Micromachines (Nov 2022)

Airline Point-of-Care System on Seat Belt for Hybrid Physiological Signal Monitoring

  • Xiaoqiang Ji,
  • Zhi Rao,
  • Wei Zhang,
  • Chang Liu,
  • Zimo Wang,
  • Shuo Zhang,
  • Butian Zhang,
  • Menglei Hu,
  • Peyman Servati,
  • Xiao Xiao

DOI
https://doi.org/10.3390/mi13111880
Journal volume & issue
Vol. 13, no. 11
p. 1880

Abstract

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With a focus on disease prevention and health promotion, a reactive and disease-centric healthcare system is revolutionized to a point-of-care model by the application of wearable devices. The convenience and low cost made it possible for long-term monitoring of health problems in long-distance traveling such as flights. While most of the existing health monitoring systems on aircrafts are limited for pilots, point-of-care systems provide choices for passengers to enjoy healthcare at the same level. Here in this paper, an airline point-of-care system containing hybrid electrocardiogram (ECG), breathing, and motion signals detection is proposed. At the same time, we propose the diagnosis of sleep apnea-hypopnea syndrome (SAHS) on flights as an application of this system to satisfy the inevitable demands for sleeping on long-haul flights. The hardware design includes ECG electrodes, flexible piezoelectric belts, and a control box, which enables the system to detect the original data of ECG, breathing, and motion signals. By processing these data with interval extraction-based feature selection method, the signals would be characterized and then provided for the long short-term memory recurrent neural network (LSTM-RNN) to classify the SAHS. Compared with other machine learning methods, our model shows high accuracy up to 84–85% with the lowest overfit problem, which proves its potential application in other related fields.

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