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Distinguishing incident and prevalent diabetes in an electronic medical records database

机译:在电子病历数据库中区分突发事件和流行糖尿病

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摘要

Purpose: To develop a method to identify incident diabetes mellitus (DM) using an electronic medical records (EMR) database and test this classification by comparing incident and prevalent DM with common outcomes related to DM duration. Methods: Incidence rates (IRs) of DM (defined as a first diagnosis or prescription) were measured in 3-month intervals through 36 months after registration in The Health Improvement Network, a primary care database, from 1994 to 2012. We used Joinpoint regression to identify the point where a statistically significant change in the trend of IRs occurred. Further analyses used this point to distinguish those likely to have incident (n=50315) versus prevalent (n=28337) DM. Incident and prevalent cohorts were compared using Cox regression for all-cause mortality, cardiovascular disease (CVD), diabetic retinopathy, diabetic nephropathy, and diabetic neuropathy. Analyses were adjusted for age, sex, smoking, obesity, hyperlipidemia, hypertension, and calendar year. Results: Trends in DM IRs plateaued 9 months after registration (p=0.04). All cause-mortality was increased (hazard ratio (HR) 1.62, 95% CI 1.53-1.70) among patients diagnosed with DM prior to 9 months following registration (prevalent DM) compared to those diagnosed after 9 months (incident DM). Similarly, the risk of DM-related complications was higher in prevalent versus incident DM patients [CVD, HR 2.24 (2.08-2.40); diabetic retinopathy, HR 1.31 (1.24-1.38); diabetic nephropathy, HR 2.30 (1.95-2.72); diabetic neuropathy, HR 1.28 (1.16-1.41)]. Conclusion: Joinpoint regression can be used to identify patients with newly diagnosed diabetes within EMR data. Failure to exclude patients with prevalent DM can lead to exaggerated associations of DM-related outcomes.
机译:目的:开发一种使用电子病历(EMR)数据库识别突发性糖尿病(DM)的方法,并通过比较突发性和流行性DM与与DM持续时间相关的常见结果进行比较来测试此分类。方法:从1994年至2012年,在注册为初级保健数据库的健康改善网络中,每三个月测量一次DM(定义为首次诊断或处方)的发病率(IR),直到36个月。我们使用Joinpoint回归确定IR趋势发生统计上显着变化的时间点。进一步的分析使用这一点来区分那些可能发生事件(n = 50315)与普遍(n = 28337)DM的事件。使用Cox回归比较事件和流行人群的全因死亡率,心血管疾病(CVD),糖尿病性视网膜病变,糖尿病性肾病和糖尿病性神经病。对年龄,性别,吸烟,肥胖,高脂血症,高血压和日历年的分析进行了调整。结果:DM IRs趋势在注册后9个月达到平稳状态(p = 0.04)。与在9个月后诊断的DM(事件DM)相比,在注册后9个月之前诊断为DM的患者(普遍DM),所有死因增加(危险比(HR)1.62,95%CI 1.53-1.70)。同样,与患糖尿病的DM患者相比,DM相关并发症的风险更高[CVD,HR 2.24(2.08-2.40);糖尿病性视网膜病变,HR 1.31(1.24-1.38);糖尿病肾病,HR 2.30(1.95-2.72);糖尿病性神经病变,HR 1.28(1.16-1.41)]。结论:Joinpoint回归可用于在EMR数据中识别新诊断的糖尿病患者。未能排除患有DM的患者可能导致DM相关结局的夸大关联。

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