California Diabetes Program, P.O. Box 997377, MS 7211, Sacramento, CA 95899-7377, USA.
Prev Chronic Dis. 2010 Mar;7(2):A34. Epub 2010 Feb 15.
Self-reported prediabetes and diabetes rates underestimate true prevalence, but mass laboratory screening is generally impractical for risk assessment and surveillance. We developed the Abnormal Glucose Risk Assessment-6 (AGRA-6) tool to address this problem.
Self-report data were obtained from the 1,887 adults (18 years or older) in the National Health and Nutrition Examination Survey (NHANES) 2005-2006 with fasting plasma glucose and oral glucose tolerance tests. We created AGRA-6 models by using logistic regression. Performance was validated with NHANES 2005-2006 data by using leave-1-out cross-validation. Standard performance characteristics (sensitivity, specificity, predictive values, area under receiver-operating characteristic curves) were assessed, as was the potential efficiency of the models to reduce laboratory testing in screening efforts.
Performance was good for all models under testing conditions. Use of the AGRA-6 in screening efforts could reduce laboratory testing by at least 30% when sensitivity is maximized and at least 52% when sensitivity and specificity are balanced.
The AGRA-6 appears to be an effective, feasible tool that uses self-reported data compatible with the Behavioral Risk Factor Surveillance System to assess population-level prevalence, identify abnormal glucose levels, optimize screening efforts, and focus interventions to reduce the prevalence of abnormal glucose levels.
自我报告的糖尿病前期和糖尿病发病率低估了真实的流行率,但大规模实验室筛查通常不适用于风险评估和监测。我们开发了异常血糖风险评估-6(AGRA-6)工具来解决这个问题。
我们从 1887 名年龄在 18 岁或以上的成年人(NHANES 2005-2006)中获得了自我报告的数据,这些人接受了空腹血浆葡萄糖和口服葡萄糖耐量试验。我们使用逻辑回归创建了 AGRA-6 模型。使用 NHANES 2005-2006 数据进行了留一法交叉验证,以验证性能。评估了标准性能特征(敏感性、特异性、预测值、接受者操作特征曲线下面积),以及模型在筛选工作中减少实验室检测的潜在效率。
在测试条件下,所有模型的性能都很好。在灵敏度最大化时,AGRA-6 用于筛选工作可以减少至少 30%的实验室检测,在灵敏度和特异性平衡时可以减少至少 52%的实验室检测。
AGRA-6 似乎是一种有效的、可行的工具,它使用自我报告的数据与行为风险因素监测系统兼容,以评估人群水平的流行率、识别异常血糖水平、优化筛选工作,并集中干预措施以降低异常血糖水平的流行率。