人工智能可穿戴设备对田径运动员康复效果的实时监测研究

Q2 Computer Science
Bin Wu
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An individualized rehabilitation model was established through the data collected by these sensors, and advanced artificial intelligence algorithms were used to analyze the data in Real Time. At the same time, the sensor data were combined with the actual performance of the athletes' rehabilitation training to comprehensively assess the effectiveness of AI wearable devices in rehabilitation monitoring. METHODS: This study aims to assess the effect of Real Time monitoring of AI wearable devices in the rehabilitation of track and field athletes and to explore their potential application in the rehabilitation process. Real Time tracking of athletes' physiological status and athletic performance aims to provide more accurate and timely information to rehabilitation doctors and coaches to optimize the rehabilitation training program and promote the rehabilitation process of athletes. 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引用次数: 0

摘要

引言:随着人工智能技术的快速发展,可穿戴人工智能设备在医疗康复领域显示出巨大潜力。本研究探讨了人工智能可穿戴设备在田径运动员康复过程中的实时监测效果。通过引入先进的传感技术和数据分析算法,研究该技术在康复监测中的应用,为田径运动员提供更科学、更个性化的康复方案。目标:选取一组田径运动员作为研究对象,为其配备人工智能可穿戴设备,该设备能够实时监测运动员的生理参数、运动姿势、关节活动度等康复相关数据。通过这些传感器收集的数据建立了个性化康复模型,并使用先进的人工智能算法对数据进行实时分析。同时,将传感器数据与运动员康复训练的实际表现相结合,全面评估人工智能可穿戴设备在康复监测中的效果。方法:本研究旨在评估人工智能可穿戴设备在田径运动员康复训练中的实时监测效果,并探索其在康复训练过程中的潜在应用。实时跟踪运动员的生理状态和运动表现,旨在为康复医生和教练员提供更准确、及时的信息,优化康复训练方案,促进运动员的康复进程。结果:研究表明,人工智能可穿戴设备在田径运动员康复中具有显著的实时监测效果。通过对生理参数、运动姿势、关节活动度等数据的实时监测,康复团队能够更及时地发现潜在问题并调整康复计划。运动员使用人工智能可穿戴设备提高了康复训练的个性化和针对性,康复效果明显优于传统监测方法。结论:本研究认为,人工智能可穿戴设备在田径运动员康复中表现良好,为康复监测提供了更科学、更全面的手段。通过实时跟踪,康复团队可以更好地了解运动员的康复进度,有针对性地调整康复方案,提高康复效果。但未来的研究仍需进一步优化设备性能,扩大样本量,深入研究康复不同阶段的监测需求,以更好地满足田径运动员康复过程中的个性化需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real Time Monitoring Research on Rehabilitation Effect of Artificial Intelligence Wearable Equipment on Track and Field Athletes
INTRODUCTION: With the rapid development of artificial intelligence technology, wearable artificial intelligence devices show great potential in medical rehabilitation. This study explores the Real Time monitoring effect of AI wearable devices in the rehabilitation process of track and field athletes. The application of this technology in rehabilitation monitoring was investigated through the introduction of advanced sensing technology and data analysis algorithms to provide track and field athletes with more scientific and personalized rehabilitation programs. OBJECTIVES: A group of track and field athletes was selected as the research object and equipped with an artificial intelligence wearable device, which is capable of Real Time monitoring of the athletes' physiological parameters, sports postures, joint mobility, and other rehabilitation-related data. An individualized rehabilitation model was established through the data collected by these sensors, and advanced artificial intelligence algorithms were used to analyze the data in Real Time. At the same time, the sensor data were combined with the actual performance of the athletes' rehabilitation training to comprehensively assess the effectiveness of AI wearable devices in rehabilitation monitoring. METHODS: This study aims to assess the effect of Real Time monitoring of AI wearable devices in the rehabilitation of track and field athletes and to explore their potential application in the rehabilitation process. Real Time tracking of athletes' physiological status and athletic performance aims to provide more accurate and timely information to rehabilitation doctors and coaches to optimize the rehabilitation training program and promote the rehabilitation process of athletes. RESULTS: The study showed that artificial intelligence wearable devices have significant Real Time monitoring effects in rehabilitating track and field athletes. Through Real Time monitoring of data such as physiological parameters, sports posture, and joint mobility, the rehabilitation team was able to identify potential problems and adjust the rehabilitation program in a more timely manner. Athletes using artificial intelligence wearable devices improved the personalization and targeting of rehabilitation training, and the rehabilitation effect was significantly better than that of traditional monitoring methods. CONCLUSION: This study concludes that artificial intelligence wearable devices perform well in rehabilitating track and field athletes, providing a more scientific and comprehensive means of rehabilitation monitoring. Through Real Time tracking, the rehabilitation team could better understand the rehabilitation progress of the athletes, adjust the rehabilitation program in a targeted manner, and improve the rehabilitation effect. However, future research still needs to optimize the performance of the devices further, expand the sample size, and thoroughly study the monitoring needs at different stages of rehabilitation to better meet the individualized requirements of track and field athletes' rehabilitation process.
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EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
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0.00%
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14
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10 weeks
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