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The accuracy of population health data for monitoring trends and outcomes among women with diabetes in pregnancy.

机译:人口健康数据在监测妊娠糖尿病妇女中趋势和结果方面的准确性。

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AIM: To assess the accuracy of routinely collected population birth and hospital datasets in identifying maternal pregestational diabetes mellitus (PDM) and gestational diabetes mellitus (GDM). METHODS: Information on maternal diabetes status was obtained from the medical records of a random sample of 1200 women and compared with routinely collected, population-based birth and hospital data. PDM and GDM are reported in both databases. Sensitivity, specificity, positive predictive value (PPV), negative predictive value and the kappa statistic were determined. RESULTS: Medical records were available for 1184 of the 1200 women sampled. 0.3% of women were classified with PDM and 4.8% with GDM. 'True' PDM was under-reported and misclassified in the birth data, but all cases were reported in the hospital data. GDM was also more completely and more accurately reported in the hospital data than in the birth data. Diabetes requiring insulin was more likely to be reported than non-insulin dependent diabetes. CONCLUSIONS: Hospital data were more sensitive and accurate (higher PPVs) than birth data and these measures were not improved by ascertaining diabetes from either of the two datasets. More severe forms of diabetes were more likely to be reported than less severe.
机译:目的:评估常规收集的人口出生和医院数据集在识别孕产妇妊娠糖尿病(PDM)和妊娠糖尿病(GDM)中的准确性。方法:从1200名妇女的随机样本的病历中获取有关孕产妇糖尿病状况的信息,并将其与常规收集的基于人群的出生和医院数据进行比较。在两个数据库中都报告了PDM和GDM。确定敏感性,特异性,阳性预测值(PPV),阴性预测值和kappa统计量。结果:1200名妇女中有1184名获得了医疗记录。 0.3%的女性被归类为PDM,4.8%被归为GDM。出生数据中“ True” PDM的报告不足,分类错误,但医院数据中报告了所有病例。与出生数据相比,GDM在医院数据中的报告也更完整,更准确。与非胰岛素依赖型糖尿病相比,需要胰岛素的糖尿病更有可能被报道。结论:医院数据比出生数据更敏感,更准确(PPV更高),并且无法通过从两个数据集中确定糖尿病来改善这些措施。较严重的糖尿病更有可能被报道。

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