Data-Driven Supervised Compression Artifacts Detection on Continuous Glucose Sensors

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul:2022:1145-1148. doi: 10.1109/EMBC48229.2022.9870884.

Abstract

Continuous Glucose Monitoring (CGM) sensors micro-invasively provide frequent glucose readings, improving the management of Type 1 diabetic patients' life and making available reach data-sets for retrospective analysis. Unlikely, CGM sensors are subject to failures, such as compression artifacts, that might impact on both real-time and respective CGM use. In this work is focused on retrospective detection of compression artifacts. An in-silico dataset is generated using the T1D UVa/Padova simulator and compression artifacts are subsequently added in known position, thus creating a dataset with perfectly accurate faulty/not-faulty labels. The problem of compression artifact detection is then faced with supervised data-driven techniques, in particular using Random Forest algorithm. The detection performance guaranteed by the method on in-silico data is satisfactory, opening the way for further analysis on real-data.

MeSH terms

  • Artifacts*
  • Blood Glucose
  • Blood Glucose Self-Monitoring*
  • Glucose
  • Humans
  • Retrospective Studies

Substances

  • Blood Glucose
  • Glucose