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Changes in Identified, Model-based Insulin Sensitivity can be used to Improve Risk and Variability Forecasting in Glycaemic Control

机译:基于模型的已识别胰岛素敏感性的变化可用于改善血糖控制中的风险和变异性预测

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Hyperglycaemia, hypoglycaemia and glycaemic variability in critically ill patients are associated with increased mortality and adverse outcomes. Some studies have shown insulin therapy to control glycaemia has improved outcomes, but have proven difficult to repeat or achieve safely. STAR (Stochastic Targeted) is a model-based glycaemic control protocol using a stochastic model to forecast future distributions of insulin sensitivity (SI) based on its current value, to predict the range of future blood glucose outcomes for a given intervention. This study presents an improved 3D stochastic model, forecasting future distributions of SI based on its current value and prior variation. The percentage difference in the 5th, 50th, and 95thpercentiles between the current 2D and new 3D models are compared. Results show the original 2D stochastic model is over-conservative for around 77% of the data, predominantly where prior variability was low. For higher prior variation (more than ±25% change in SI), the 3D stochastic model prediction range of future SI is wider. The new 3D model was found to have overall narrower 5th– 95thprediction ranges in SI, but to retain a similar per-patient (60 – 100%) and overall (92%) percentage of SI outcomes correctly predicted within these ranges. These results suggest the new 3D model is more patient-specific and will enable more optimal dosing, to increase both safety and performance. This improvement in forecasting may result in tighter and safer glycaemic control, improving performance within the STAR framework.
机译:重症患者的高血糖,低血糖和血糖变异性与死亡率增加和不良后果相关。一些研究表明,控制血糖的胰岛素疗法可改善预后,但已证明很难重复或安全地实现。 STAR(随机目标)是一种基于模型的血糖控制方案,使用随机模型根据其当前值预测胰岛素敏感性(SI)的未来分布,从而预测给定干预措施的未来血糖结果范围。这项研究提出了一种改进的3D随机模型,可以根据SI的当前值和先前的变化预测SI的未来分布。比较了当前2D模型和新3D模型在第5,第50和第95个百分位数中的百分比差异。结果表明,原始的2D随机模型对于大约77%的数据过于保守,主要是在先验变异性较低的情况下。对于更高的先验变化(SI的变化超过±25%),未来SI的3D随机模型预测范围会更宽。发现新的3D模型在SI中的预测范围总体较窄,仅为第5至95位,但在这些范围内正确预测的SI患者的每名患者(60-100%)和总体(92%)百分比均正确。这些结果表明,新的3D模型更具针对性,并且将实现更佳的剂量,从而提高安全性和性能。预测方面的这种改进可能会导致更严格,更安全的血糖控制,从而改善STAR框架内的效果。

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