L Test Subtask Segmentation for Lower-Limb Amputees Using a Random Forest Algorithm

Sensors (Basel). 2024 Jul 31;24(15):4953. doi: 10.3390/s24154953.

Abstract

Functional mobility tests, such as the L test of functional mobility, are recommended to provide clinicians with information regarding the mobility progress of lower-limb amputees. Smartphone inertial sensors have been used to perform subtask segmentation on functional mobility tests, providing further clinically useful measures such as fall risk. However, L test subtask segmentation rule-based algorithms developed for able-bodied individuals have not produced sufficiently acceptable results when tested with lower-limb amputee data. In this paper, a random forest machine learning model was trained to segment subtasks of the L test for application to lower-limb amputees. The model was trained with 105 trials completed by able-bodied participants and 25 trials completed by lower-limb amputee participants and tested using a leave-one-out method with lower-limb amputees. This algorithm successfully classified subtasks within a one-foot strike for most lower-limb amputee participants. The algorithm produced acceptable results to enhance clinician understanding of a person's mobility status (>85% accuracy, >75% sensitivity, >95% specificity).

Keywords: L test; Timed Up and Go; machine learning; random forest; subtask segmentation; wearable sensor.

MeSH terms

  • Adult
  • Amputees* / rehabilitation
  • Female
  • Humans
  • Lower Extremity* / physiology
  • Lower Extremity* / physiopathology
  • Lower Extremity* / surgery
  • Machine Learning*
  • Male
  • Middle Aged
  • Random Forest