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Using Electronic Health Record Data to Rapidly Identify Children with Glomerular Disease for Clinical Research

Authors :
Bradley P. Dixon
Vikas R. Dharnidharka
Danielle E. Soranno
Christopher B. Forrest
Laura H. Mariani
L. Charles Bailey
Michael J. Somers
Donna J. Claes
Michelle R. Denburg
Ari H. Pollack
Joseph T. Flynn
Mark Mitsnefes
Maryjane Benton
Susan L. Furth
Joshua J. Zaritsky
Hanieh Razzaghi
William E. Smoyer
Source :
Journal of the American Society of Nephrology. 30:2427-2435
Publication Year :
2019
Publisher :
Ovid Technologies (Wolters Kluwer Health), 2019.

Abstract

Background The rarity of pediatric glomerular disease makes it difficult to identify sufficient numbers of participants for clinical trials. This leaves limited data to guide improvements in care for these patients. Methods The authors developed and tested an electronic health record (EHR) algorithm to identify children with glomerular disease. We used EHR data from 231 patients with glomerular disorders at a single center to develop a computerized algorithm comprising diagnosis, kidney biopsy, and transplant procedure codes. The algorithm was tested using PEDSnet, a national network of eight children's hospitals with data on >6.5 million children. Patients with three or more nephrologist encounters (n=55,560) not meeting the computable phenotype definition of glomerular disease were defined as nonglomerular cases. A reviewer blinded to case status used a standardized form to review random samples of cases (n=800) and nonglomerular cases (n=798). Results The final algorithm consisted of two or more diagnosis codes from a qualifying list or one diagnosis code and a pretransplant biopsy. Performance characteristics among the population with three or more nephrology encounters were sensitivity, 96% (95% CI, 94% to 97%); specificity, 93% (95% CI, 91% to 94%); positive predictive value (PPV), 89% (95% CI, 86% to 91%); negative predictive value, 97% (95% CI, 96% to 98%); and area under the receiver operating characteristics curve, 94% (95% CI, 93% to 95%). Requiring that the sum of nephrotic syndrome diagnosis codes exceed that of glomerulonephritis codes identified children with nephrotic syndrome or biopsy-based minimal change nephropathy, FSGS, or membranous nephropathy, with 94% sensitivity and 92% PPV. The algorithm identified 6657 children with glomerular disease across PEDSnet, ≥50% of whom were seen within 18 months. Conclusions The authors developed an EHR-based algorithm and demonstrated that it had excellent classification accuracy across PEDSnet. This tool may enable faster identification of cohorts of pediatric patients with glomerular disease for observational or prospective studies.

Details

ISSN :
15333450 and 10466673
Volume :
30
Database :
OpenAIRE
Journal :
Journal of the American Society of Nephrology
Accession number :
edsair.doi.dedup.....1a834d6a915accf36fe415d2cd87571a
Full Text :
https://doi.org/10.1681/asn.2019040365