首页> 外文会议>UKACC International Conference on Control >Intensive Control Insulin-Nutrition-Glucose Model validated in critically ill patients
【24h】

Intensive Control Insulin-Nutrition-Glucose Model validated in critically ill patients

机译:在重症患者中验证了强化控制胰岛素,营养,葡萄糖模型

获取原文

摘要

A comprehensive, more physiologically relevant Intensive Control Insulin-Nutrition-Glucose (ICING) Model is presented and validated using data from critically ill patients. Glucose utilisation and its endogenous production in particular, are more distinctly expressed. A more robust glucose absorption model through ingestion is also added. Finally, this model also includes explicit pathways of insulin kinetics, clearance and utilisation. Identification of critical constant population parameters is carried out parametrically, optimising one hour forward prediction errors, while avoiding model identifiability issues. The identified population values are pG = 0.006 min−1, EGPb = 1.16 mmol/min and nI = 0.003 min−1, all of which are within reported physiological ranges. Insulin sensitivity, SI, is identified hourly for each individual. All other model parameters are kept at well-known population values or functions of body weight or surface area. A sensitivity study confirms the validity of limiting time-varying parameters to SI only. The model achieves median fitting error <1% in data from 173 patients (N = 42,941 hrs in total) who received insulin while in the Intensive Care Unit (ICU) and stayed for more than 72 hrs. Most importantly, the median per-patient one-hour ahead prediction error is a very low 2.80% [IQR 1.18, 6.41%]. It is significant that the 75th percentile prediction error is now within the lower bound of typical glucometer measurement errors of 7–12%. This result further confirms that the model is suitable for developing model-based insulin therapies, and capable of delivering tight blood glucose control, in a real-time model based control framework with a tight prediction error range.
机译:提出并使用来自重症患者的数据验证并验证了一个全面的,与生理相关的综合控制型胰岛素,营养,葡萄糖(ICING)模型。葡萄糖利用及其特别是内源性生产被更清楚地表达。还增加了通过摄取的更健壮的葡萄糖吸收模型。最后,该模型还包括胰岛素动力学,清除和利用的明确途径。参数化地确定关键常数种群参数,优化了一个小时的前向预测误差,同时避免了模型可识别性问题。鉴定出的群体值是p G = 0.006 min -1 ,EGP b = 1.16 mmol / min和n I = 0.003 min -1 ,所有这些均在所报告的生理范围内。每小时对每个人确定胰岛素敏感性S I 。所有其他模型参数均保持为众所周知的总体值或体重或表面积的函数。敏感性研究证实了将时变参数仅限制为S I 的有效性。该模型在173名在重症监护病房(ICU)期间接受胰岛素治疗且住院时间超过72小时的患者(共N = 42,941小时)的数据中位数拟合误差<1%。最重要的是,每位病人一小时的超前预测误差中位数非常低,仅为2.80%[IQR 1.18,6.41%]。重要的是,第75个百分位数的预测误差现在处于典型血糖仪测量误差的7–12%的下限之内。该结果进一步证实了该模型适用于开发基于模型的胰岛素疗法,并且能够在具有严格预测误差范围的基于模型的实时控制框架中提供严格的血糖控制。

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