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A physiological Intensive Control Insulin-Nutrition-Glucose (ICING) model validated in critically ill patients

机译:在危重患者中验证的生理强化控制胰岛素,营养葡萄糖(ICING)模型

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摘要

Intensive insulin therapy (IIT) and tight glycaemic control (TGC), particularly in intensive care unit (ICU), are the subjects of increasing and controversial debate in recent years. Model-based TGC has shown potential in delivering safe and tight glycaemic management, all the while limiting hypoglycaemia. A comprehensive, more physiologically relevant Intensive Control Insulin-Nutrition-Glucose (ICING) model is presented and validated using data from critically ill patients. Two existing glucose-insulin models are reviewed and formed the basis for the ICING model. Model limitations are discussed with respect to relevant physiology, pharmacodynamics and TGC practicality. Model identifiability issues are carefully considered for clinical settings. This article also contains significant reference to relevant physiology and clinical literature, as well as some references to the modeling efforts in this field. Identification of critical constant population parameters was performed in two stages, thus addressing model identifiability issues. Model predictive performance is the primary factor for optimizing population parameter values. The use of population values are necessary due to the limited clinical data available at the bedside in the clinical control scenario. Insulin sensitivity, S I, the only dynamic, time-varying parameter, is identified hourly for each individual. All population parameters are justified physiologically and with respect to values reported in the clinical literature. A parameter sensitivity study confirms the validity of limiting time-varying parameters to S I only, as well as the choices for the population parameters. The ICING model achieves median fitting error of 1% over data from 173 patients (N=42,941h in total) who received insulin while in the ICU and stayed for ≥72h. Most importantly, the median per-patient 1-h ahead prediction error is a very low 2.80% [IQR 1.18, 6.41%]. It is significant that the 75th percentile prediction error is within the lower bound of typical glucometer measurement errors of 7-12%. These results confirm that the ICING model is suitable for developing model-based insulin therapies, and capable of delivering real-time model-based TGC with a very tight prediction error range. Finally, the detailed examination and discussion of issues surrounding model-based TGC and existing glucose-insulin models render this article a mini-review of the state of model-based TGC in critical care.
机译:胰岛素强化治疗(IIT)和严格血糖控制(TGC),尤其是在重症监护病房(ICU)中,是近年来引起越来越多争议的主题。基于模型的TGC在限制低血糖的同时,显示了提供安全,严格的血糖管理的潜力。提出了一个综合的,更具生理相关性的强化控制胰岛素,营养,葡萄糖(ICING)模型,并使用了重症患者的数据进行了验证。审查了两个现有的葡萄糖-胰岛素模型,并为ICING模型奠定了基础。关于相关的生理学,药效学和TGC实用性,讨论了模型局限性。对于临床设置,会仔细考虑模型可识别性问题。本文还包含对相关生理学和临床文献的重要参考,以及对该领域中建模工作的一些参考。关键常数种群参数的识别分两个阶段进行,从而解决了模型可识别性问题。模型的预测性能是优化总体参数值的主要因素。由于临床控制场景中床边可用的临床数据有限,因此必须使用人口值。胰岛素敏感度S I是唯一的动态时变参数,每小时对每个人进行识别。所有群体参数在生理上和相对于临床文献中报道的值都是合理的。参数敏感性研究证实了将时变参数仅限制为S I的有效性以及总体参数的选择。与来自173位在ICU中接受胰岛素治疗并停留≥72h的患者(总共N = 42,941h)的数据相比,ICING模型的中位拟合误差<1%。最重要的是,每位患者1小时提前预测误差的中位数非常低,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在典型血糖仪测量误差的7-12%的下限之内。这些结果证实,ICING模型适用于开发基于模型的胰岛素疗法,并能够提供具有非常严格的预测误差范围的实时基于模型的TGC。最后,围绕基于模型的TGC和现有的葡萄糖-胰岛素模型相关问题的详细检查和讨论使本文对重症监护中基于模型的TGC的状态进行了简要回顾。

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