首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Online Calibration of Glucose Sensors From the Measured Current by a Time-Varying Calibration Function and Bayesian Priors
【24h】

Online Calibration of Glucose Sensors From the Measured Current by a Time-Varying Calibration Function and Bayesian Priors

机译:通过时变校准函数和贝叶斯先验从测量电流在线校准葡萄糖传感器

获取原文
获取原文并翻译 | 示例
           

摘要

Goal: Minimally invasive continuous glucose monitoring (CGM) sensors measure in the subcutis a current signal, which is converted into interstitial glucose (IG) concentration by a calibration process periodically updated using fingerstick blood glucose (BG) references. Though important in diabetes management, CGM sensors still suffer from accuracy problems. Here, we propose a new online calibration method improving accuracy of CGM glucose profiles with respect to manufacturer calibration. Method: The proposed method fits CGM current signal against the BG references collected twice a day for calibration purposes, by a time-varying calibration function whose parameters are identified in a Bayesian framework using a priori second-order statistical knowledge. The distortion introduced by BG-to-IG kinetics is compensated before parameter identification via nonparametric deconvolution. Results: The method was tested on a database where 108 CGM signals were collected for 7 days by the Dexcom G4 Platinum sensor. Results show the new method drives to a statistically significant accuracy improvement as measured by three commonly used metrics: mean absolute relative difference reduced from 12.73% to 11.47%; percentage of accurate glucose estimates increased from 82.00% to 89.19%; and percentage of values falling in the “A” zone of the Clark error grid increased from 82.22% to 88.86%. Conclusion: The new calibration method significantly improves CGM glucose profiles accuracy with respect to manufacturer calibration. Significance: The proposed algorithm provides a real-time improvement of CGM accuracy, which can be crucial in several CGM-based applications, including the artificial pancreas, thus providing a potential great impact in the diabetes technology research community.
机译:目标:微创连续葡萄糖监测(CGM)传感器在皮下组织中测量电流信号,该信号通过使用指尖血糖(BG)参考定期更新的校准过程转换为间质葡萄糖(IG)浓度。尽管CGM传感器在糖尿病管理中很重要,但仍存在准确性问题。在这里,我们提出了一种新的在线校准方法,该方法可以提高CGM葡萄糖曲线相对于制造商校准的准确性。方法:通过时变校准函数,将其参数在贝叶斯框架中使用先验的二阶统计知识进行识别,从而将CGM电流信号与每天两次采集的BG参考值进行校准,以进行校准。在通过非参数反卷积进行参数识别之前,可以补偿由BG到IG动力学引入的失真。结果:该方法在数据库中进行了测试,Dexcom G4 Platinum传感器在7天中收集了108个CGM信号。结果表明,通过三种常用度量标准,新方法可实现统计学上显着的准确性提高:平均绝对相对差异从12.73%降低至11.47%;准确的血糖估计值百分比从82.00%增加到89.19%;落在Clark误差网格的“ A”区域中的值的百分比从82.22%增加到88.86%。结论:相对于制造商校准,新的校准方法显着提高了CGM葡萄糖谱的准确性。启示:所提出的算法可实时提高CGM的准确性,这在包括人造胰腺在内的几种基于CGM的应用中至关重要,因此可能对糖尿病技术研究界产生重大影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号