利用 OneFlorida+ 临床研究网络的电子健康记录,开发识别儿童和青少年糖尿病患者的自动算法。

IF 5.4 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Piaopiao Li, Eliot Spector, Khalid Alkhuzam, Rahul Patel, William T Donahoo, Sarah Bost, Tianchen Lyu, Yonghui Wu, William Hogan, Mattia Prosperi, Brian E Dixon, Dana Dabelea, Levon H Utidjian, Tessa L Crume, Lorna Thorpe, Angela D Liese, Desmond A Schatz, Mark A Atkinson, Michael J Haller, Elizabeth A Shenkman, Yi Guo, Jiang Bian, Hui Shao
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引用次数: 0

摘要

目的:利用用友卫生系统的电子健康记录(EHR),开发一种用于识别儿童和青少年糖尿病病例的可计算表型(CP)自动算法:可计算表型算法是根据电子病历(UF Health System 2012-2020)中的结构化数据反复推导出来的。我们随机抽取了 536 例推测病例:没有 1 型糖尿病 (T1D) 或 2 型糖尿病 (T2D) 诊断代码的推测病例被归类为非糖尿病/其他类型糖尿病。如果最近的诊断是 T1D,则将其余病例归类为 T1D;如果最近的诊断是 T2D,则将其余病例归类为 T2D。接下来,我们应用可确定糖尿病类型的诊断和手术清单(例如,类固醇的使用提示诱发糖尿病)来纠正步骤 1 中的错误分类。在 536 例复查病例中,分别有 159 例和 64 例患有 T1D 和 T2D。CP 算法对 T1D 的灵敏度、特异性和阳性预测值分别为 94%、98% 和 96%,对 T2D 的灵敏度、特异性和阳性预测值分别为 95%、95% 和 73%:我们根据和睦家医疗集团的电子病历数据,开发了一种基于电子病历的高准确度青少年糖尿病预测算法。与之前的研究一致,使用这些方法更难识别 T2D。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing an automated algorithm for identification of children and adolescents with diabetes using electronic health records from the OneFlorida+ clinical research network.

Aim: To develop an automated computable phenotype (CP) algorithm for identifying diabetes cases in children and adolescents using electronic health records (EHRs) from the UF Health System.

Materials and methods: The CP algorithm was iteratively derived based on structured data from EHRs (UF Health System 2012-2020). We randomly selected 536 presumed cases among individuals aged <18 years who had (1) glycated haemoglobin levels ≥ 6.5%; or (2) fasting glucose levels ≥126 mg/dL; or (3) random plasma glucose levels ≥200 mg/dL; or (4) a diabetes-related diagnosis code from an inpatient or outpatient encounter; or (5) prescribed, administered, or dispensed diabetes-related medication. Four reviewers independently reviewed the patient charts to determine diabetes status and type.

Results: Presumed cases without type 1 (T1D) or type 2 diabetes (T2D) diagnosis codes were categorized as non-diabetes/other types of diabetes. The rest were categorized as T1D if the most recent diagnosis was T1D, or otherwise categorized as T2D if the most recent diagnosis was T2D. Next, we applied a list of diagnoses and procedures that can determine diabetes type (e.g., steroid use suggests induced diabetes) to correct misclassifications from Step 1. Among the 536 reviewed cases, 159 and 64 had T1D and T2D, respectively. The sensitivity, specificity, and positive predictive values of the CP algorithm were 94%, 98% and 96%, respectively, for T1D and 95%, 95% and 73% for T2D.

Conclusion: We developed a highly accurate EHR-based CP for diabetes in youth based on EHR data from UF Health. Consistent with prior studies, T2D was more difficult to identify using these methods.

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来源期刊
Diabetes, Obesity & Metabolism
Diabetes, Obesity & Metabolism 医学-内分泌学与代谢
CiteScore
10.90
自引率
6.90%
发文量
319
审稿时长
3-8 weeks
期刊介绍: Diabetes, Obesity and Metabolism is primarily a journal of clinical and experimental pharmacology and therapeutics covering the interrelated areas of diabetes, obesity and metabolism. The journal prioritises high-quality original research that reports on the effects of new or existing therapies, including dietary, exercise and lifestyle (non-pharmacological) interventions, in any aspect of metabolic and endocrine disease, either in humans or animal and cellular systems. ‘Metabolism’ may relate to lipids, bone and drug metabolism, or broader aspects of endocrine dysfunction. Preclinical pharmacology, pharmacokinetic studies, meta-analyses and those addressing drug safety and tolerability are also highly suitable for publication in this journal. Original research may be published as a main paper or as a research letter.
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