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Multicenter Study
Development of an algorithm to identify preoperative medical consultations using administrative data.
- Duminda N Wijeysundera, Peter C Austin, Janet E Hux, W Scott Beattie, D Norman Buckley, and Andreas Laupacis.
- Institute for Clinical Evaluative Sciences, Toronto, ON, Canada. d.wijeysundera@utoronto.ca
- Med Care. 2009 Dec 1;47(12):1258-64.
BackgroundPreoperative consultation by internal medicine specialists may help improve the care of patients undergoing major surgery. Population-based administrative data are an efficient approach for studying these consultations at a population-level. However, administrative data in many jurisdictions lack specific codes to identify preoperative medical consultations, as opposed to consultations for nonoperative indications.ObjectiveTo develop an accurate claims-based algorithm for identifying preoperative medical consultations before major elective noncardiac surgery.Research DesignWe conducted a multicenter cross-sectional study in Ontario, Canada. Preoperative medical consultations identified by medical record abstraction were compared with those identified by linked administrative data (physician service claims, hospital discharge abstracts).SubjectsWe randomly selected 606 individuals, aged older than 40 years, who underwent elective intermediate-to-high-risk noncardiac surgery at 8 randomly selected hospitals between April 1, 2002 and March 31, 2004.ResultsMedical record abstraction identified preoperative medical consultations in 317 patients (52%). The optimal claims-based algorithm for identifying these consultations was a physician service claim for a consultation by a cardiologist, general internist, endocrinologist, geriatrician, or nephrologist within 4 months before the index surgical procedure. This algorithm had a sensitivity of 90% (95% confidence interval [CI]: 86-93), specificity of 92% (95% CI: 88-95), positive predictive value of 93% (95% CI: 89-95), and negative predictive value of 90% (95% CI: 86-93).ConclusionsA simple claims-based algorithm can accurately identify preoperative medical consultations before major elective noncardiac surgery. This algorithm may help enhance population-based evaluations of preoperative care, provided that the requisite linked administrative healthcare data are present.
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