Broberg Craig, McLarry Joel, Mitchell Julie, Winter Christiane, Doberne Julie, Woods Patricia, Burchill Luke, Weiss Joseph
Adult Congenital Heart Program, UHN 62, Knight Cardiovascular Institute, Oregon Health & Science University, 3181 SW Sam Jackson Pk Rd, Portland, OR, 97239, USA.
Pediatr Cardiol. 2015 Apr;36(4):719-25. doi: 10.1007/s00246-014-1068-2. Epub 2014 Nov 27.
Diagnostic codes used in healthcare administration have been employed extensively in clinical research to identify target patient populations, including demonstration of important clinical outcomes among adults with congenital heart disease. However, little is known about the reliability of code-derived data in this context. We sought to determine the accuracy of International Classification of Disease-9th Revision (ICD-9) diagnoses and the reliability of retrieval algorithms in adults with congenital heart disease (ACHD). Pilot testing of a hierarchical algorithm to identify ACHD patients and determine their principle congenital diagnosis was performed. A revised algorithm was then applied retrospectively to a sample of all outpatients seen by providers who see general cardiology and ACHD patients. Using all ICD-9 codes available from any encounter, accuracy for detection and categorization of sub-types were compared to physician chart review. After initial testing on 334 patients, the revised algorithm was applied to 740 patients. The sensitivity and specificity for ACHD patient identification from this specialty clinic population were 99 and 88 %, respectively. Of 411 (56 %) non-ACHD patients, 49 were incorrectly categorized as ACHD by the algorithm. Of ACHD patients, 326 of 329 were correctly identified by diagnostic codes and categorization of ACHD defect sub-type was correct in 263 (80 %). Administrative data can be used for identification of ACHD patients based on ICD-9 codes with excellent sensitivity and reasonable specificity. Accurate categorization that would be utilized for quality indicators by ACHD defect type is less robust. Additional testing should be done using non-referral populations.
医疗保健管理中使用的诊断代码已广泛应用于临床研究,以识别目标患者群体,包括先天性心脏病成人患者重要临床结局的展示。然而,在这种情况下,关于代码衍生数据的可靠性知之甚少。我们试图确定国际疾病分类第九版(ICD - 9)诊断在先天性心脏病成人患者(ACHD)中的准确性以及检索算法的可靠性。对一种分层算法进行了试点测试,以识别ACHD患者并确定其主要先天性诊断。然后将修订后的算法回顾性应用于所有普通心脏病学和ACHD患者的门诊患者样本。利用任何一次就诊中可用的所有ICD - 9代码,将亚型检测和分类的准确性与医生病历审查进行比较。在对334名患者进行初步测试后,将修订后的算法应用于740名患者。从该专科门诊人群中识别ACHD患者的敏感性和特异性分别为99%和88%。在411名(56%)非ACHD患者中,有49名被算法错误分类为ACHD。在ACHD患者中,329名中有326名通过诊断代码被正确识别,ACHD缺陷亚型的分类在263名(80%)中是正确的。行政数据可用于基于ICD - 9代码识别ACHD患者,敏感性极佳,特异性合理。按ACHD缺陷类型用于质量指标的准确分类则不太可靠。应使用非转诊人群进行额外测试。