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The Role of Glycemic Index and Glycemic Load in the Development of Real-Time Postprandial Glycemic Response Prediction Models for Patients with Gestational Diabetes

机译:血糖指数的作用和血糖负荷在妊娠期糖尿病患者的实时餐后血糖反应预测模型中的作用

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摘要

The incorporation of glycemic index (GI) and glycemic load (GL) is a promising way to improve the accuracy of postprandial glycemic response (PPGR) prediction for personalized treatment of gestational diabetes (GDM). Our aim was to assess the prediction accuracy for PPGR prediction models with and without GI data in women with GDM and healthy pregnant women. The GI values were sourced from University of Sydney’s database and assigned to a food database used in the mobile app DiaCompanion. Weekly continuous glucose monitoring (CGM) data for 124 pregnant women (90 GDM and 34 control) were analyzed together with records of 1489 food intakes. Pearson correlation (R) was used to quantify the accuracy of predicted PPGRs from the model relative to those obtained from CGM. The final model for incremental area under glucose curve (iAUC120) prediction chosen by stepwise multiple linear regression had an R of 0.705 when GI/GL was included among input variables and an R of 0.700 when GI/GL was not included. In linear regression with coefficients acquired using regularization methods, which was tested on the data of new patients, R was 0.584 for both models (with and without inclusion of GI/GL). In conclusion, the incorporation of GI and GL only slightly improved the accuracy of PPGR prediction models when used in remote monitoring.
机译:血糖指数(GI)和血糖负荷(GL)的掺入是提高餐后血糖反应(PPGR)预测对妊娠期糖尿病(GDM)的个性化治疗的预测的有希望的方法。我们的目的是评估PPGR预测模型的预测准确性,其中没有GDM和健康孕妇的妇女中的GI数据。 GI值从悉尼大学的数据库中源,并分配给移动应用程序DiaCocspanion中使用的食品数据库。每周连续的葡萄糖监测(CGM)124名孕妇(90 GDM和34个控制)的数据分析了1489种食物摄入量的记录。 Pearson相关(R)用于量化相对于CGM获得的模型预测PPGRS的准确性。血糖曲线下的增量区域的最终模型(IAC120)逐步选择的预测的预测在输入变量中包括GI / GL时的r为0.705,并且当不包括GI / GL时为0.700。在使用正规化方法获取的系数的线性回归中,在新患者的数据上测试,两种型号的R为0.584(有和不包含GI / GL)。总之,在远程监控时,GI和GL的加入仅略微提高了PPGR预测模型的准确性。

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