Abuabara Katrina, Magyari Alexa M, Hoffstad Ole, Jabbar-Lopez Zarif K, Smeeth Liam, Williams Hywel C, Gelfand Joel M, Margolis David J, Langan Sinead M
Program for Clinical Research, Department of Dermatology, University of California San Francisco, San Francisco, California, USA.
Department of Health Policy & Management, University of California Berkeley School of Public Health, Berkeley, California, USA.
J Invest Dermatol. 2017 Aug;137(8):1655-1662. doi: 10.1016/j.jid.2017.03.029. Epub 2017 Apr 18.
Electronic health records hold great promise for clinical and epidemiologic research. Undertaking atopic eczema (AE) research using such data is challenging because of its episodic and heterogeneous nature. We sought to develop and validate a diagnostic algorithm that identifies AE cases based on codes used for electronic records used in the UK Health Improvement Network. We found that at least one of five diagnosis codes plus two treatment codes for any skin-directed therapy were likely to accurately identify patients with AE. To validate this algorithm, a questionnaire was sent to the physicians of 200 randomly selected children and adults. The primary outcome, positive predictive value for a physician-confirmed diagnosis of AE, was 86% (95% confidence interval = 80-91). Additional criteria increased the PPV up to 95% but would miss up to 89% of individuals with physician-confirmed AE. The first and last entered diagnosis codes for individuals showed good agreement with the physician-confirmed age at onset and last disease activity; the mean difference was 0.8 years (95% confidence interval = -0.3 to 1.9) and -1.3 years (95% confidence interval = -2.5 to -0.1), respectively. A combination of diagnostic and prescription codes can be used to reliably estimate the diagnosis and duration of AE from The Health Improvement Network primary care electronic health records in the UK.
电子健康记录对临床和流行病学研究具有巨大潜力。由于特应性皮炎(AE)具有发作性和异质性,利用此类数据开展AE研究具有挑战性。我们试图开发并验证一种诊断算法,该算法基于英国健康改善网络中使用的电子记录代码来识别AE病例。我们发现,五个诊断代码中的至少一个加上任何皮肤定向治疗的两个治疗代码可能会准确识别出AE患者。为了验证该算法,我们向随机抽取的200名儿童和成人的医生发送了一份问卷。主要结果,即医生确诊AE的阳性预测值为86%(95%置信区间 = 80 - 91)。额外的标准可将阳性预测值提高至95%,但会遗漏高达89%经医生确诊的AE患者。个体的首个和最后输入的诊断代码与医生确诊的发病年龄和最近疾病活动情况显示出良好的一致性;平均差异分别为0.8岁(95%置信区间 = -0.3至1.9)和 -1.3岁(95%置信区间 = -2.5至 -0.1)。诊断代码和处方代码的组合可用于从英国健康改善网络初级保健电子健康记录中可靠地估计AE的诊断和病程。