An administrative data validation study of the accuracy of algorithms for identifying rheumatoid arthritis: the influence of the reference standard on algorithm performance

Jessica Widdifield(University of Toronto), Claire Bombardier(University of Toronto), Sasha Bernatsky(McGill University), J. Michael Paterson(University of Toronto), Diane Green(Institute for Clinical Evaluative Sciences), Jacqueline Young(Institute for Clinical Evaluative Sciences), Noah Ivers(Institute for Clinical Evaluative Sciences), Debra A. Butt(University of Toronto), R. Liisa Jaakkimainen(Institute for Clinical Evaluative Sciences), Carter Thorne(Southlake Regional Health Center), Karen Tu(Institute for Clinical Evaluative Sciences)
BMC Musculoskeletal Disorders
June 23, 2014
Cited by 163Open Access
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Abstract

BACKGROUND: We have previously validated administrative data algorithms to identify patients with rheumatoid arthritis (RA) using rheumatology clinic records as the reference standard. Here we reassessed the accuracy of the algorithms using primary care records as the reference standard. METHODS: We performed a retrospective chart abstraction study using a random sample of 7500 adult patients under the care of 83 family physicians contributing to the Electronic Medical Record Administrative data Linked Database (EMRALD) in Ontario, Canada. Using physician-reported diagnoses as the reference standard, we computed and compared the sensitivity, specificity, and predictive values for over 100 administrative data algorithms for RA case ascertainment. RESULTS: We identified 69 patients with RA for a lifetime RA prevalence of 0.9%. All algorithms had excellent specificity (>97%). However, sensitivity varied (75-90%) among physician billing algorithms. Despite the low prevalence of RA, most algorithms had adequate positive predictive value (PPV; 51-83%). The algorithm of "[1 hospitalization RA diagnosis code] or [3 physician RA diagnosis codes with ≥1 by a specialist over 2 years]" had a sensitivity of 78% (95% CI 69-88), specificity of 100% (95% CI 100-100), PPV of 78% (95% CI 69-88) and NPV of 100% (95% CI 100-100). CONCLUSIONS: Administrative data algorithms for detecting RA patients achieved a high degree of accuracy amongst the general population. However, results varied slightly from our previous report, which can be attributed to differences in the reference standards with respect to disease prevalence, spectrum of disease, and type of comparator group.


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