Ethnicity Recording in Primary Care Computerised Medical Record Systems: An Ontological Approach

Autor: Zayd Tippu, Ana Correa, Harshana Liyanage, David Burleigh, Andrew McGovern, Jeremy Van Vlymen, Simon Jones, Simon de Lusignan
Jazyk: angličtina
Rok vydání: 2017
Předmět:
Zdroj: Journal of Innovation in Health Informatics, Vol 23, Iss 4 (2017)
Druh dokumentu: article
ISSN: 2058-4555
2058-4563
DOI: 10.14236/jhi.v23i4.920
Popis: Background Ethnicity recording within primary care computerised medical record (CMR) systems is suboptimal, exacerbated by tangled taxonomies within current coding systems. Objective To develop a method for extending ethnicity identification using routinely collected data. Methods We used an ontological method to maximise the reliability and prevalence of ethnicity information in the Royal College of General Practitioner’s Research and Surveillance database. Clinical codes were either directly mapped to ethnicity group or utilised as proxy markers (such as language spoken) from which ethnicity could be inferred. We compared the performance of our method with the recording rates that would be identified by code lists utilised by the UK pay for the performance system, with the help of the Quality and Outcomes Framework (QOF). Results Data from 2,059,453 patients across 110 practices were included. The overall categorisable ethnicity using QOF codes was 36.26% (95% confidence interval (CI): 36.20%–36.33%). This rose to 48.57% (CI:48.50%–48.64%) using the described ethnicity mapping process. Mapping increased across all ethnic groups. The largest increase was seen in the white ethnicity category (30.61%; CI: 30.55%–30.67% to 40.24%; CI: 40.17%–40.30%). The highest relative increase was in the ethnic group categorised as the other (0.04%; CI: 0.03%–0.04% to 0.92%; CI: 0.91%–0.93%). Conclusions This mapping method substantially increases the prevalence of known ethnicity in CMR data and may aid future epidemiological research based on routine data.
Databáze: Directory of Open Access Journals