Identifying cases of congestive heart failure from administrative data: a validation study using primary care patient records.

S. Schultz, D. Rothwell, Z. Chen, Karen Tu, Karen Tu
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引用次数: 326

Abstract

INTRODUCTION To determine if using a combination of hospital administrative data and ambulatory care physician billings can accurately identify patients with congestive heart failure (CHF), we tested 9 algorithms for identifying individuals with CHF from administrative data. METHODS The validation cohort against which the 9 algorithms were tested combined data from a random sample of adult patients from EMRALD, an electronic medical record database of primary care physicians in Ontario, Canada, and data collected in 2004/05 from a random sample of primary care patients for a study of hypertension. Algorithms were evaluated on sensitivity, specificity, positive predictive value, area under the curve on the ROC graph and the combination of likelihood ratio positive and negative. RESULTS We found that that one hospital record or one physician billing followed by a second record from either source within one year had the best result, with a sensitivity of 84.8% and a specificity of 97.0%. CONCLUSION Population prevalence of CHF can be accurately measured using combined administrative data from hospitalization and ambulatory care.
从行政数据中识别充血性心力衰竭病例:一项使用初级保健患者记录的验证研究。
为了确定结合医院管理数据和门诊医生账单是否能准确识别充血性心力衰竭(CHF)患者,我们测试了9种算法,用于从管理数据中识别CHF患者。方法对9种算法进行验证的队列结合了EMRALD(加拿大安大略省初级保健医生电子病历数据库)中随机收集的成年患者数据,以及2004/05年度随机收集的高血压研究初级保健患者数据。评估算法的敏感性、特异性、阳性预测值、ROC图曲线下面积以及似然比阳性和阴性的组合。结果我们发现,在一年内获得一份医院记录或一份医生账单后再获得任何来源的第二份记录的结果最好,敏感性为84.8%,特异性为97.0%。结论综合住院和门诊管理资料可准确测量人群CHF患病率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chronic Diseases and Injuries in Canada
Chronic Diseases and Injuries in Canada PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-MEDICINE, GENERAL & INTERNAL
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