BMC Health Services Research | |
Identifying diabetes cases from administrative data: a population-based validation study | |
Baiju R. Shah1  Gillian L. Booth1  Jeremiah Hwee2  Lauren Webster2  Karen Tu3  Lorraine L. Lipscombe4  | |
[1] Department of Medicine, University of Toronto;Institute for Clinical Evaluative Sciences;Institute of Health Policy, Management and Evaluation, University of Toronto;Women’s College Research Institute, Women’s College Hospital; | |
关键词: diabetes; validation methods; administrative databases; electronic medical record data; | |
DOI : 10.1186/s12913-018-3148-0 | |
来源: DOAJ |
【 摘 要 】
Abstract Background Health care data allow for the study and surveillance of chronic diseases such as diabetes. The objective of this study was to identify and validate optimal algorithms for diabetes cases within health care administrative databases for different research purposes, populations, and data sources. Methods We linked health care administrative databases from Ontario, Canada to a reference standard of primary care electronic medical records (EMRs). We then identified and calculated the performance characteristics of multiple adult diabetes case definitions, using combinations of data sources and time windows. Results The best algorithm to identify diabetes cases was the presence at any time of one hospitalization or physician claim for diabetes AND either one prescription for an anti-diabetic medication or one physician claim with a diabetes-specific fee code [sensitivity 84.2%, specificity 99.2%, positive predictive value (PPV) 92.5%]. Use of physician claims alone performed almost as well: three physician claims for diabetes within one year was highly specific (sensitivity 79.9%, specificity 99.1%, PPV 91.4%) and one physician claim at any time was highly sensitive (sensitivity 93.6%, specificity 91.9%, PPV 58.5%). Conclusions This study identifies validated algorithms to capture diabetes cases within health care administrative databases for a range of purposes, populations and data availability. These findings are useful to study trends and outcomes of diabetes using routinely-collected health care data.
【 授权许可】
Unknown