Goetz Matthew Bidwell, Hoang Tuyen, Kan Virginia L, Rimland David, Rodriguez-Barradas Maria
1 VA Greater Los Angeles Healthcare System and David Geffen School of Medicine, University of California , Los Angeles, California.
AIDS Res Hum Retroviruses. 2014 Jul;30(7):626-33. doi: 10.1089/AID.2013.0287. Epub 2014 Mar 20.
An algorithm was developed that identifies patients with new diagnoses of HIV infection by the use of electronic health records. It was based on the sequence of HIV diagnostic tests, entry of ICD-9-CM diagnostic codes, and measurement of HIV-1 plasma RNA levels in persons undergoing HIV testing from 2006 to 2012 at four large urban Veterans Health Administration (VHA) facilities. Source data were obtained from the VHA National Corporate Data Warehouse. Chart review was done by a single trained abstractor to validate site-level data regarding new diagnoses. We identified 1,153 patients as having a positive HIV diagnostic test within the VHA. Of these, 57% were determined to have prior knowledge of their HIV status from testing at non-VHA facilities. An algorithm based on the sequence and results of available laboratory tests and ICD-9-CM entries identified new HIV diagnoses with a sensitivity of 83%, specificity of 86%, positive predictive value of 85%, and negative predictive value of 90%. There were no meaningful demographic or clinical differences between newly diagnosed patients who were correctly or incorrectly classified by the algorithm. We have validated a method to identify cases of new diagnosis of HIV infection in large administrative datasets. This method, which has a sensitivity of 83%, specificity of 86%, positive predictive value of 85%, and negative predictive value of 90% can be used in analyses of the epidemiology of newly diagnosed HIV infection.
开发了一种算法,该算法通过使用电子健康记录来识别新诊断出艾滋病毒感染的患者。它基于艾滋病毒诊断测试的顺序、ICD-9-CM诊断代码的录入以及2006年至2012年期间在四个大型城市退伍军人健康管理局(VHA)设施接受艾滋病毒检测的人员的HIV-1血浆RNA水平测量。源数据来自VHA国家企业数据仓库。由一名经过培训的单一提取人员进行图表审查,以验证有关新诊断的机构层面数据。我们在VHA内确定了1153名艾滋病毒诊断测试呈阳性的患者。其中,57%的患者被确定在非VHA设施进行检测时已了解自己的艾滋病毒感染状况。基于现有实验室测试的顺序和结果以及ICD-9-CM条目开发的一种算法识别新的艾滋病毒诊断的灵敏度为83%,特异度为86%,阳性预测值为85%,阴性预测值为90%。通过该算法正确或错误分类的新诊断患者之间在人口统计学或临床方面没有显著差异。我们已经验证了一种在大型管理数据集中识别新诊断艾滋病毒感染病例的方法。这种方法的灵敏度为83%,特异度为86%,阳性预测值为85%,阴性预测值为90%,可用于新诊断艾滋病毒感染的流行病学分析。