AI-Powered Assessment of Motor Development: Using Platforms Like KineticAI to Analyze Fundamental Movement Skills in Children.

IF 1.8 4区 心理学 Q4 PSYCHOLOGY, EXPERIMENTAL
Jing Xuan Guo, Gao Hua Zhang, You Ming Zhang
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Abstract

The aim of this study is to examine the precision, dependability, and relevance of AI-based evaluations in contrast to conventional human evaluations. In all, 200 7-8-year-old students from urban and suburban schools participated in the study. Based on movement speed, accuracy, and smoothness, KineticAI's assessment of their motor skills divided them into three categories: proficiency, developing, and emerging. A thorough examination of KineticAI's validity and reliability was ensured by evaluating its psychometric qualities using COSMIN criteria. Furthermore, AI-generated scores and human evaluator ratings were compared using TGMD-3 as a standard. Mean Absolute Error (MAE), Intraclass Correlation Coefficients (ICC), and Bland-Altman plots were among the statistical techniques used to evaluate the degree of agreement. With an ICC of 0.94, the results show that KineticAI achieves great accuracy and dependability, showing strong consistency with human judgments. With running (3.8), jumping (4.2), hopping (5.1), and balancing (4.9) points, the AI system demonstrated a negligible mean absolute error (MAE) across motor skills, thereby proving its accuracy. Disparities in motor proficiency were also found by gender and school, with suburban girls scoring the lowest and urban boys the highest. These results highlight how crucial it is to provide everyone with fair access to organized physical activity programs to close developmental gaps. The study indicates that KineticAI offers a scalable, objective, and efficient alternative to traditional motor assessments. It is a valuable tool for use in schools, rehabilitation clinics, and sports training programs.

运动发展的人工智能评估:使用KineticAI等平台来分析儿童的基本运动技能。
本研究的目的是检验与传统的人类评估相比,基于人工智能的评估的准确性、可靠性和相关性。总共有200名来自城市和郊区学校的7-8岁的学生参加了这项研究。基于运动速度,准确性和平稳性,KineticAI对他们的运动技能的评估将他们分为三类:熟练,发展和新兴。通过使用COSMIN标准评估其心理测量质量,确保对KineticAI的有效性和可靠性进行彻底检查。此外,使用TGMD-3作为标准,比较人工智能生成的分数和人类评估者的评分。平均绝对误差(MAE)、类内相关系数(ICC)和Bland-Altman图是用于评估一致性程度的统计技术。结果表明,KineticAI具有很高的准确性和可靠性,与人类判断具有很强的一致性,ICC值为0.94。在跑步(3.8分)、跳跃(4.2分)、跳跃(5.1分)和平衡(4.9分)方面,人工智能系统在运动技能方面的平均绝对误差(MAE)可以忽略不计,从而证明了它的准确性。在运动能力方面,性别和学校也存在差异,郊区女孩得分最低,城市男孩得分最高。这些结果突出表明,为每个人提供公平参加有组织的体育活动项目的机会,以缩小发展差距是多么重要。该研究表明,KineticAI提供了一种可扩展的、客观的、有效的替代传统运动评估的方法。它是学校、康复诊所和运动训练项目中使用的一种有价值的工具。
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
Perceptual and Motor Skills
Perceptual and Motor Skills PSYCHOLOGY, EXPERIMENTAL-
CiteScore
2.90
自引率
6.20%
发文量
110
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