Enhanced Breathing Pattern Detection during Running Using Wearable Sensors

Sensors (Basel). 2021 Aug 20;21(16):5606. doi: 10.3390/s21165606.

Abstract

Breathing pattern (BP) is related to key psychophysiological and performance variables during exercise. Modern wearable sensors and data analysis techniques facilitate BP analysis during running but are lacking crucial validation steps in their deployment. Thus, we sought to evaluate a wearable garment with respiratory inductance plethysmography (RIP) sensors in combination with a custom-built algorithm versus a reference spirometry system to determine its concurrent validity in detecting flow reversals (FR) and BP. Twelve runners completed an incremental running protocol to exhaustion with synchronized spirometry and RIP sensors. An algorithm was developed to filter, segment, and enrich the RIP data for FR and BP estimation. The algorithm successfully identified over 99% of FR with an average time lag of 0.018 s (-0.067,0.104) after the reference system. Breathing rate (BR) estimation had low mean absolute percent error (MAPE = 2.74 [0.00,5.99]), but other BP components had variable accuracy. The proposed system is valid and practically useful for applications of BP assessment in the field, especially when measuring abrupt changes in BR. More studies are needed to improve BP timing estimation and utilize abdominal RIP during running.

Keywords: breathing pattern; breathing rate; breathing sensors; respiration sensors; respiratory frequency; respiratory inductance plethysmography; running sensors; ventilation.

MeSH terms

  • Plethysmography
  • Respiration
  • Respiratory Rate
  • Running*
  • Spirometry
  • Wearable Electronic Devices*