Non-invasive Blood Glucose Monitoring and Data Analytics

Approaches for measuring blood glucose levels using noninvasive techniques also known as non-invasive glucose monitoring and minimally-invasive glucose monitoring techniques can help support easier and more frequent measurement of blood glucose levels and also lend themselves to support continuous glucose monitoring. This paper focuses on reviewing the emerging technologies for such monitoring, and their interrelationship with data analytics. The paper describes how these two areas of development together are contributing to the field of diabetes informatics, a more data-rich approach to understanding and managing diabetes.

[1]  Robert Steele,et al.  An Overview of the State of the Art of Automated Capture of Dietary Intake Information , 2015, Critical reviews in food science and nutrition.

[2]  C. Cobelli,et al.  How Much Is Short-Term Glucose Prediction in Type 1 Diabetes Improved by Adding Insulin Delivery and Meal Content Information to CGM Data? A Proof-of-Concept Study , 2016, Journal of diabetes science and technology.

[3]  C. Cobelli,et al.  Artificial neural network algorithm for online glucose prediction from continuous glucose monitoring. , 2010, Diabetes technology & therapeutics.

[4]  Robert Steele,et al.  Personal health record architectures: Technology infrastructure implications and dependencies , 2012, J. Assoc. Inf. Sci. Technol..

[5]  Lutz Heinemann,et al.  Non-invasive glucose monitoring in patients with Type 1 diabetes: a Multisensor system combining sensors for dielectric and optical characterisation of skin. , 2009, Biosensors & bioelectronics.

[6]  S. Simpson,et al.  New and emerging non-invasive glucose monitoring technologies , 2016 .

[7]  Robert Steele,et al.  Telehealth and ubiquitous computing for bandwidth-constrained rural and remote areas , 2012, Personal and Ubiquitous Computing.

[8]  T. Pałko,et al.  Overview of some non-invasive spectroscopic methods of glucose level monitoring , 2016 .

[9]  S. Anand,et al.  Non-invasive detection of fasting blood glucose level via electrochemical measurement of saliva , 2016, SpringerPlus.

[10]  Robert Steele,et al.  Elderly persons' perception and acceptance of using wireless sensor networks to assist healthcare , 2009, Int. J. Medical Informatics.

[11]  Maciej S. Wróbel Non-invasive blood glucose monitoring with Raman spectroscopy: prospects for device miniaturization , 2016 .

[12]  Michael Schumacher,et al.  Sensor Monitoring of Physical Activity to Improve Glucose Management in Diabetic Patients: A Review , 2016, Sensors.

[13]  Ryszard J. Pryputniewicz,et al.  Emerging Challenges for Experimental Mechanics in Energy and Environmental Applications, Proceedings of the 5th International Symposium on Experimental Mechanics and 9th Symposium on Optics in Industry (ISEM-SOI), 2015 , 2017 .

[14]  Scott M. Pappada,et al.  Neural network-based real-time prediction of glucose in patients with insulin-dependent diabetes. , 2011, Diabetes technology & therapeutics.

[15]  Sam Emaminejad,et al.  Fully integrated wearable sensor arrays for multiplexed in situ perspiration analysis , 2016, Nature.

[16]  H. H. Cerecedo-Núñez,et al.  Comparative Analysis of Optoelectronic Properties of Glucose for Non-invasive Monitoring , 2017 .

[17]  Hye Rim Cho,et al.  A graphene-based electrochemical device with thermoresponsive microneedles for diabetes monitoring and therapy. , 2016, Nature nanotechnology.

[18]  Anpeng Huang,et al.  Glucose-tracking: A postprandial glucose prediction system for diabetic self-management , 2015, 2015 2nd International Symposium on Future Information and Communication Technologies for Ubiquitous HealthCare (Ubi-HealthTech).

[19]  E. Cho,et al.  A self-powered sensor patch for glucose monitoring in sweat , 2017, 2017 IEEE 30th International Conference on Micro Electro Mechanical Systems (MEMS).

[20]  Robert Steele,et al.  Health participatory sensing networks , 2014, Mob. Inf. Syst..

[21]  Robert Steele,et al.  A Sensor-based Learning Public Health System , 2017, HICSS.

[22]  Giovanni Sparacino,et al.  Non-Invasive Continuous Glucose Monitoring with Multi-Sensor Systems: A Monte Carlo-Based Methodology for Assessing Calibration Robustness , 2013, Sensors.

[23]  Zhigang Zhu,et al.  Current and Emerging Technology for Continuous Glucose Monitoring , 2017, Sensors.

[24]  Andrea Facchinetti,et al.  Continuous Glucose Monitoring Sensors: Past, Present and Future Algorithmic Challenges , 2016, Sensors.