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首页> 外文期刊>Journal of Diabetes Science and Technology >Real-Time Glucose Estimation Algorithm for Continuous Glucose Monitoring Using Autoregressive Models
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Real-Time Glucose Estimation Algorithm for Continuous Glucose Monitoring Using Autoregressive Models

机译:使用自回归模型进行连续葡萄糖监测的实时葡萄糖估计算法

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Background: Continuous glucose monitors (CGMs) present a problem of lack of accuracy, especially in the lower range, sometimes leading to missed or false hypoglycemia. A new algorithm is presented here aimed at improving the measurement accuracy and hypoglycemia detection. Its core is the estimation of blood glucose (BG) in real time (RT) from CGM intensity readings using autoregressive (AR) models. Methods: Eighteen patients with type 1 diabetes were monitored for three days (one at the hospital and two at home) using the CGMS? Gold. For these patients, BG samples were taken every 15 min for 2 h after meals and every half hour otherwise during the first day. The relationship between the current measured by the CGMS Gold and BG was learned by an AR model, allowing its RT estimation. New capillary glucose measurements were used to correct the model BG estimations. Results: A total of 563 paired points were obtained from BG and monitor readings to validate the new algorithm. 98.5% of paired points fell in zones A+B of the Clarke error grid analysis with the proposed algorithm. The overall mean and median relative absolute differences (RADs) were 9.6% and 6.7%. Measurements meeting International Organization for Standardization (ISO) criteria were 88.7%. In the hypoglycemic range, the mean and median RADs were 8.1% and 6.0%, and measurements meeting ISO criteria were 86.7%. The sensitivity and specificity with respect to hypoglycemia detection were 91.5% and 95.0%. Conclusions: The performance measured with both clinical and numerical accuracy metrics illustrates the improved accuracy of the proposed algorithm compared with values presented in the literature. A significant improvement in hypoglycemia detection was also observed.
机译:背景:连续血糖监测仪(CGM)存在准确性不足的问题,尤其是在较低范围内,有时会导致漏诊或虚假的低血糖症。这里提出了一种新的算法,旨在提高测量精度和低血糖检测。其核心是使用自回归(AR)模型从CGM强度读数实时估算血糖(BG)。方法:使用CGMS对18例1型糖尿病患者进行为期三天的监测(一在医院,两在家里)。金。对于这些患者,饭后2小时每15分钟采集一次BG样品,否则在第一天每半小时采集一次。 CGMS Gold测量的电流与BG之间的关系通过AR模型获悉,从而可以进行RT估算。新的毛细血管葡萄糖测量值用于校正模型BG估算值。结果:从BG总共获得了563个配对点,并监测了读数以验证新算法。提出的算法有98.5%的配对点落在Clarke误差网格分析的区域A + B中。总平均和中位数相对绝对差(RADs)为9.6%和6.7%。符合国际标准化组织(ISO)标准的度量值为88.7%。在降血糖范围内,RAD的平均值和中位数分别为8.1%和6.0%,符合ISO标准的测量值为86.7%。低血糖检测的敏感性和特异性分别为91.5%和95.0%。结论:用临床和数值准确性指标衡量的性能说明了与文献中提供的值相比,所提出算法的改进准确性。还观察到低血糖检测的显着改善。

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