School of Mechanical Engineering Sungkyunkwan University, Suwon, Republic of Korea.
Department of Physical and Rehabilitation Medicine, Heart Vascular Stroke Institute, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Republic of Korea.
Gait Posture. 2022 May;94:210-216. doi: 10.1016/j.gaitpost.2022.03.007. Epub 2022 Mar 26.
Analyzing the complex gait patterns of post-stroke patients with lower limb paralysis is essential for rehabilitation.
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?
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.
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 F score of 1.0000, respectively.
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.
分析下肢瘫痪的脑卒中患者的复杂步态模式对于康复至关重要。
是否可以直接使用从患者运动捕捉数据中提取的完整关节级运动学特征来识别最佳步态类型,以确保高分类性能?
本研究从 36 名脑卒中患者的 111 个步态周期数据中提取运动学特征,并使用运动捕捉系统在六个月内采集了八次关节角度和角速度数据。应用同时聚类和分类来确定最佳步态类型,以实现可靠的分类性能。
在给定的数据集,确定了六个最佳步态组,聚类和分类性能分别表示为轮廓系数为 0.1447 和 F 分数为 1.0000。
脑卒中偏瘫步态没有明显的临床分类。然而,与以往的研究不同,本研究中利用运动学特征确定了更多具有高分类性能的最佳步态类型。