| Literature DB >> 31178632 |
Ankush Chakrabarty1, Justin M Gregory2, L Merkle Moore3, Philip E Williams4, Ben Farmer3, Alan D Cherrington3, Peter Lord5, Brian Shelton5, Don Cohen5, Howard C Zisser6, Francis J Doyle1, Eyal Dassau1.
Abstract
Current artificial pancreas systems (AP) operate via subcutaneous (SC) glucose sensing and SC insulin delivery. Due to slow diffusion and transport dynamics across the interstitial space, even the most sophisticated control algorithms in on-body AP systems cannot react fast enough to maintain tight glycemic control under the effect of exogenous glucose disturbances caused by ingesting meals or performing physical activity. Recent efforts made towards the development of an implantable AP have explored the utility of insulin infusion in the intraperitoneal (IP) space: a region within the abdominal cavity where the insulin-glucose kinetics are observed to be much more rapid than the SC space. In this paper, a series of canine experiments are used to determine the dynamic association between IP insulin boluses and plasma glucose levels. Data from these experiments are employed to construct a new mathematical model and to formulate a closed-loop control strategy to be deployed on an implantable AP. The potential of the proposed controller is demonstrated via in-silico experiments on an FDA-accepted benchmark cohort: the proposed design significantly outperforms a previous controller designed using artificial data (time in clinically acceptable glucose range: 97.3±1.5% vs. 90.1±5.6%). Furthermore, the robustness of the proposed closed-loop system to delays and noise in the measurement signal (for example, when glucose is sensed subcutaneously) and deleterious glycemic changes (such as sudden glucose decline due to physical activity) is investigated. The proposed model based on experimental canine data leads to the generation of more effective control algorithms and is a promising step towards fully automated and implantable artificial pancreas systems.Entities:
Keywords: Predictive model; alternative sites; canine model; intraperitoneal cavity; proportional-integral-derivative (PID) control; type 1 diabetes
Year: 2019 PMID: 31178632 PMCID: PMC6548466 DOI: 10.1016/j.jprocont.2019.01.002
Source DB: PubMed Journal: J Process Control ISSN: 0959-1524 Impact factor: 3.666