An Artificial Intelligence Exercise Coaching Mobile App: Development and Randomized Controlled Trial to Verify Its Effectiveness in Posture Correction.

IF 1.9 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Han Joo Chae, Ji-Been Kim, Gwanmo Park, David Michael O'Sullivan, Jinwook Seo, Jung-Jun Park
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引用次数: 0

Abstract

Background: Insufficient physical activity due to social distancing and suppressed outdoor activities increases vulnerability to diseases like cardiovascular diseases, sarcopenia, and severe COVID-19. While bodyweight exercises, such as squats, effectively boost physical activity, incorrect postures risk abnormal muscle activation joint strain, leading to ineffective sessions or even injuries. Avoiding incorrect postures is challenging for novices without expert guidance. Existing solutions for remote coaching and computer-assisted posture correction often prove costly or inefficient.

Objective: This study aimed to use deep neural networks to develop a personal workout assistant that offers feedback on squat postures using only mobile devices-smartphones and tablets. Deep learning mimicked experts' visual assessments of proper exercise postures. The effectiveness of the mobile app was evaluated by comparing it with exercise videos, a popular at-home workout choice.

Methods: Twenty participants were recruited without squat exercise experience and divided into an experimental group (EXP) with 10 individuals aged 21.90 (SD 2.18) years and a mean BMI of 20.75 (SD 2.11) and a control group (CTL) with 10 individuals aged 22.60 (SD 1.95) years and a mean BMI of 18.72 (SD 1.23) using randomized controlled trials. A data set with over 20,000 squat videos annotated by experts was created and a deep learning model was trained using pose estimation and video classification to analyze the workout postures. Subsequently, a mobile workout assistant app, Home Alone Exercise, was developed, and a 2-week interventional study, in which the EXP used the app while the CTL only followed workout videos, showed how the app helps people improve squat exercise.

Results: The EXP significantly improved their squat postures evaluated by the app after 2 weeks (Pre: 0.20 vs Mid: 4.20 vs Post: 8.00, P=.001), whereas the CTL (without the app) showed no significant change in squat posture (Pre: 0.70 vs Mid: 1.30 vs Post: 3.80, P=.13). Significant differences were observed in the left (Pre: 75.06 vs Mid: 76.24 vs Post: 63.13, P=.02) and right (Pre: 71.99 vs Mid: 76.68 vs Post: 62.82, P=.03) knee joint angles in the EXP before and after exercise, with no significant effect found for the CTL in the left (Pre: 73.27 vs Mid: 74.05 vs Post: 70.70, P=.68) and right (Pre: 70.82 vs Mid: 74.02 vs Post: 70.23, P=.61) knee joint angles.

Conclusions: EXP participants trained with the app experienced faster improvement and learned more nuanced details of the squat exercise. The proposed mobile app, offering cost-effective self-discovery feedback, effectively taught users about squat exercises without expensive in-person trainer sessions.

Trial registration: Clinical Research Information Service KCT0008178 (retrospectively registered); https://cris.nih.go.kr/cris/search/detailSearch.do/24006.

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一款人工智能运动教练手机应用程序:开发和随机对照试验,以验证其在姿势矫正中的有效性。
背景:由于社交距离和户外活动受到抑制,身体活动不足,增加了患心血管疾病、少肌症和严重新冠肺炎等疾病的可能性。虽然深蹲等体重练习可以有效地促进身体活动,但不正确的姿势有可能导致肌肉异常激活关节劳损,导致训练无效甚至受伤。对于没有专业指导的新手来说,避免不正确的姿势是一项挑战。现有的远程辅导和计算机辅助姿势矫正解决方案往往成本高昂或效率低下。目的:本研究旨在使用深度神经网络开发一种个人锻炼助手,仅使用移动设备智能手机和平板电脑就可以提供深蹲姿势的反馈。深度学习模仿了专家对正确运动姿势的视觉评估。该手机应用程序的有效性是通过将其与在家锻炼的热门视频进行比较来评估的。方法:招募20名没有深蹲运动经验的参与者,并使用随机对照试验将其分为实验组(EXP)和对照组(CTL),实验组10名年龄21.90岁(SD 2.18),平均BMI为20.75(SD 2.11),对照组10名22.60岁(SD 1.95),平均体重指数为18.72(SD 1.23)。创建了一个由专家注释的20000多个深蹲视频的数据集,并使用姿势估计和视频分类来训练深度学习模型,以分析锻炼姿势。随后,开发了一款名为Home Alone Exercise的移动锻炼助手应用程序,并进行了一项为期两周的干预研究,其中EXP使用该应用程序,而CTL只关注锻炼视频,展示了该应用程序如何帮助人们改善深蹲锻炼。结果:EXP在2周后显著改善了应用程序评估的深蹲姿势(前:0.20 vs中:4.20 vs后:8.00,P=0.001),而CTL(没有应用程序)在深蹲姿势上没有显示出显著变化(前:0.70 vs中:1.30 vs后:3.80,P=.13)。在运动前后的EXP中观察到左(前:75.06 vs中:76.24 vs后:63.13,P=.02)和右(前:71.99 vs中:7668 vs后:62.82,P=.03)膝关节角度的显著差异,而在左侧(前:73.27 vs中:74.05 vs后:70.70,P=.68)和右侧(前:70.82 vs中:74 02 vs后:70 23,P=.61)膝关节角度中未发现CTL的显著作用。结论:使用该应用程序训练的EXP参与者体验到了更快的进步,并了解到了深蹲运动的更多细微细节。拟议中的移动应用程序提供了具有成本效益的自我发现反馈,有效地向用户传授了深蹲练习,而无需昂贵的面对面培训课程。试验注册:临床研究信息服务KCT0008178(回顾性注册);https://cris.nih.go.kr/cris/search/detailSearch.do/24006.
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
Interactive Journal of Medical Research
Interactive Journal of Medical Research MEDICINE, RESEARCH & EXPERIMENTAL-
自引率
0.00%
发文量
45
审稿时长
12 weeks
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