Khurshid Shaan, Keaney John, Ellinor Patrick T, Lubitz Steven A
Department of Medicine, Massachusetts General Hospital, Boston, Massachusetts.
Cardiovascular Research Center, Massachusetts General Hospital, Boston, Massachusetts; Cardiac Arrhythmia Service, Department of Cardiology, Massachusetts General Hospital, Boston, Massachusetts.
Am J Cardiol. 2016 Jan 15;117(2):221-5. doi: 10.1016/j.amjcard.2015.10.031. Epub 2015 Nov 6.
Atrial fibrillation (AF) is common and increases stroke risk and mortality. Many knowledge gaps remain with respect to practice patterns and outcomes. Electronic medical records (EMRs) may serve as powerful research tools if AF status can be properly ascertained. We sought to develop an algorithm for identifying subjects with and without AF in the EMR and compare it to previous methods. Using a hospital network EMR (n = 5,737,846), we randomly selected 8,200 subjects seen at a large academic medical center in January 2014 to derive and validate 7 AF classification schemas (4 cases and 3 controls) to construct a composite AF algorithm. In an independent sample of 172,138 subjects, we compared this algorithm against published AF classification methods. In total, we performed manual adjudication of AF in 700 subjects. Three AF schemas (AF1, AF2, and AF4) achieved positive predictive value (PPV) >0.9. Two control schemas achieved PPV >0.9 (control 1 and control 3). A combination algorithm AF1, AF2, and AF4 (PPV 88%; 8.2% classified) outperformed published classification methods including >1 outpatient International Statistical Classification of Diseases, Ninth Revision code or 1 outpatient code with an electrocardiogram demonstrating AF (PPV 82%; 5.9% classified), ≥ 1 inpatient International Statistical Classification of Diseases, Ninth Revision code or electrocardiogram demonstrating AF (PPV 88%; 6.1% classified), or the intersection of these (PPV 84%; 7.4% classified). When applied simultaneously, the case and control algorithms classified 98.4% of the cohort with zero disagreement. In conclusion, we derived a parsimonious and portable algorithm to identify subjects with and without AF with high sensitivity. If broadly applied, this algorithm can provide optimal power for EMR-based AF research.
心房颤动(AF)很常见,会增加中风风险和死亡率。在实践模式和结果方面仍存在许多知识空白。如果能正确确定房颤状态,电子病历(EMR)可作为强大的研究工具。我们试图开发一种算法,用于在电子病历中识别有无房颤的受试者,并将其与以前的方法进行比较。利用医院网络电子病历(n = 5,737,846),我们随机选择了2014年1月在一家大型学术医疗中心就诊的8200名受试者,以推导和验证7种房颤分类模式(4例和3例对照),构建一个复合房颤算法。在172,138名受试者的独立样本中,我们将该算法与已发表的房颤分类方法进行了比较。我们总共对700名受试者进行了房颤的人工判定。三种房颤模式(AF1、AF2和AF4)的阳性预测值(PPV)>0.9。两种对照模式的PPV>0.9(对照1和对照3)。组合算法AF1、AF2和AF4(PPV 88%;分类率8.2%)优于已发表的分类方法,包括>1个门诊国际疾病分类第九版代码或1个显示房颤的门诊心电图代码(PPV 82%;分类率5.9%)、≥1个住院国际疾病分类第九版代码或显示房颤的心电图(PPV 88%;分类率6.1%)或这些的交集(PPV 8