Wearable-Based Stair Climb Power Estimation and Activity Classification

Sensors (Basel). 2022 Sep 1;22(17):6600. doi: 10.3390/s22176600.

Abstract

Stair climb power (SCP) is a clinical measure of leg muscular function assessed in-clinic via the Stair Climb Power Test (SCPT). This method is subject to human error and cannot provide continuous remote monitoring. Continuous monitoring using wearable sensors may provide a more comprehensive assessment of lower-limb muscular function. In this work, we propose an algorithm to classify stair climbing periods and estimate SCP from a lower-back worn accelerometer, which strongly agrees with the clinical standard (r = 0.92, p < 0.001; ICC = 0.90, [0.82, 0.94]). Data were collected in-lab from healthy adults (n = 65) performing the four-step SCPT and a walking assessment while instrumented (accelerometer + gyroscope), which allowed us to investigate tradeoffs between sensor modalities. Using two classifiers, we were able to identify periods of stair ascent with >89% accuracy [sensitivity = >0.89, specificity = >0.90] using two ensemble machine learning algorithms, trained on accelerometer signal features. Minimal changes in model performances were observed using the gyroscope alone (±0−6% accuracy) versus the accelerometer model. While we observed a slight increase in accuracy when combining gyroscope and accelerometer (about +3−6% accuracy), this is tolerable to preserve battery life in the at-home environment. This work is impactful as it shows potential for an accelerometer-based at-home assessment of SCP.

Keywords: accelerometer; gait; gyroscope; inertial measurement units; machine learning; remote monitoring; stair climb power.

MeSH terms

  • Adult
  • Algorithms
  • Exercise Test*
  • Humans
  • Lower Extremity
  • Muscle, Skeletal
  • Walking
  • Wearable Electronic Devices*

Grants and funding

This study was sponsored by Pfizer.