Ngwezi Deliwe P, Savu Anamaria, Yeung Roseanne O, Butalia Sonia, Kaul Padma
Department of Medicine, University of Alberta, Edmonton, Alberta, Canada; Canadian VIGOUR Center, Edmonton, Alberta, Canada.
Division of Endocrinology and Metabolism, Department of Medicine, University of Calgary, Calgary, Alberta, Canada.
Can J Diabetes. 2023 Dec;47(8):643-648.e1. doi: 10.1016/j.jcjd.2023.07.003. Epub 2023 Jul 13.
Our aim in this study was to evaluate the accuracy of alternative algorithms for identifying pre-existing type 1 or 2 diabetes (T1DM or T2DM) and gestational diabetes mellitus (GDM) in pregnant women.
Data from a clinical registry of pregnant women presenting to an Edmonton diabetes clinic between 2002 and 2009 were linked and administrative health records. Three algorithms for identifying women with T1DM, T2DM, and GDM based on International Classification of Diseases---tenth revision (ICD-10) codes were assessed: delivery hospitalization records (Algorithm #1), outpatient clinics during pregnancy (Algorithm #2), and delivery hospitalization plus outpatient clinics during pregnancy (Algorithm #3). In a subset of women with clinic visits between 2005 and 2009, we examined the performance of an additional Algorithm #4 based on Algorithm #3 plus outpatient clinics in the 2 years before pregnancy. Using the diabetes clinical registry as the "gold standard," we calculated true positive rates and agreement levels for the algorithms.
The clinical registry included data on 928 pregnancies, of which 90 were T1DM, 89 were T2DM, and 749 were GDM. Algorithm #3 had the highest true positive rate for the detection of T1DM, T2DM, and GDM of 94%, 72%, and 99.9%, respectively, resulting in an overall agreement of 97% in diagnosis between the administrative databases and the clinical registry. Algorithm #4 did not provide much improvement over Algorithm #3 in overall agreement.
An algorithm based on ICD-10 codes in the delivery hospitalization and outpatient clinic records during pregnancy can be used to accurately identify women with T1DM, T2DM, and GDM.
本研究旨在评估用于识别孕妇中已存在的1型或2型糖尿病(T1DM或T2DM)以及妊娠期糖尿病(GDM)的替代算法的准确性。
将2002年至2009年期间到埃德蒙顿糖尿病诊所就诊的孕妇临床登记数据与行政健康记录相链接。评估了三种基于国际疾病分类第十版(ICD - 10)编码来识别患有T1DM、T,2DM和GDM的女性的算法:分娩住院记录(算法#1)、孕期门诊记录(算法#2)以及分娩住院记录加孕期门诊记录(算法#3)。在2005年至2009年有门诊就诊记录的一部分女性中,我们研究了基于算法#3加上孕前两年门诊记录的另一种算法#4的性能。以糖尿病临床登记数据作为“金标准”,我们计算了这些算法的真阳性率和一致性水平。
临床登记数据包括928例妊娠的数据,其中90例为T1DM,89例为T2DM,749例为GDM。算法#3在检测T1DM、T2DM和GDM方面的真阳性率最高,分别为94%、72%和99.9%,行政数据库与临床登记数据之间的总体诊断一致性为97%。算法#4在总体一致性方面相比算法#3没有太大改进。
基于孕期分娩住院记录和门诊记录中的ICD - 10编码的算法可用于准确识别患有T1DM、T2DM和GDM的女性。