journal article Aug 02, 2019

Assessing the Availability of Data on Social and Behavioral Determinants in Structured and Unstructured Electronic Health Records: A Retrospective Analysis of a Multilevel Health Care System

Abstract
Background
Most US health care providers have adopted electronic health records (EHRs) that facilitate the uniform collection of clinical information. However, standardized data formats to capture social and behavioral determinants of health (SBDH) in structured EHR fields are still evolving and not adopted widely. Consequently, at the point of care, SBDH data are often documented within unstructured EHR fields that require time-consuming and subjective methods to retrieve. Meanwhile, collecting SBDH data using traditional surveys on a large sample of patients is infeasible for health care providers attempting to rapidly incorporate SBDH data in their population health management efforts. A potential approach to facilitate targeted SBDH data collection is applying information extraction methods to EHR data to prescreen the population for identification of immediate social needs.


Objective
Our aim was to examine the availability and characteristics of SBDH data captured in the EHR of a multilevel academic health care system that provides both inpatient and outpatient care to patients with varying SBDH across Maryland.


Methods
We measured the availability of selected patient-level SBDH in both structured and unstructured EHR data. We assessed various SBDH including demographics, preferred language, alcohol use, smoking status, social connection and/or isolation, housing issues, financial resource strains, and availability of a home address. EHR’s structured data were represented by information collected between January 2003 and June 2018 from 5,401,324 patients. EHR’s unstructured data represented information captured for 1,188,202 patients between July 2016 and May 2018 (a shorter time frame because of limited availability of consistent unstructured data). We used text-mining techniques to extract a subset of SBDH factors from EHR’s unstructured data.


Results
We identified a valid address or zip code for 5.2 million (95.00%) of approximately 5.4 million patients. Ethnicity was captured for 2.7 million (50.00%), whereas race was documented for 4.9 million (90.00%) and a preferred language for 2.7 million (49.00%) patients. Information regarding alcohol use and smoking status was coded for 490,348 (9.08%) and 1,728,749 (32.01%) patients, respectively. Using the International Classification of Diseases–10th Revision diagnoses codes, we identified 35,171 (0.65%) patients with information related to social connection/isolation, 10,433 (0.19%) patients with housing issues, and 3543 (0.07%) patients with income/financial resource strain. Of approximately 1.2 million unique patients with unstructured data, 30,893 (2.60%) had at least one clinical note containing phrases referring to social connection/isolation, 35,646 (3.00%) included housing issues, and 11,882 (1.00%) had mentions of financial resource strain.


Conclusions
Apart from demographics, SBDH data are not regularly collected for patients. Health care providers should assess the availability and characteristics of SBDH data in EHRs. Evaluating the quality of SBDH data can potentially enable health care providers to modify underlying workflows to improve the documentation, collection, and extraction of SBDH data from EHRs.
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References
56
[1]
Centers for Medicare and Medicaid Services2019-02-22What Are the Value-Based Programs? https://www.cms.gov/Medicare/Quality-Initiatives-Patient-Assessment-Instruments/Value-Based-Programs/Value-Based-Programs.html
[2]
World Health Organization20142019-02-22WHO eBook on Integrating a Social Determinants of Health Approach Into Health Workforce Education and Training https://www.who.int/hrh/resources/Ebook1st_meeting_report2015.pdf
[4]
Hong, CS Issue Brief (Commonw Fund) (2014)
[5]
Lindemann, EA AMIA Annu Symp Proc (2017)
[6]
Winden, TJ AMIA Annu Symp Proc (2017)
[7]
Winden, TJ AMIA Jt Summits Transl Sci Proc (2018)
[11]
The National Academies Press20142019-02-22Capturing Social and Behavioral Domains and Measures in Electronic Health Records http://www.nap.edu/18951
[18]
Center for Medicare & Medicaid Innovation2019-02-22Maryland All-Payer Model https://innovation.cms.gov/initiatives/maryland-all-payer-model/
[22]
FordEKimJKharraziHGleasonKGumasDDeCampLThe Institute for Clinical and Translational Research20182019-05-02A Guide to Using Data from EPIC, MyChart, and Cogito for Behavioral, Social and Systems Science Research https://ictr.johnshopkins.edu/wp-content/uploads/Phase1.Epic_.Social.Guide_2018.04.30_final.pdf
[23]
Epic120182019-02-22Epic Update for Researchers https://www.epic1.org/Portals/0/Provider%20Briefs/Research/February%20Epic%20Research%20Brief_v2.pdf?ver=2018-02-03-044035-317×tamp=1517654450848
[24]
AronsADeSilveySFichtenbergCGottliebLSIREN: Research on Integrating Social & Medical Care20182019-02-22Compendium of Medical Terminology Codes for Social Risk Factors https://sirenetwork.ucsf.edu/tools-resources/mmi/compendium-medical-terminology-codes-social-risk-factors
[26]
United States Census Bureau2019-02-22American Community Survey (ACS) https://www.census.gov/programs-surveys/acs/
[27]
United States Census Bureau2019-02-22American Housing Survey (AHS) https://www.census.gov/programs-surveys/ahs.html
[28]
National Association of Community Health Centers2019-02-22The Protocol for Responding to and Assessing Patients’ Assets, Risks, and Experiences (PRAPARE) http://www.nachc.org/research-and-data/prapare/
[34]
Fed Regist (2015)
[35]
Centers for Medicare and Medicaid Services20102019-02-22Medicare & Medicaid EHR Incentive Program: Meaningful Use: Stage 1 Requirements Overview https://www.cms.gov/Regulations-and-Guidance/Legislation/EHRIncentivePrograms/downloads/mu_stage1_reqoverview.pdf
[36]
Electronic Clinical Quality Improvement (eCQI) Resource Center20182019-02-22Updated 2018 CMS QRDA III Implementation Guide for Eligible Clinicians and Eligible Professionals https://ecqi.healthit.gov/ecqms/ecqm-news/now-available-updated-2018-cms-qrda-iii-implementation-guide-eligible-clinicians-0
[37]
KharraziHHatefELasserEWoodsBRouhizadehMKimJDeCampLThe Institute for Clinical and Translational Research20182019-05-02A Guide to Using Data from Johns Hopkins Epic Electronic Health Record for Behavioral, Social and Systems Science Research https://ictr.johnshopkins.edu/wp-content/uploads/Phase2.Epic_.Social.Guide_2018.06.30_final.pdf

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Population Health Management
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Details
Published
Aug 02, 2019
Vol/Issue
7(3)
Pages
e13802
Cite This Article
Elham Hatef, Masoud Rouhizadeh, Iddrisu Tia, et al. (2019). Assessing the Availability of Data on Social and Behavioral Determinants in Structured and Unstructured Electronic Health Records: A Retrospective Analysis of a Multilevel Health Care System. JMIR Medical Informatics, 7(3), e13802. https://doi.org/10.2196/13802