葡萄糖控制与生理信号相结合的物联网技术:对比研究

Khadidja Fellah Arbi, ofiane Soulimane, F. Saffih
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引用次数: 2

摘要

1型糖尿病(T1DM)患者对胰岛素的敏感性不同,对饮食和运动的反应也不同,人工胰腺(AP)是一个闭环系统,用于控制血糖浓度。随着连续血糖监测(CGM)技术、智能控制和通信系统的进步,AP改善了更好的餐后血糖。尽管取得了这些进步,但许多研究人员已经开发出一种系统,能够在所有不同情况下(压力、运动期间和运动后以及过夜等)保持血糖浓度(BGC)在目标范围内。这些不同的情况给闭环AP系统的开发带来了重大挑战,因为它们对BGC的影响尚不清楚。物联网新兴技术允许在AP系统中创造新的趋势,将生理信号引入闭环系统。这始于少数研究,这些研究发现,在不同情况下,心电图(ECG)、脑电图(EEG)等生理信号与BGC变化之间存在某种相关性。许多研究者致力于开发一种智能控制系统,利用从生理信号中提取的生物特征变量来代替CGM,预测和避免自动低血糖和高血糖发作。在本文中,我们将介绍在AP系统中使用这些生理信号的不同研究的概述和比较研究,得出结论,心电图信号是最合适的生理信号,可以与血糖控制策略结合使用,更好地预测和预防低血糖和高血糖发作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT technologies combining glucose control with physiological signal: comparative study
Patients with type 1 diabetes mellitus (T1DM) have varying sensitivities to insulin and also varying responses to meals and exercises, an Artificial pancreas (AP) which is a closed loop system are used to control blood glucose concentration. With advances in continuous glucose monitoring (CGM) technologies, intelligent control and communication systems, AP have improved better postprandial glucose. Despite these advances, many researchers have developed a system able to keep Blood glucose concentration (BGC) in the target range during all the different situations (stress, during and after exercise and overnight$\dots$ etc). These different situations present a major challenge in the development of closed loop AP system, because of their effect on the BGC are not well understood. IoT emergent technologies allow to create new trend in the AP system introducing physiological signals to the closed loop system. This started with the few studies that found some correlation between physiological signals such as electrocardiography (ECG), electroencephalography (EEG) and changes in BGC during different situations. many researchers aim to develop an Intelligent control system that predict and avoid automatically hypoglycemia and hyperglycemia episodes using biometric variables extracted from the physiological signal instead of CGM. In this paper we will present an overview and a comparison study between the different studies that use these physiological signals in AP systems, concluding that the ECG signal are the most appropriate physiological signal that can be used in combination with glucose control strategy for better prediction and prevention of hypoglycemia and hyperglycemia episodes.
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