Department of Chemical Engineering, University of California, Santa Barbara, Santa Barbara, CA 93106 USA.
IEEE Trans Biomed Eng. 2012 Jul;59(7):1839-49. doi: 10.1109/TBME.2011.2176939. Epub 2011 Nov 22.
One of the difficulties in the development of a reliable artificial pancreas for people with type 1 diabetes mellitus (T1DM) is the lack of accurate models of an individual's response to insulin. Most control algorithms proposed to control the glucose level in subjects with T1DM are model-based. Avoiding postprandial hypoglycemia ( 60 mg/dl) while minimizing prandial hyperglycemia ( > 180 mg/dl) has shown to be difficult in a closed-loop setting due to the patient-model mismatch. In this paper, control-relevant models are developed for T1DM, as opposed to models that minimize a prediction error. The parameters of these models are chosen conservatively to minimize the likelihood of hypoglycemia events. To limit the conservatism due to large intersubject variability, the models are personalized using a priori patient characteristics. The models are implemented in a zone model predictive control algorithm. The robustness of these controllers is evaluated in silico, where hypoglycemia is completely avoided even after large meal disturbances. The proposed control approach is simple and the controller can be set up by a physician without the need for control expertise.
开发用于 1 型糖尿病患者的可靠人工胰腺的困难之一是缺乏个体对胰岛素反应的准确模型。大多数提议用于控制 1 型糖尿病患者血糖水平的控制算法都是基于模型的。由于患者-模型不匹配,在闭环设置中,避免餐后低血糖(<60mg/dl),同时尽量减少餐前高血糖(>180mg/dl),这一点非常困难。在本文中,我们为 1 型糖尿病患者开发了与最小化预测误差的模型相反的控制相关模型。这些模型的参数选择保守,以最大限度地降低低血糖事件的可能性。为了限制由于个体间变异性大而导致的保守性,使用先验患者特征对模型进行个性化处理。这些模型在仿真中得到了实现,即使在大餐干扰后,也完全避免了低血糖。所提出的控制方法简单,并且可以由医生设置控制器,而无需控制专业知识。