Ambulatory Cardiovascular Monitoring Via a Machine-Learning-Assisted Textile Triboelectric Sensor

Adv Mater. 2021 Oct;33(41):e2104178. doi: 10.1002/adma.202104178. Epub 2021 Aug 31.

Abstract

Wearable bioelectronics for continuous and reliable pulse wave monitoring against body motion and perspiration remains a great challenge and highly desired. Here, a low-cost, lightweight, and mechanically durable textile triboelectric sensor that can convert subtle skin deformation caused by arterial pulsatility into electricity for high-fidelity and continuous pulse waveform monitoring in an ambulatory and sweaty setting is developed. The sensor holds a signal-to-noise ratio of 23.3 dB, a response time of 40 ms, and a sensitivity of 0.21 µA kPa-1 . With the assistance of machine learning algorithms, the textile triboelectric sensor can continuously and precisely measure systolic and diastolic pressure, and the accuracy is validated via a commercial blood pressure cuff at the hospital. Additionally, a customized cellphone application (APP) based on built-in algorithm is developed for one-click health data sharing and data-driven cardiovascular diagnosis. The textile triboelectric sensor enabled wireless biomonitoring system is expected to offer a practical paradigm for continuous and personalized cardiovascular system characterization in the era of the Internet of Things.

Keywords: carbon nanotubes; machine learning; motion artifacts; personalized healthcare; pulse wave monitoring; smart textiles.

MeSH terms

  • Blood Pressure
  • Cardiovascular Diseases / diagnosis
  • Heart / physiology*
  • Humans
  • Machine Learning*
  • Mobile Applications
  • Monitoring, Ambulatory / instrumentation
  • Monitoring, Ambulatory / methods*
  • Nanotubes, Carbon / chemistry
  • Signal-To-Noise Ratio
  • Textiles
  • Wearable Electronic Devices

Substances

  • Nanotubes, Carbon