Department of Control Engineering and Information Technology, Faculty of Electrical Engineering and Informatics, Budapest University of Technology and Economics, Budapest, Hungary.
Department of Control Engineering and Information Technology, Faculty of Electrical Engineering and Informatics, Budapest University of Technology and Economics, Budapest, Hungary.
Comput Methods Programs Biomed. 2023 Oct;240:107633. doi: 10.1016/j.cmpb.2023.107633. Epub 2023 Jun 9.
Model-based glycemic control (GC) protocols are used to treat stress-induced hyperglycaemia in intensive care units (ICUs). The STAR (Stochastic-TARgeted) glycemic control protocol - used in clinical practice in several ICUs in New Zealand, Hungary, Belgium, and Malaysia - is a model-based GC protocol using a patient-specific, model-based insulin sensitivity to describe the patient's actual state. Two neural network based methods are defined in this study to predict the patient's insulin sensitivity parameter: a classification deep neural network and a Mixture Density Network based method. Treatment data from three different patient cohorts are used to train the network models. Accuracy of neural network predictions are compared with the current model- based predictions used to guide care. The prediction accuracy was found to be the same or better than the reference. The authors suggest that these methods may be a promising alternative in model-based clinical treatment for patient state prediction. Still, more research is needed to validate these findings, including in-silico simulations and clinical validation trials.
基于模型的血糖控制 (GC) 方案用于治疗重症监护病房 (ICU) 中的应激性高血糖。STAR(随机 TARgeted)血糖控制方案——在新西兰、匈牙利、比利时和马来西亚的几个 ICU 中用于临床实践——是一种基于模型的 GC 方案,使用基于患者的、基于模型的胰岛素敏感性来描述患者的实际状态。本研究中定义了两种基于神经网络的方法来预测患者的胰岛素敏感性参数:分类深度神经网络和基于混合密度网络的方法。使用来自三个不同患者队列的治疗数据来训练网络模型。将神经网络预测的准确性与用于指导护理的当前基于模型的预测进行了比较。研究结果表明,这些方法可能是基于模型的临床治疗中用于患者状态预测的一种很有前途的替代方法。但是,仍需要更多的研究来验证这些发现,包括计算机模拟和临床验证试验。