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Validation of pediatric diabetes case identification approaches for diagnosed cases by using information in the electronic health records of a large integrated managed health care organization

机译:通过使用大型综合管理医疗机构的电子健康记录中的信息来验证用于诊断病例的小儿糖尿病病例识别方法

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We explored the utility of different algorithms for diabetes case identification by using electronic health records. Inpatient and outpatient diagnosis codes, as well as data on laboratory results and dispensing of antidiabetic medications were extracted from electronic health records of Kaiser Permanente Southern California members who were less than 20 years of age in 2009. Diabetes cases were ascertained by using the SEARCH for Diabetes in Youth Study protocol and comprised the "gold standard." Sensitivity, specificity, positive and negative predictive values, accuracy, and the area under the receiver operating characteristic curve (AUC) were compared in 1,000 bootstrapped samples. Based on data from 792,992 youth, of whom 1,568 had diabetes (77.2%, type 1 diabetes; 22.2%, type 2 diabetes; 0.6%, other), case identification accuracy was highest in 75% of bootstrapped samples for those who had 1 or more outpatient diabetes diagnoses or 1 or more insulin prescriptions (sensitivity, 95.9%; positive predictive value, 95.5%; AUC, 97.9%) and in 25% of samples for those who had 2 or more outpatient diabetes diagnoses and 1 or more antidiabetic medications (sensitivity, 92.4%; positive predictive value, 98.4%; AUC, 96.2%). Having 1 or more outpatient type 1 diabetes diagnoses (International Classification of Diseases, Ninth Revision, Clinical Modification, code 250.x1 or 250.x3) had the highest accuracy (94.4%) and AUC (94.1%) for type 1 diabetes; the absence of type 1 diabetes diagnosis had the highest accuracy (93.8%) and AUC (93.6%) for identifying type 2 diabetes. Information in the electronic health records from managed health care organizations provides an efficient and cost-effective source of data for childhood diabetes surveillance.
机译:我们通过使用电子健康记录探索了不同算法在糖尿病病例识别中的实用性。从2009年不到20岁的Kaiser Permanente南加州成员的电子健康记录中提取了住院和门诊诊断代码以及实验室结果和抗糖尿病药物的配药数据。通过使用SEARCH来确定糖尿病病例糖尿病青年研究协议,并包含“黄金标准”。在1,000个自举样品中比较了灵敏度,特异性,阳性和阴性预测值,准确性以及受体工作特征曲线(AUC)下的面积。根据来自792,992名青年的数据,其中1,568名患有糖尿病(17.2型糖尿病为77.2%; 2型糖尿病为22.2%;其他为0.6%),在1名或1名糖尿病患者中,病例识别准确率最高的是75%。诊断为2个或更多门诊糖尿病且使用1种或多种抗糖尿病药物的患者中,有更多的门诊糖尿病诊断或1个或多个胰岛素处方(敏感性为95.9%;阳性预测值为95.5%; AUC为97.9%),并且在25%的样本中(敏感性为92.4%;阳性预测值为98.4%; AUC为96.2%)。具有1个或多个门诊1型糖尿病诊断(国际疾病分类,第9修订版,临床修改,代码250.x1或250.x3)对1型糖尿病的准确性最高(94.4%)和AUC(94.1%);缺乏1型糖尿病的诊断对2型糖尿病的识别准确性最高(93.8%)和AUC(93.6%)。来自受管理的医疗保健组织的电子医疗记录中的信息为儿童糖尿病的监测提供了有效且具有成本效益的数据来源。

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