Machine Learning for Movement Pattern Changes during Kinect-Based Mixed Reality Exercise Programs in Women with Possible Sarcopenia: Pilot Study.

IF 2.8 Q3 GERIATRICS & GERONTOLOGY
Yunho Sung, Ji-Won Seo, Byunggul Lim, Shu Jiang, Xinxing Li, Parivash Jamrasi, So Young Ahn, Seohyun Ahn, Yuseon Kang, Hyejung Shin, Donghyun Kim, Dong Hyun Yoon, Wook Song
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Abstract

Background: Sarcopenia is a muscle wasting condition that affects elderly individuals. It can lead to changes in movement patterns, which can increase the risk of falls and other injuries.

Methods: Elderly women participants aged ≥65 years who could walk independently were recruited and classified into two groups based on knee extension strength (KES). Participants with low KES scores were assigned to the possible sarcopenia group (PSG, n=7) and an 8-week exercise intervention was implemented. Healthy seniors with high KES scores were classified as the reference group (RG, n=4), and a 3-week exercise intervention was conducted. Kinematic movement data were recorded during the intervention period. All participants' exercise repetitions were used in the data analysis (number of data points =1,128).

Results: The PSG showed significantly larger movement patterns in knee rotation during wide squats compared to the RG, attributed to weakened lower limb strength. The voting classifier, trained on the movement patterns from wide squats, determined that significant differences in overall movement patterns between the two groups persisted until the end of the exercise intervention. However, after the exercise intervention, significant improvements in lower limb strength in the PSG resulted in reduced knee rotation ROM and Max, thereby stabilizing movements and eliminating significant differences with the RG.

Conclusions: This study suggests that exercise interventions can modify the movement patterns in elderly individuals with possible sarcopenia. These findings provide fundamental data for developing an exercise management system that remotely tracks and monitors the movement patterns of older adults during exercise activities.

基于 Kinect 的混合现实运动项目中运动模式变化的机器学习,适用于可能患有 "肌肉疏松症 "的女性:试点研究。
背景:肌肉疏松症是一种影响老年人的肌肉萎缩症。它可导致运动模式的改变,从而增加跌倒和其他伤害的风险:方法:招募年龄≥65 岁、能独立行走的老年女性参与者,并根据膝关节伸展力量(KES)将其分为两组。KES得分低的参与者被分配到可能的肌肉疏松症组(PSG,n=7),并实施为期8周的运动干预。KES得分高的健康老年人被列为参照组(RG,人数=4),并进行为期 3 周的运动干预。在干预期间记录运动数据。所有参与者的运动重复次数均用于数据分析(数据点数=1,128):结果:与 RG 相比,PSG 在宽蹲时膝关节旋转的运动模式明显更大,这归因于下肢力量减弱。根据宽蹲运动模式训练的投票分类器确定,两组之间整体运动模式的显著差异一直持续到运动干预结束。然而,在运动干预后,PSG 中下肢力量的显著改善导致膝关节旋转 ROM 和最大值的减少,从而稳定了运动,消除了与 RG 的显著差异:本研究表明,运动干预可改变可能患有肌肉疏松症的老年人的运动模式。这些发现为开发运动管理系统提供了基础数据,该系统可远程跟踪和监测老年人在运动活动中的运动模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of Geriatric Medicine and Research
Annals of Geriatric Medicine and Research GERIATRICS & GERONTOLOGY-
CiteScore
4.90
自引率
11.10%
发文量
35
审稿时长
4 weeks
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