» Articles » PMID: 25910542

The Effect of a Global, Subject, and Device-Specific Model on a Noninvasive Glucose Monitoring Multisensor System

Overview
Specialty Endocrinology
Date 2015 Apr 26
PMID 25910542
Citations 10
Authors
Affiliations
Soon will be listed here.
Abstract

Background: We study here the influence of different patients and the influence of different devices with the same patients on the signals and modeling of data from measurements from a noninvasive Multisensor glucose monitoring system in patients with type 1 diabetes. The Multisensor includes several sensors for biophysical monitoring of skin and underlying tissue integrated on a single substrate.

Method: Two Multisensors were worn simultaneously, 1 on the upper left and 1 on the upper right arm by 4 patients during 16 study visits. Glucose was administered orally to induce 2 consecutive hyperglycemic excursions. For the analysis, global (valid for a population of patients), personal (tailored to a specific patient), and device-specific multiple linear regression models were derived.

Results: We find that adjustments of the model to the patients improves the performance of the glucose estimation with an MARD of 17.8% for personalized model versus a MARD of 21.1% for the global model. At the same time the effect of the measurement side is negligible. The device can equally well measure on the left or right arm. We also see that devices are equal in the linear modeling. Thus hardware calibration of the sensors is seen to be sufficient to eliminate interdevice differences in the measured signals.

Conclusions: We demonstrate that the hardware of the 2 devices worn on the left and right arms are consistent yielding similar measured signals and thus glucose estimation results with a global model. The 2 devices also return similar values of glucose errors. These errors are mainly due to nonstationarities in the measured signals that are not solved by the linear model, thus suggesting for more sophisticated modeling approaches.

Citing Articles

The effect of ionic redistributions on the microwave dielectric response of cytosol water upon glucose uptake.

Galindo C, Livshits L, Tarabeih L, Barshtein G, Einav S, Feldman Y Eur Biophys J. 2024; 53(4):183-192.

PMID: 38647542 DOI: 10.1007/s00249-024-01708-w.


The inhibition of glucose uptake to erythrocytes: microwave dielectric response.

Galindo C, Latypova L, Barshtein G, Livshits L, Arbell D, Einav S Eur Biophys J. 2022; 51(4-5):353-363.

PMID: 35532810 DOI: 10.1007/s00249-022-01602-3.


Technologies for Diabetes Self-Monitoring: A Scoping Review and Assessment Using the REASSURED Criteria.

Zafra-Tanaka J, Beran D, Vetter B, Sampath R, Bernabe-Ortiz A J Diabetes Sci Technol. 2021; 16(4):962-970.

PMID: 33686875 PMC: 9264435. DOI: 10.1177/1932296821997909.


Noninvasive Continuous Monitoring of Vital Signs With Wearables: Fit for Medical Use?.

Jacobsen M, Dembek T, Kobbe G, Gaidzik P, Heinemann L J Diabetes Sci Technol. 2020; 15(1):34-43.

PMID: 32063034 PMC: 7783016. DOI: 10.1177/1932296820904947.


Continuous noninvasive glucose monitoring; water as a relevant marker of glucose uptake in vivo.

Caduff A, Ben Ishai P, Feldman Y Biophys Rev. 2019; 11(6):1017-1035.

PMID: 31741172 PMC: 6874943. DOI: 10.1007/s12551-019-00601-7.


References
1.
Zakharov P, Dewarrat F, Caduff A, Talary M . The effect of blood content on the optical and dielectric skin properties. Physiol Meas. 2010; 32(1):131-49. DOI: 10.1088/0967-3334/32/1/009. View

2.
Guerra S, Sparacino G, Facchinetti A, Schiavon M, Dalla Man C, Cobelli C . A dynamic risk measure from continuous glucose monitoring data. Diabetes Technol Ther. 2011; 13(8):843-52. DOI: 10.1089/dia.2011.0006. View

3.
Mehling A, Fluhr J . Chronobiology: biological clocks and rhythms of the skin. Skin Pharmacol Physiol. 2006; 19(4):182-9. DOI: 10.1159/000093113. View

4.
Lunn D, Wei C, Hovorka R . Fitting dynamic models with forcing functions: application to continuous glucose monitoring in insulin therapy. Stat Med. 2011; 30(18):2234-50. PMC: 3201840. DOI: 10.1002/sim.4254. View

5.
Harman-Boehm I, Gal A, Raykhman A, Naidis E, Mayzel Y . Noninvasive glucose monitoring: increasing accuracy by combination of multi-technology and multi-sensors. J Diabetes Sci Technol. 2010; 4(3):583-95. PMC: 2901035. DOI: 10.1177/193229681000400312. View