients (99,060) matched on region, age, race/ethnicity, and sex.Self-reported incarceration history compared with: (1) linked VHA EHR data to administrative data from a state Department of Correction (DOC), (2) linked VHA EHR data to administrative data on incarceration from Centers for Medicare and Medicaid Services (CMS), (3) VHA EHR-specific identifier codes indicative of receipt of VHA incarceration reentry services, and (4) natural language processing (NLP) in unstructured text in VHA EHR.Linking the EHR to DOC data: sensitivity 2.5%, specificity 100%; linking the EHR to CMS data: sensitivity 7.9%, specificity 99.3%; VHA EHR-specific identifier for receipt of reentry services: sensitivity 7.3%, specificity 98.9%; and NLP, sensitivity 63.5%, specificity 95.9%.NLP tools hold promise as a feasible and valid method to identify individuals with exposure to incarceration in EHR. Future work should expand this approach using a larger body of documents and refinement of the methods, which may further improve operating characteristics of this method.

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Published In

Medical care

DOI

EISSN

1537-1948

ISSN

0025-7079

Publication Date

June 2019

Volume

57 Suppl 6 Suppl 2

Start / End Page

S157 / S163

Related Subject Headings

  • Veterans
  • United States Department of Veterans Affairs
  • United States
  • Sensitivity and Specificity
  • Self Report
  • Prisoners
  • Natural Language Processing
  • Middle Aged
  • Medicare
  • Male
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Wang, E. A., Long, J. B., McGinnis, K. A., Wang, K. H., Wildeman, C. J., Kim, C., … Justice, A. C. (2019). Measuring Exposure to Incarceration Using the Electronic Health Record. Medical Care, 57 Suppl 6 Suppl 2, S157–S163. https://doi.org/10.1097/mlr.0000000000001049
Wang, Emily A., Jessica B. Long, Kathleen A. McGinnis, Karen H. Wang, Christopher J. Wildeman, Clara Kim, Kristofer B. Bucklen, et al. “Measuring Exposure to Incarceration Using the Electronic Health Record.Medical Care 57 Suppl 6 Suppl 2 (June 2019): S157–63. https://doi.org/10.1097/mlr.0000000000001049.
Wang EA, Long JB, McGinnis KA, Wang KH, Wildeman CJ, Kim C, et al. Measuring Exposure to Incarceration Using the Electronic Health Record. Medical care. 2019 Jun;57 Suppl 6 Suppl 2:S157–63.
Wang, Emily A., et al. “Measuring Exposure to Incarceration Using the Electronic Health Record.Medical Care, vol. 57 Suppl 6 Suppl 2, June 2019, pp. S157–63. Epmc, doi:10.1097/mlr.0000000000001049.
Wang EA, Long JB, McGinnis KA, Wang KH, Wildeman CJ, Kim C, Bucklen KB, Fiellin DA, Bates J, Brandt C, Justice AC. Measuring Exposure to Incarceration Using the Electronic Health Record. Medical care. 2019 Jun;57 Suppl 6 Suppl 2:S157–S163.

Published In

Medical care

DOI

EISSN

1537-1948

ISSN

0025-7079

Publication Date

June 2019

Volume

57 Suppl 6 Suppl 2

Start / End Page

S157 / S163

Related Subject Headings

  • Veterans
  • United States Department of Veterans Affairs
  • United States
  • Sensitivity and Specificity
  • Self Report
  • Prisoners
  • Natural Language Processing
  • Middle Aged
  • Medicare
  • Male