Scientific Reports (Jul 2024)

Mitigating data quality challenges in ambulatory wrist-worn wearable monitoring through analytical and practical approaches

  • Jonas Van Der Donckt,
  • Nicolas Vandenbussche,
  • Jeroen Van Der Donckt,
  • Stephanie Chen,
  • Marija Stojchevska,
  • Mathias De Brouwer,
  • Bram Steenwinckel,
  • Koen Paemeleire,
  • Femke Ongenae,
  • Sofie Van Hoecke

DOI
https://doi.org/10.1038/s41598-024-67767-3
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 21

Abstract

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Abstract Chronic disease management and follow-up are vital for realizing sustained patient well-being and optimal health outcomes. Recent advancements in wearable technologies, particularly wrist-worn devices, offer promising solutions for longitudinal patient monitoring, replacing subjective, intermittent self-reporting with objective, continuous monitoring. However, collecting and analyzing data from wearables presents several challenges, such as data entry errors, non-wear periods, missing data, and wearable artifacts. In this work, we explore these data analysis challenges using two real-world datasets (mBrain21 and ETRI lifelog2020). We introduce practical countermeasures, including participant compliance visualizations, interaction-triggered questionnaires to assess personal bias, and an optimized pipeline for detecting non-wear periods. Additionally, we propose a visualization-oriented approach to validate processing pipelines using scalable tools such as tsflex and Plotly-Resampler. Lastly, we present a bootstrapping methodology to evaluate the variability of wearable-derived features in the presence of partially missing data segments. Prioritizing transparency and reproducibility, we provide open access to our detailed code examples, facilitating adaptation in future wearable research. In conclusion, our contributions provide actionable approaches for improving wearable data collection and analysis.