Literature DB >> 34471703

Identifying Care Home Residents in Electronic Health Records - An OpenSAFELY Short Data Report.

Anna Schultze1, Chris Bates2, Jonathan Cockburn2, Brian MacKenna3, Emily Nightingale1,4, Helen J Curtis3, William J Hulme3, Caroline E Morton3, Richard Croker3, Seb Bacon3, Helen I McDonald1, Christopher T Rentsch1, Krishnan Bhaskaran1, Rohini Mathur1, Laurie A Tomlinson1, Elizabeth J Williamson1, Harriet Forbes1, John Tazare1, Daniel J Grint1, Alex J Walker3, Peter Inglesby3, Nicholas J DeVito3, Amir Mehrkar3, George Hickman3, Simon Davy3, Tom Ward3, Louis Fisher3, David Evans3, Kevin Wing1, Angel Ys Wong1, Robert McManus2, John Parry2, Frank Hester2, Sam Harper2, Stephen Jw Evans1, Ian J Douglas1, Liam Smeeth1, Rosalind M Eggo1,4, Ben Goldacre3.   

Abstract

Background: Care home residents have been severely affected by the COVID-19 pandemic. Electronic Health Records (EHR) hold significant potential for studying the healthcare needs of this vulnerable population; however, identifying care home residents in EHR is not straightforward. We describe and compare three different methods for identifying care home residents in the newly created OpenSAFELY-TPP data analytics platform. 
Methods: Working on behalf of NHS England, we identified individuals aged 65 years or older potentially living in a care home on the 1st of February 2020 using (1) a complex address linkage, in which cleaned GP registered addresses were matched to old age care home addresses using data from the Care and Quality Commission (CQC); (2) coded events in the EHR; (3) household identifiers, age and household size to identify households with more than 3 individuals aged 65 years or older as potential care home residents. Raw addresses were not available to the investigators.
Results: Of 4,437,286 individuals aged 65 years or older, 2.27% were identified as potential care home residents using the complex address linkage, 1.96% using coded events, 3.13% using household size and age and 3.74% using either of these methods. 53,210 individuals (32.0% of all potential care home residents) were classified as care home residents using all three methods. Address linkage had the largest overlap with the other methods; 93.3% of individuals identified as care home residents using the address linkage were also identified as such using either coded events or household age and size. 
Conclusion: We have described the partial overlap between three methods for identifying care home residents in EHR, and provide detailed instructions for how to implement these in OpenSAFELY-TPP to support research into the impact of the COVID-19 pandemic on care home residents. Copyright:
© 2021 Schultze A et al.

Entities:  

Keywords:  Address Linkage; Care Homes; Electronic Health Records

Year:  2021        PMID: 34471703      PMCID: PMC8374378          DOI: 10.12688/wellcomeopenres.16737.1

Source DB:  PubMed          Journal:  Wellcome Open Res        ISSN: 2398-502X


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10.  Closing the UK care home data gap - methodological challenges and solutions.

Authors:  J K Burton; C Goodman; B Guthrie; A L Gordon; B Hanratty; T J Quinn
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