Skip to main content

Research Repository

Advanced Search

Computable phenotype for real-world, data-driven retrospective identification of relapse in ANCA-associated vasculitis

Scott, Jennifer; White, Arthur; Walsh, Cathal; Aslett, Louis; Rutherford, Matthew A; Ng, James; Judge, Conor; Sebastian, Kuruvilla; O’Brien, Sorcha; Kelleher, John; Power, Julie; Conlon, Niall; Moran, Sarah M; Luqmani, Raashid Ahmed; Merkel, Peter A; Tesar, Vladimir; Hruskova, Zdenka; Little, Mark A

Computable phenotype for real-world, data-driven retrospective identification of relapse in ANCA-associated vasculitis Thumbnail


Authors

Jennifer Scott

Arthur White

Cathal Walsh

Matthew A Rutherford

James Ng

Conor Judge

Kuruvilla Sebastian

Sorcha O’Brien

John Kelleher

Julie Power

Niall Conlon

Sarah M Moran

Raashid Ahmed Luqmani

Peter A Merkel

Vladimir Tesar

Zdenka Hruskova

Mark A Little



Abstract

Objective: ANCA-associated vasculitis (AAV) is a relapsing-remitting disease, resulting in incremental tissue injury. The gold-standard relapse definition (Birmingham Vasculitis Activity Score, BVAS>0) is often missing or inaccurate in registry settings, leading to errors in ascertainment of this key outcome. We sought to create a computable phenotype (CP) to automate retrospective identification of relapse using real-world data in the research setting. Methods: We studied 536 patients with AAV and >6 months follow-up recruited to the Rare Kidney Disease registry (a national longitudinal, multicentre cohort study). We followed five steps: (1) independent encounter adjudication using primary medical records to assign the ground truth, (2) selection of data elements (DEs), (3) CP development using multilevel regression modelling, (4) internal validation and (5) development of additional models to handle missingness. Cut-points were determined by maximising the F1-score. We developed a web application for CP implementation, which outputs an individualised probability of relapse. Results: Development and validation datasets comprised 1209 and 377 encounters, respectively. After classifying encounters with diagnostic histopathology as relapse, we identified five key DEs; DE1: change in ANCA level, DE2: suggestive blood/urine tests, DE3: suggestive imaging, DE4: immunosuppression status, DE5: immunosuppression change. F1-score, sensitivity and specificity were 0.85 (95% CI 0.77 to 0.92), 0.89 (95% CI 0.80 to 0.99) and 0.96 (95% CI 0.93 to 0.99), respectively. Where DE5 was missing, DE2 plus either DE1/DE3 were required to match the accuracy of BVAS. Conclusions: This CP accurately quantifies the individualised probability of relapse in AAV retrospectively, using objective, readily accessible registry data. This framework could be leveraged for other outcomes and relapsing diseases.

Citation

Scott, J., White, A., Walsh, C., Aslett, L., Rutherford, M. A., Ng, J., …Little, M. A. (2024). Computable phenotype for real-world, data-driven retrospective identification of relapse in ANCA-associated vasculitis. RMD Open, 10(2), Article e003962. https://doi.org/10.1136/rmdopen-2023-003962

Journal Article Type Article
Acceptance Date Mar 29, 2024
Online Publication Date Apr 30, 2024
Publication Date 2024-04
Deposit Date May 3, 2024
Publicly Available Date May 7, 2024
Journal RMD Open
Publisher BMJ Publishing Group
Peer Reviewed Peer Reviewed
Volume 10
Issue 2
Article Number e003962
DOI https://doi.org/10.1136/rmdopen-2023-003962
Keywords Vasculitis, Outcome Assessment, Health Care, Classification, Epidemiology
Public URL https://durham-repository.worktribe.com/output/2432919

Files





You might also like



Downloadable Citations