Postoperative complications following colectomy for ulcerative colitis: A validation study

Christopher Ma(University of Calgary), Marcelo Crespin(University of Calgary), Marie‐Claude Proulx(University of Calgary), Shanika DeSilva(Mount Sinai Hospital), James Hubbard(University of Calgary), Martin A. Prusinkiewicz(University of Calgary), Geoffrey C. Nguyen, Remo Panaccione(University of Calgary), Subrata Ghosh(University of Calgary), Robert P. Myers(University of Calgary), Hude Quan(University of Calgary), Gilaad G. Kaplan(University of Calgary)
BMC Gastroenterology
April 27, 2012
Cited by 67Open Access
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Abstract

BACKGROUND: Ulcerative colitis (UC) patients failing medical management require colectomy. This study compares risk estimates for predictors of postoperative complication derived from administrative data against that of chart review and evaluates the accuracy of administrative coding for this population. METHODS: Hospital administrative databases were used to identify adults with UC undergoing colectomy from 1996-2007. Medical charts were reviewed and regression analyses comparing chart versus administrative data were performed to assess the effect of age, emergent operation, and Charlson comorbidities on the occurrence of postoperative complications. Sensitivity, specificity, and positive/negative predictive values of administrative coding for identifying the study population, Charlson comorbidities, and postoperative complications were assessed. RESULTS: Compared to chart review, administrative data estimated a higher magnitude of effect for emergent admission (OR 2.52 [95% CI: 1.80-3.52] versus 1.49 [1.06-2.09]) and Charlson comorbidities (OR 2.91 [1.86-4.56] versus 1.50 [1.05-2.15]) as predictors of postoperative complications. Administrative data correctly identified UC and colectomy in 85.9% of cases. The administrative database was 37% sensitive in identifying patients with ≥ 1Charlson comorbidity. Restricting analysis to active comorbidities increased the sensitivity to 63%. The sensitivity of identifying patients with at least one postoperative complication was 68%; restricting analysis to more severe complications improved the sensitivity to 84%. CONCLUSIONS: Administrative data identified the same risk factors for postoperative complications as chart review, but overestimated the magnitude of risk. This discrepancy may be explained by coding inaccuracies that selectively identifying the most serious complications and comorbidities.


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