A machine learning-based on-demand sweat glucose reporting platform.

Journal: Scientific reports
PMID:

Abstract

Diabetes is a chronic endocrine disease that occurs due to an imbalance in glucose levels and altering carbohydrate metabolism. It is a leading cause of morbidity, resulting in a reduced quality of life even in developed societies, primarily affected by a sedentary lifestyle and often leading to mortality. Keeping track of blood glucose levels noninvasively has been made possible due to diverse breakthroughs in wearable sensor technology coupled with holistic digital healthcare. Efficient glucose management has been revolutionized by the development of continuous glucose monitoring sensors and wearable, non/minimally invasive devices that measure glucose concentration by exploiting different physical principles, e.g., glucose oxidase, fluorescence, or skin dielectric properties, and provide real-time measurements every 1-5 min. This paper presents a highly novel and completely non-invasive sweat sensor platform technology that can measure and report glucose concentrations from passively expressed human eccrine sweat using electrochemical impedance spectroscopy and affinity capture probe functionalized sensor surfaces. The sensor samples 1-5 µL of sweat from the wearer every 1-5 min and reports sweat glucose from a machine learning algorithm that samples the analytical reference values from the electrochemical sweat sensor. These values are then converted to continuous time-varying signals using the interpolation methodology. Supervised machine learning, the decision tree regression algorithm, shows the goodness of fit R of 0.94 was achieved with an RMSE value of 0.1 mg/dL. The output of the model was tested on three human subject datasets. The results were able to capture the glucose progression trend correctly. Sweet sensor platform technology demonstrates a dynamic response over the physiological sweat glucose range of 1-4 mg/dL measured from 3 human subjects. The technology described in the manuscript shows promise for real-time biomarkers such as glucose reporting from passively expressed human eccrine sweat.

Authors

  • Devangsingh Sankhala
    Department of Electrical Engineering, The University of Texas at Dallas, 800 W Campbell Rd, Richardson, TX, 75080, USA.
  • Abha Umesh Sardesai
    Department of Computer Engineering, University of Texas at Dallas, 800 W. Campbell Rd., Richardson, TX, USA.
  • Madhavi Pali
    Department of Bioengineering, The University of Texas at Dallas, 800 W Campbell Rd, Richardson, TX, 75080, USA.
  • Kai-Chun Lin
    Department of Bioengineering, The University of Texas at Dallas, 800 W Campbell Rd, Richardson, TX, 75080, USA.
  • Badrinath Jagannath
    Department of Bioengineering, The University of Texas at Dallas, Richardson, TX, 75080, USA.
  • Sriram Muthukumar
    EnLiSense LLC, 1813 Audubon Pondway, Allen, TX, 75013, USA.
  • Shalini Prasad
    Department of Bioengineering, The University of Texas at Dallas, Richardson, TX, 75080, USA.