Using artificial intelligence algorithms to approximate data from inertial measurement unit sensors and strain gauges in basketball players

E.M. Barskova, A.D. Kuklev, Nikolay V. Polukarov, E. Achkasov
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引用次数: 0

Abstract

BACKGROUND: The process of acquiring visual data from microelectromechanical sensors currently requires significant time and effort on the part of the clinician. The use of artificial intelligence algorithms to approximate data could potentially reduce the time required and increase the amount of work performed. AIM: The aim of this study is to approximate the data generated by sensors located in the shoe insole of basketball athletes and to compare the change in movement parameters of athletes when using CAD/CAM insoles. MATERIALS AND METHODS: Prior to the commencement of the study, permission was obtained from the local ethical committee of Sechenov University (protocol No. 19–23). The main cohort consisted of 39 athletes, comprising 21 men (53%) and 18 women (47%). The mean age of the athletes was 22.4 ± 7.54 years. The athletes were divided into three equal comparison groups according to the type of insoles they were wearing. Throughout the study period, all athletes remained healthy and free from injuries. The assessment of movement in space was conducted using a three-test system. This involved the use of microelectromechanical system sensors with an artificial intelligence algorithm, which facilitated the construction of visually clear and well-interpreted median lines (data approximation). RESULTS: For objective assessment of jumping characteristics, angular changes, velocity movements in space, and a comparison of all parameters on days 0 and 21, we developed and used our own software system, which was based on mathematical algorithmization and transformation formulas on specific axes. All data were entered into a neural network to construct averaged values of the parameters of movement in space. This approach allows the doctor to evaluate the changes of each peak movement on three different axes. Furthermore, it is possible to summarize the athlete's movement parameters with the aid of artificial intelligence, thereby enabling the detection of changes in different axes on days 0 and 21. Insole model C-1 exhibited the following improvements: X-axis movement speed (+7.7%), Y-axis jump height (+17.3%), endurance (+3.1%), and a 1.43-fold enhancement in shock absorption. Insole model C-2 exhibited an 8.4% increase in X-axis travel speed, a 20.8% enhancement in Y-axis jump height, a 6.6% improvement in endurance, and a 1.48-fold enhancement in shock absorption. Insole model C-3 demonstrated an 13.5% surge in X-axis travel speed, a 22.4% surge in Y-axis jump height, a 9.5% surge in endurance, and a 1.53-fold enhancement in shock absorption. CONCLUSIONS: The approximation of the data (median lines using an artificial intelligence algorithm) allows for the straightforward interpretation and comparison of various parameters, as well as the drawing of conclusions regarding the efficacy of individual sports CAD/CAM insoles. Additionally, it enables the assessment of changes in endurance, speed of movement during prolonged and intensive movement, and the reduction of the risk of impact loads on the musculoskeletal system of the athlete.
利用人工智能算法对篮球运动员惯性测量单元传感器和应变片的数据进行近似分析
背景:目前,从微机电传感器获取视觉数据的过程需要临床医生花费大量的时间和精力。使用人工智能算法对数据进行近似处理有可能缩短所需时间并增加工作量。目的:本研究旨在对篮球运动员鞋垫中的传感器所产生的数据进行近似分析,并比较运动员在使用 CAD/CAM 鞋垫时运动参数的变化。材料与方法:研究开始前,已获得谢切诺夫大学当地伦理委员会的许可(协议编号:19-23)。主要研究对象包括 39 名运动员,其中男性 21 人(占 53%),女性 18 人(占 47%)。运动员的平均年龄为 22.4 ± 7.54 岁。根据运动员所穿鞋垫的类型,将他们分为三个相等的对比组。在整个研究期间,所有运动员都保持健康,没有受伤。空间运动评估采用三项测试系统进行。其中包括使用微机电系统传感器和人工智能算法,这有助于构建视觉清晰、解释明确的中位线(数据近似)。结果:为了客观评估跳跃特征、角度变化、空间速度运动以及第 0 天和第 21 天所有参数的比较,我们开发并使用了自己的软件系统,该系统基于数学算法和特定轴的转换公式。所有数据都被输入神经网络,以构建空间运动参数的平均值。通过这种方法,医生可以评估每个峰值在三个不同轴上的运动变化。此外,还可以借助人工智能总结运动员的运动参数,从而检测出第 0 天和第 21 天不同轴线的变化。鞋垫模型 C-1 表现出以下改进:X 轴运动速度(+7.7%)、Y 轴跳跃高度(+17.3%)、耐力(+3.1%)以及减震效果提高了 1.43 倍。鞋垫型号 C-2 的 X 轴移动速度提高了 8.4%,Y 轴跳跃高度提高了 20.8%,耐力提高了 6.6%,减震效果提高了 1.48 倍。鞋垫模型 C-3 的 X 轴行进速度提高了 13.5%,Y 轴跳跃高度提高了 22.4%,耐力提高了 9.5%,减震效果增强了 1.53 倍。结论:通过对数据进行近似处理(使用人工智能算法得出中位线),可以对各种参数进行直接解释和比较,并就个别运动 CAD/CAM 鞋垫的功效得出结论。此外,它还能评估耐力的变化、长时间和高强度运动时的运动速度,以及降低冲击负荷对运动员肌肉骨骼系统造成的风险。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
44
审稿时长
5 weeks
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