Pathological gait clustering in post-stroke patients using motion capture data

Gait Posture. 2022 May:94:210-216. doi: 10.1016/j.gaitpost.2022.03.007. Epub 2022 Mar 26.

Abstract

Background: Analyzing the complex gait patterns of post-stroke patients with lower limb paralysis is essential for rehabilitation.

Research question: Is it feasible to use the full joint-level kinematic features extracted from the motion capture data of patients directly to identify the optimal gait types that ensure high classification performance?

Methods: In this study, kinematic features were extracted from 111 gait cycle data on joint angles, and angular velocities of 36 post-stroke patients were collected eight times over six months using a motion capture system. Simultaneous clustering and classification were applied to determine the optimal gait types for reliable classification performance.

Results: In the given dataset, six optimal gait groups were identified, and the clustering and classification performances were denoted by a silhouette coefficient of 0.1447 and F1 score of 1.0000, respectively.

Significance: There is no distinct clinical classification of post-stroke hemiplegic gaits. However, in contrast to previous studies, more optimal gait types with a high classification performance fully utilizing the kinematic features were identified in this study.

Keywords: Gait kinematic features; Gait patterns; Hemiplegia; Post-stroke; Simultaneous clustering and classification.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Biomechanical Phenomena
  • Cluster Analysis
  • Gait
  • Gait Disorders, Neurologic* / etiology
  • Gait Disorders, Neurologic* / rehabilitation
  • Humans
  • Stroke Rehabilitation*
  • Stroke* / complications