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Data Mining Paths for Standard Weekly Training Load in Sub-Elite Young Football Players: A Machine Learning Approach.
Teixeira, José E; Encarnação, Samuel; Branquinho, Luís; Morgans, Ryland; Afonso, Pedro; Rocha, João; Graça, Francisco; Barbosa, Tiago M; Monteiro, António M; Ferraz, Ricardo; Forte, Pedro.
Afiliação
  • Teixeira JE; Department of Sport Sciences, Polytechnic of Guarda, 6300-559 Guarda, Portugal.
  • Encarnação S; Department of Sport Sciences, Instituto Politécnico de Bragança, 5300-253 Bragança, Portugal.
  • Branquinho L; SPRINT-Sport Physical Activity and Health Research & Inovation Center, 6300-559 Guarda, Portugal.
  • Morgans R; Research Center in Sports, Health and Human Development, 6201-001 Covilhã, Portugal.
  • Afonso P; LiveWell-Research Centre for Active Living and Wellbeing, Polytechnic Institute of Bragança, 5300-253 Bragança, Portugal.
  • Rocha J; CI-ISCE, ISCE Douro, 4560-547 Penafiel, Portugal.
  • Graça F; Department of Sport Sciences, Instituto Politécnico de Bragança, 5300-253 Bragança, Portugal.
  • Barbosa TM; LiveWell-Research Centre for Active Living and Wellbeing, Polytechnic Institute of Bragança, 5300-253 Bragança, Portugal.
  • Monteiro AM; CI-ISCE, ISCE Douro, 4560-547 Penafiel, Portugal.
  • Ferraz R; Department of Pysical Activity and Sport Sciences, Universidad Autónoma de Madrid, Ciudad Universitaria de Cantoblanco, 28049 Madrid, Spain.
  • Forte P; Research Center in Sports, Health and Human Development, 6201-001 Covilhã, Portugal.
J Funct Morphol Kinesiol ; 9(3)2024 Jun 28.
Article em En | MEDLINE | ID: mdl-39051275
ABSTRACT
The aim of this study was to test a machine learning (ML) model to predict high-intensity actions and body impacts during youth football training. Sixty under-15, -17, and -19 sub-elite Portuguese football players were monitored over a 6-week period. External training load data were collected from the target variables of accelerations (ACCs), decelerations (DECs), and dynamic stress load (DSL) using an 18 Hz global positioning system (GPS). Additionally, we monitored the perceived exertion and biological characteristics using total quality recovery (TQR), rating of perceived exertion (RPE), session RPE (sRPE), chronological age, maturation offset (MO), and age at peak height velocity (APHV). The ML model was computed by a feature selection process with a linear regression forecast and bootstrap method. The predictive analysis revealed that the players' MO demonstrated varying degrees of effectiveness in predicting their DEC and ACC across different ranges of IQR. After predictive analysis, the following performance values were observed DEC (x¯predicted = 41, ß = 3.24, intercept = 37.0), lower IQR (IQRpredicted = 36.6, ß = 3.24, intercept = 37.0), and upper IQR (IQRpredicted = 46 decelerations, ß = 3.24, intercept = 37.0). The player's MO also demonstrated the ability to predict their upper IQR (IQRpredicted = 51, ß = 3.8, intercept = 40.62), lower IQR (IQRpredicted = 40, ß = 3.8, intercept = 40.62), and ACC (x¯predicted = 46 accelerations, ß = 3.8, intercept = 40.62). The ML model showed poor performance in predicting the players' ACC and DEC using MO (MSE = 2.47-4.76; RMSE = 1.57-2.18 R2 = -0.78-0.02). Maturational concerns are prevalent in football performance and should be regularly checked, as the current ML model treated MO as the sole variable for ACC, DEC, and DSL. Applying ML models to assess automated tracking data can be an effective strategy, particularly in the context of forecasting peak ACC, DEC, and bodily effects in sub-elite youth football training.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: J Funct Morphol Kinesiol Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Portugal

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: J Funct Morphol Kinesiol Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Portugal
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