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首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >Recognition of Foot-Ankle Movement Patterns in Long-Distance Runners With Different Experience Levels Using Support Vector Machines
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Recognition of Foot-Ankle Movement Patterns in Long-Distance Runners With Different Experience Levels Using Support Vector Machines

机译:使用支持向量机器识别具有不同体验级别的长距离跑步者的脚踝运动模式

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Running practice could generate musculoskeletal adaptations that modify the body mechanics and generate different biomechanical patterns for individuals with distinct levels of experience. Therefore, the aim of this study was to investigate whether foot-ankle kinetic and kinematic patterns can be used to discriminate different levels of experience in running practice of recreational runners using a machine learning approach. Seventy-eight long-distance runners (40.7±7.0yrs) were classified into less experienced (n=24), moderately experienced (n=23) or experienced (n=31) runners using a fuzzy classification system, based on training frequency, volume, competitions and practice time. Three-dimensional kinematics of the foot-ankle and GRF were acquired while the subjects ran on an instrumented treadmill at a self-selected speed (9.5-10.5km/h). The foot-ankle kinematic and kinetic time series underwent a principal component analysis for data reduction, and combined with the discrete GRF variables to serve as inputs in a support vector machine (SVM), to determine if the groups could be distinguished between them in a one-vs-all approach. In addition, 33 discrete biomechanical variables were extracted and compared between the experience groups using ANOVAs followed by Bonferroni post-hoc tests (P0.05). Univariate analysis approach showed no between-group differences for the discrete variables. The SVM models successfully classified all experience groups with significant cross-validated accuracy rates and strong to very strong Matthew’s correlation coefficients, based on features from the input data. Overall, foot mechanics was different according to running experience level. The main distinguishing kinematic factors for the less experienced group were a greater dorsiflexion of the first metatarsophalangeal joint and a larger plantarflexion angles between the calcaneus and metatarsals, whereas the experienced runners displayed the opposite pattern for the same joints. The fact that only the multivariate analysis approach identified differences in foot-ankle movement patterns between groups suggests that the combination of variables and the relationship between them can be more effective in identifying running patterns. The current approach could be applied in other studies involving movement analysis to better identify mechanical changes due to therapeutic interventions. The results of this study have the potential to assist the development of training programs targeting improvement in performance and rehabilitation protocols for preventing injuries.
机译:跑步实践可以产生肌肉骨骼适应,修改身体力学,并为具有不同经验水平的个人产生不同的生物力学模式。因此,本研究的目的是调查脚踝动力学和运动模式是否可用于使用机器学习方法在运行休闲跑步者的运行实践中区分不同程度的经验。使用模糊分类系统基于训练频率,七十八个长距离跑步者(40.7±7.0yrs)分为经验丰富的(n = 24),中等经验(n = 23)或经验丰富的(n = 31)跑步者,卷,竞争和练习时间。在以自选速度(9.5-10.5km / h)上的仪表跑步机上,获得了足部脚踝和GRF的三维运动学。脚踝运动和动力学时间序列接受了用于数据减少的主要成分分析,并与离散GRF变量组合用作支持向量机(SVM)中的输入,以确定组是否可以在其中区分开一vs-all方法。此外,提取33个离散的生物力学变量,并使用ANOVA的经验组与Bonferroni后Hoc测试进行比较(P <0.05)。单变量分析方法显示离散变量的组间差异。基于输入数据的功能,SVM模型成功地分类了具有显着交叉验证的精度率和强大的Matthew的相关系数的所有体验组。总体而言,根据跑步体验水平,足部机械师不同。对于较少经验的组的主要区分运动因子是第一个跖趾关节的较大背包,并且在跖骨和跖骨之间的较大的跖曲角度,而经验丰富的跑步者向相同的关节显示相反的模式。只有多变量分析方法识别组之间的脚踝运动模式的差异所表明,在识别运行模式时,变量和它们之间的关系的组合可以更有效。目前的方法可以应用于涉及运动分析的其他研究,以便更好地识别由于治疗性干预措施为原因。本研究的结果有可能协助开发培训计划,针对预防伤害的绩效和康复议定书的改进。

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