| Literature DB >> 27120602 |
Sandrine Ding1, Michael Schumacher2.
Abstract
Diabetic individuals need to tightly control their blood glucose concentration. Several methods have been developed for this purpose, such as the finger-prick or continuous glucose monitoring systems (CGMs). However, these methods present the disadvantage of being invasive. Moreover, CGMs have limited accuracy, notably to detect hypoglycemia. It is also known that physical exercise, and even daily activity, disrupt glucose dynamics and can generate problems with blood glucose regulation during and after exercise. In order to deal with these challenges, devices for monitoring patients' physical activity are currently under development. This review focuses on non-invasive sensors using physiological parameters related to physical exercise that were used to improve glucose monitoring in type 1 diabetes (T1DM) patients. These devices are promising for diabetes management. Indeed they permit to estimate glucose concentration either based solely on physical activity parameters or in conjunction with CGM or non-invasive CGM (NI-CGM) systems. In these last cases, the vital signals are used to modulate glucose estimations provided by the CGM and NI-CGM devices. Finally, this review indicates possible limitations of these new biosensors and outlines directions for future technologic developments.Entities:
Keywords: ECG; T1DM; accelerometer; algorithm; blood glucose monitoring; diabetes; exercise; physiological parameters; sensor; vital signs
Mesh:
Substances:
Year: 2016 PMID: 27120602 PMCID: PMC4851102 DOI: 10.3390/s16040589
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Sensors tested in relation with physical activity in T1DM patients and their specific use in research articles.
| General Purpose | Product | Company | Sensors | Specific Use in the Articles |
|---|---|---|---|---|
| Monitoring glucose dynamic during physical exercise | Physical Activity Monitoring System (PAMS) | Crossbow Technology, San Jose, CA, USA | -2 tri-axial accelerometers (CXL02LF3-R) | Evaluation of glucose dynamic during physical exercise [ |
| -4 inclinometers (CXTA02) | ||||
| Physiological signals to estimate glucose level | BodyMedia SenseWear® Pro Armband | SWA; BodyMedia, Inc, Pittsburgh, PA, USA | -A 2-axis accelerometer | Direct estimation of glucose level based on multisensor data [ |
| -Heat-flux sensor | ||||
| -Thermistors | ||||
| -Galvanic skin response sensor | ||||
| -ECG electrodes | ||||
| Vital signals and CGM | Zephyr BioHarnessTM 3 | Zephyr Technology, Annapolis, MD, USA | -Heart rate | Integration of heart rate and accelerometer monitoring in the glucose level estimation algorithm [ |
| Integration of accelerometer monitoring in the glucose level estimation algorithm [ | ||||
| Sport Watch: Polar: model RS800CX | Polar®, Lake Success, NY, USA | -Heart rate | Integration of heart rate monitoring in the glucose level estimation algorithm [ | |
| Digital Holter monitor, SpiderView Plus | ELA Medical, Montrouge, France | -ECG monitor | Integration of heart rate variability in the glucose level estimation algorithm [ | |
| BodyMedia SenseWear® Pro3 Armband | SWA; BodyMedia, Inc, Pittsburgh, PA, USA | -A 2-axis accelerometer | Integration of energy expenditure and galvanic skin response in a glucose level estimation algorithm [ | |
| -Heat-flux sensor | ||||
| -Thermistors | ||||
| -Galvanic skin response sensor | ||||
| -ECG electrodes | ||||
| Physical activity and NI-CGM | Multisensor Glucose Monitoring System (MGMS) | Solianis Monitoring AG , Zurich, Switzerland | -Accelerometer | Integration of temperature, sweat and acceleration and position in the glucose level estimation algorithm [ |
| -Temperature sensor | ||||
| -Humidity sensor | ||||
| -Optical sensor | ||||
| -Dielectric spectroscopy (for glucose monitoring) | ||||
| SensiumVitals | Sensium Healthcare Ltd, London, UK | -Heart rate | Reliability of the cardiac and respiratory rates estimates [ | |
| -Respiratory rate | ||||
| -Physical activity | ||||
| -Blood pH | ||||
| -Glucose level |