Gait Clustering Analysis in Patients after Stroke using Gait Kinematics Data

Hyungtai Kim, Y. Kim, Seung-jong Kim, Munsik Choi
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Abstract

In rehabilitation of the patients after stroke, gait types are important to know the characteristics of the patient. To know gait types, a systematic methodology for direct measurement and interpretation of gait motion are required. In this study, the patient's kinetic data were collected eight times over six months after onset using motion capture equipment. Features for gait type classification were extracted from time series gait cycle data and used for machine learning analysis. We utilized the simultaneous clustering and classification method to determine gait types that ensure classification performance. The optimal number of gait groups was four, which shows 0.1504 and 0.9142 in silhouette score and F1 score. We present a novel work to find the gait groups of patients after stroke, and showed the potential for use in the rehabilitation field.
基于步态运动学数据的脑卒中患者步态聚类分析
在脑卒中患者的康复治疗中,步态类型是了解患者特征的重要因素。为了了解步态类型,需要一种系统的方法来直接测量和解释步态运动。在这项研究中,使用动作捕捉设备在发病后6个月内收集了患者的运动数据8次。从时间序列步态周期数据中提取步态类型分类特征,用于机器学习分析。我们利用同步聚类和分类方法来确定步态类型,以确保分类性能。最优步态组数为4组,廓形评分为0.1504,F1评分为0.9142。我们提出了一项新颖的工作,以发现中风后患者的步态组,并显示了在康复领域的应用潜力。
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