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1.
REVISTA IBEROAMERICANA DE AUTOMATICA E INFORMATICA INDUSTRIAL ; 19(3):318-329, 2022.
Artigo em Espanhol | Web of Science | ID: covidwho-1939276

RESUMO

In this work, we present the experience of our research group with the glucose regulation in people with Type 1 Diabetes (insulin-dependent), known as artificial pancreas. Our research group has carried out three clinical trials in Argentina, which were the first ones in Latin America. The first two studies took place in 2016 and 2017, both in the Hospital Italiano de Buenos Aires (HIBA) with five adult subjects and a duration of 36 hours. The second trial evaluated the performance of a novel closed-loop control algorithm (without meal insulin boluses), called ARG (Automatic Regulation of Glucose) and based on switched LQG control and a safety layer called SAFE (Safery Auxiliary Feedback Element), developed by researchers of our team. More recently and during COVID-19 pandemic, the first ambulatory trials took place, which were carried out in 2021 in a hotel with 5 subjects during 6 days. Additionally, for this third trial, the use of the artificial pancreas platform developed by the UNLP, called InsuMate, was incorporated. This platform connects a smartphone with the insulin pump and glucose monitor, houses the control algorithm, and allows the remote monitoring of multiple users. The results suggest that the ambulatory use of the ARG algorithm is feasible, safe and effective, compared to the usual treatment. In addition, the InsuMate platform was intuitive and easy to use for both healthcare staff and participants of the trial, achieving an over 95 % of time in closed-loop.

2.
Diabetes Technology and Therapeutics ; 24(SUPPL 1):A113-A114, 2022.
Artigo em Inglês | EMBASE | ID: covidwho-1896136

RESUMO

Background and Aims: After the artificial pancreas (AP) trials performed in 2016-7 with DiAs system, during the COVID-19 pandemic the first outpatient clinical trial was carried out in Argentina. The main objective was to evaluate the feasibility of running full closed-loop (FCL) algorithms in an own and free platform developed from open-source resources. Methods: The ARG project (Automatic Regulation of Glucose) aims at developing a robust AP algorithm prioritizing patient autonomy. The evolution of the project phases is summarized in the figure. The last step towards this objective was the implementation of a FCL algorithm in our InsuMate platform and its evaluation in an outpatient setting. Five adults with DMT1 completed one week of study, consisting in 3 days of open-loop (OL) followed by 3 days of FCL (i.e., without CHO counting and without delivering meal priming insulin boluses). Accu-Chek pumps and Dexcom G6 CGMs were used. Results: When analyzing the full duration of the trial, the time in range increased in FCL control vs. OL, while the time above range decreased, as did the mean BG. On the other hand, the time below range and the time in severe hypoglycemia remain similar across methods, both achieving the ADA recommended values. The FCL showed greater improvement by the end of the trial, particularly for daytime metrics. InsuMate properly operated in FCL for an average of 95.4% of time. Conclusions: It can be concluded from this experience that the outpatient automatic regulation of glucose levels using the ARG algorithm and Insumate platform is feasible, safe, and effective. (Figure Presented).

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