Literature DB >> 23972072

The use of reinforcement learning algorithms to meet the challenges of an artificial pancreas.

Melanie K Bothe1, Luke Dickens, Katrin Reichel, Arn Tellmann, Björn Ellger, Martin Westphal, Ahmed A Faisal.   

Abstract

Blood glucose control, for example, in diabetes mellitus or severe illness, requires strict adherence to a protocol of food, insulin administration and exercise personalized to each patient. An artificial pancreas for automated treatment could boost quality of glucose control and patients' independence. The components required for an artificial pancreas are: i) continuous glucose monitoring (CGM), ii) smart controllers and iii) insulin pumps delivering the optimal amount of insulin. In recent years, medical devices for CGM and insulin administration have undergone rapid progression and are now commercially available. Yet, clinically available devices still require regular patients' or caregivers' attention as they operate in open-loop control with frequent user intervention. Dosage-calculating algorithms are currently being studied in intensive care patients [1] , for short overnight control to supplement conventional insulin delivery [2] , and for short periods where patients rest and follow a prescribed food regime [3] . Fully automated algorithms that can respond to the varying activity levels seen in outpatients, with unpredictable and unreported food intake, and which provide the necessary personalized control for individuals is currently beyond the state-of-the-art. Here, we review and discuss reinforcement learning algorithms, controlling insulin in a closed-loop to provide individual insulin dosing regimens that are reactive to the immediate needs of the patient.

Entities:  

Mesh:

Substances:

Year:  2013        PMID: 23972072     DOI: 10.1586/17434440.2013.827515

Source DB:  PubMed          Journal:  Expert Rev Med Devices        ISSN: 1743-4440            Impact factor:   3.166


  17 in total

1.  Comparative Simulation Study of Glucose Control Methods Designed for Use in the Intensive Care Unit Setting via a Novel Controller Scoring Metric.

Authors:  Jeremy DeJournett; Leon DeJournett
Journal:  J Diabetes Sci Technol       Date:  2017-06-22

2.  GoCARB in the Context of an Artificial Pancreas.

Authors:  Aristotelis Agianniotis; Marios Anthimopoulos; Elena Daskalaki; Aurélie Drapela; Christoph Stettler; Peter Diem; Stavroula Mougiakakou
Journal:  J Diabetes Sci Technol       Date:  2015-04-21

Review 3.  Artificial Intelligence in Surgery: Promises and Perils.

Authors:  Daniel A Hashimoto; Guy Rosman; Daniela Rus; Ozanan R Meireles
Journal:  Ann Surg       Date:  2018-07       Impact factor: 12.969

Review 4.  Intelligent automated drug administration and therapy: future of healthcare.

Authors:  Richa Sharma; Dhirendra Singh; Prerna Gaur; Deepak Joshi
Journal:  Drug Deliv Transl Res       Date:  2021-01-14       Impact factor: 4.617

Review 5.  Developing Insulin Delivery Devices with Glucose Responsiveness.

Authors:  Zejun Wang; Jinqiang Wang; Anna R Kahkoska; John B Buse; Zhen Gu
Journal:  Trends Pharmacol Sci       Date:  2020-11-26       Impact factor: 14.819

6.  Continuous Glucose Monitoring in Patients Undergoing Extracorporeal Ventricular Assist Therapy.

Authors:  Antje Gottschalk; Henryk A Welp; Laura Leser; Christian Lanckohr; Carola Wempe; Björn Ellger
Journal:  PLoS One       Date:  2016-03-10       Impact factor: 3.240

7.  Supervised-actor-critic reinforcement learning for intelligent mechanical ventilation and sedative dosing in intensive care units.

Authors:  Chao Yu; Guoqi Ren; Yinzhao Dong
Journal:  BMC Med Inform Decis Mak       Date:  2020-07-09       Impact factor: 2.796

Review 8.  Artificial Intelligence for Diabetes Management and Decision Support: Literature Review.

Authors:  Ivan Contreras; Josep Vehi
Journal:  J Med Internet Res       Date:  2018-05-30       Impact factor: 5.428

Review 9.  Gastroenterology Meets Machine Learning: Status Quo and Quo Vadis.

Authors:  Amina Adadi; Safae Adadi; Mohammed Berrada
Journal:  Adv Bioinformatics       Date:  2019-04-02

10.  Model-Free Machine Learning in Biomedicine: Feasibility Study in Type 1 Diabetes.

Authors:  Elena Daskalaki; Peter Diem; Stavroula G Mougiakakou
Journal:  PLoS One       Date:  2016-07-21       Impact factor: 3.240

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.