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Understanding Prediabetes in a Medicare Advantage Population Using Data Adaptive Techniques

机译:使用数据自适应技术了解Medicare优势人群中的前驱糖尿病

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The objective was to identify individuals with undiagnosed prediabetes from administrative data using adaptive techniques. The data source was a national Medicare Advantage Prescription Drug (MAPD) plan administrative data set. A retrospective, cross-sectional study developed and evaluated data adaptive logistic regression, decision tree, neural network, and ensemble predictive models for metabolic syndrome and prediabetes using 3 mutually exclusive cohorts (N = 279,903). The misclassification rate (MCR), average squared error (ASE), c-statistics, sensitivity (SN), and false positive (FP) rates were compared to select the final predictive models. MAPD individuals with continuous enrollment from 2013 to 2014 were included. Metabolic syndrome and prediabetes were defined using clinical guidelines, diagnosis, and laboratory data. A total of 512 variables identified through subject matter expertise in addition to utilizing all data available were evaluated for the modeling. The ensemble model demonstrated better discrimination (c-statistics, MCR, and ASE of 0.83, 0.24, and 0.16, respectively), high SN, and low FP rate in predicting metabolic syndrome than the individual data adaptive modeling techniques. Logistic regression demonstrated better discrimination (c-statistics, MCR, and ASE of 0.67, 0.13, and 0.11 respectively), high SN, and low FP rate in predicting prediabetes than the other adaptive modeling techniques or ensemble methods. The scored data predicted prediabetes in 44% of the MAPD population, which is comparable to 2005-2006 National Health and Nutrition Examination Survey prediabetes rates of 41%. The logistic regression model demonstrated good performance in predicting undiagnosed prediabetes in MAPD individuals.
机译:目的是使用自适应技术从行政数据中识别出未诊断为糖尿病前期的个体。数据源是国家医疗保险优势处方药(MAPD)计划管理数据集。一项回顾性横断面研究使用3个互斥的队列(N = 279,903)开发并评估了代谢综合征和前驱糖尿病的数据自适应逻辑回归,决策树,神经网络和整体预测模型。比较误分类率(MCR),平均平方误差(ASE),c统计量,灵敏度(SN)和假阳性(FP)率,以选择最终的预测模型。纳入了2013年至2014年连续入学的MAPD个人。使用临床指南,诊断和实验室数据定义了代谢综合征和糖尿病前期。除利用所有可用数据外,还通过主题专业知识确定了总共512个变量,用于建模。该集合模型在预测代谢综合征中表现出比单独的数据自适应建模技术更好的区分度(c统计量,MCR和ASE分别为0.83、0.24和0.16),高SN和低FP率。与其他自适应建模技术或整体方法相比,逻辑回归在预测糖尿病前期方面表现出更好的辨别力(c统计量,MCR和ASE分别为0.67、0.13和0.11),高SN和低FP率。评分数据可预测44%的MAPD人群患有糖尿病前期,这与2005-2006年美国国家健康和营养检查调查的41%的糖尿病前期水平相当。逻辑回归模型显示了在MAPD个体中预测未诊断的糖尿病前的良好表现。

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