A wearable computing platform for developing cloud-based machine learning models for health monitoring applications.

Journal: Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference
Published Date:

Abstract

Wearable sensors have the potential to enable clinical-grade ambulatory health monitoring outside the clinic. Technological advances have enabled development of devices that can measure vital signs with great precision and significant progress has been made towards extracting clinically meaningful information from these devices in research studies. However, translating measurement accuracies achieved in the controlled settings such as the lab and clinic to unconstrained environments such as the home remains a challenge. In this paper, we present a novel wearable computing platform for unobtrusive collection of labeled datasets and a new paradigm for continuous development, deployment and evaluation of machine learning models to ensure robust model performance as we transition from the lab to home. Using this system, we train activity classification models across two studies and track changes in model performance as we go from constrained to unconstrained settings.

Authors

  • Shyamal Patel
  • Ryan S McGinnis
  • Ikaro Silva
  • Steve DiCristofaro
  • Nikhil Mahadevan
  • Elise Jortberg
  • Jaime Franco
  • Albert Martin
  • Joseph Lust
  • Milan Raj
  • Bryan McGrane
  • Paolo DePetrillo
  • A J Aranyosi
  • Melissa Ceruolo
  • Jesus Pindado
  • Roozbeh Ghaffari
    7Center for Bio-Integrated Electronics, Departments of Materials Science and Engineering, Biomedical Engineering, Chemistry, Mechanical Engineering, Electrical Engineering and Computer Science, Neurological Surgery, Simpson Querrey Institute for Nano/Biotechnology, McCormick School of Engineering, Feinberg School of Medicine, Northwestern University, Evanston, IL 60208 USA.