Use of AI methods to assessment of lower limb peak torque in deaf and hearing football players group.

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Acta of bioengineering and biomechanics Pub Date : 2025-01-27 Print Date: 2024-09-01 DOI:10.37190/abb-02474-2024-02
Adam Michał Szulc, Piotr Prokopowicz, Dariusz Mikołajewski
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Abstract

Purpose: Monitoring and assessing the level of lower limb motor skills using the Biodex System plays an important role in the training of football players and in post-traumatic rehabilitation. The aim of this study was to build and test an artificial intelligence-based model to assess the peak torque of the lower limb extensors and flexors. The model was based on real-world results in three groups: hearing (n = 19) and deaf football players (n = 28) and non-training deaf pupils (n = 46). Methods: The research used a 4-layer forward CNN neural network with two hidden layers with typical normalization for small data sets and Multilayer Perceptron (MLP) based on MatlabR2023a software with Neural Networks and Deep Learning toolkits and semiautomated learning algorithm selection using ML.NET. Results: The 70-90% accuracy shown in the article is sufficient here. AI provides a highly accurate, objective and efficient means of assessing neuromuscular performance, which can improve injury prevention and rehabilitation strategies. Conclusions: The high accuracy shows that AI-based models can help with this, but their wider practical implementation requires further cross-disciplinary research. AI, and in particular MLP and CNN can support both training methods and various gaming aspects. The contribution of the research is to use an innovative approach to derive computational rules/guidelines from an explicitly given dataset and then identify the relevant physiological torque of the lower limb extensors and flexors in the knee joint. The model complements existing methodologies for describing physiology of peak torque of lower limbs with using fuzzy logic, with a so-called dynamic norm built into the model.

应用人工智能方法评估聋人及听力健全足球运动员组下肢峰值扭矩。
目的:利用Biodex系统监测和评估下肢运动技能水平在足球运动员训练和创伤后康复中具有重要作用。本研究的目的是建立和测试一个基于人工智能的模型来评估下肢伸肌和屈肌的峰值扭矩。该模型基于三组真实世界的结果:听力正常(n = 19)的聋人足球运动员(n = 28)和未接受训练的聋人学生(n = 46)。方法:采用小数据集典型归一化的4层前向CNN神经网络和基于MatlabR2023a软件的多层感知器(Multilayer Perceptron, MLP),采用神经网络和深度学习工具包,采用ML.NET进行半自动学习算法选择。结果:本文给出的70-90%的准确率是足够的。人工智能提供了一种高度准确、客观和有效的评估神经肌肉表现的方法,可以改善损伤预防和康复策略。结论:高准确率表明基于人工智能的模型可以帮助解决这一问题,但其更广泛的实际实施需要进一步的跨学科研究。AI,特别是MLP和CNN可以同时支持训练方法和各种游戏方面。本研究的贡献在于使用一种创新的方法,从明确给定的数据集中推导出计算规则/指南,然后确定膝关节下肢伸肌和屈肌的相关生理扭矩。该模型利用模糊逻辑补充了现有的描述下肢峰值扭矩生理学的方法,并在模型中内置了所谓的动态范数。
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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