PeerJ | |
Immediate effects of EVA midsole resilience and upper shoe structure on running biomechanics: a machine learning approach | |
article | |
Andrea N. Onodera1  Wilson P. Gavião Neto3  Maria Isabel Roveri1  Wagner R. Oliveira2  Isabel CN Sacco1  | |
[1] Physical Therapy, Speech and Occupational Therapy Department, University of São Paulo, School of Medicine;Dass Nordeste Calçados e Artigos Esportivos Inc;School of Engeneering & IT, Centro Universitário Ritter dos Reis | |
关键词: Shoes; Running; Kinetics; Biomechanics; Neural networks; Kinematics; Machine learning; | |
DOI : 10.7717/peerj.3026 | |
学科分类:社会科学、人文和艺术(综合) | |
来源: Inra | |
【 摘 要 】
BackgroundResilience of midsole material and the upper structure of the shoe are conceptual characteristics that can interfere in running biomechanics patterns. Artificial intelligence techniques can capture features from the entire waveform, adding new perspective for biomechanical analysis. This study tested the influence of shoe midsole resilience and upper structure on running kinematics and kinetics of non-professional runners by using feature selection, information gain, and artificial neural network analysis.MethodsTwenty-seven experienced male runners (63 ± 44 km/week run) ran in four-shoe design that combined two resilience-cushioning materials (low and high) and two uppers (minimalist and structured). Kinematic data was acquired by six infrared cameras at 300 Hz, and ground reaction forces were acquired by two force plates at 1,200 Hz. We conducted a Machine Learning analysis to identify features from the complete kinematic and kinetic time series and from 42 discrete variables that had better discriminate the four shoes studied. For that analysis, we built an input data matrix of dimensions 1,080 (10 trials × 4 shoes × 27 subjects) × 1,254 (3 joints × 3 planes of movement × 101 data points + 3 vectors forces × 101 data points + 42 discrete calculated kinetic and kinematic features).ResultsThe applied feature selection by information gain and artificial neural networks successfully differentiated the two resilience materials using 200(16%) biomechanical variables with an accuracy of 84.8% by detecting alterations of running biomechanics, and the two upper structures with an accuracy of 93.9%.DiscussionThe discrimination of midsole resilience resulted in lower accuracy levels than did the discrimination of the shoe uppers. In both cases, the ground reaction forces were among the 25 most relevant features. The resilience of the cushioning material caused significant effects on initial heel impact, while the effects of different uppers were distributed along the stance phase of running. Biomechanical changes due to shoe midsole resilience seemed to be subject-dependent, while those due to upper structure seemed to be subject-independent.
【 授权许可】
CC BY
【 预 览 】
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RO202307100014291ZK.pdf | 14677KB | download |