Time-Based and Path-Based Analysis of Upper-Limb Movements during Activities of Daily Living

Sensors (Basel). 2023 Jan 23;23(3):1289. doi: 10.3390/s23031289.

Abstract

Patients after stroke need to re-learn functional movements required for independent living throughout the rehabilitation process. In the study, we used a wearable sensory system for monitoring the movement of the upper limbs while performing activities of daily living. We implemented time-based and path-based segmentation of movement trajectories and muscle activity to quantify the activities of the unaffected and the affected upper limbs. While time-based segmentation splits the trajectory in quants of equal duration, path-based segmentation isolates completed movements. We analyzed the hand movement path and forearm muscle activity and introduced a bimanual movement parameter, which enables differentiation between unimanual and bimanual activities. The approach was validated in a study that included a healthy subject and seven patients after stroke with different levels of disabilities. Path-based segmentation provides a more detailed and comprehensive evaluation of upper limb activities, while time-based segmentation is more suitable for real-time assessment and providing feedback to patients. Bimanual movement parameter effectively differentiates between different levels of upper limb involvement and is a clear indicator of the activity of the affected limb relative to the unaffected limb.

Keywords: activities of daily living; electromyography; inertial measurement unit; movement estimation; stroke; upper-limb movement.

MeSH terms

  • Activities of Daily Living
  • Humans
  • Movement / physiology
  • Stroke Rehabilitation*
  • Stroke*
  • Upper Extremity