Literature DB >> 33561818

Relationship Between Wellness Index and Internal Training Load in Soccer: Application of a Machine Learning Model.

Enrico Perri, Carlo Simonelli, Alessio Rossi, Athos Trecroci, Giampietro Alberti, F Marcello Iaia.   

Abstract

PURPOSE: To investigate the relationship between the training load (TL = rate of perceived exertion × training time) and wellness index (WI) in soccer.
METHODS: The WI and TL data were recorded from 28 subelite players (age = 20.9 [2.4] y; height = 181.0 [5.8] cm; body mass = 72.0 [4.4] kg) throughout the 2017/2018 season. Predictive models were constructed using a supervised machine learning method that predicts the WI according to the planned TL. The validity of our predictive model was assessed by comparing the classification's accuracy with the one computed from a baseline that randomly assigns a class to an example by respecting the distribution of classes (B1).
RESULTS: A higher TL was reported after the games and during match day (MD)-5 and MD-4, while a higher WI was recorded on the following days (MD-6, MD-4, and MD-3, respectively). A significant correlation was reported between daily TL (TLMDi) and WI measured the day after (WIMDi+1) (r = .72, P < .001). Additionally, a similar weekly pattern seems to be repeating itself throughout the season in both TL and WI. Nevertheless, the higher accuracy of ordinal regression (39% [2%]) compared with the results obtained by baseline B1 (21% [1%]) demonstrated that the machine learning approach used in this study can predict the WI according to the TL performed the day before (MD<i).
CONCLUSION: The machine learning technique can be used to predict the WI based on a targeted weekly TL. Such an approach may contribute to enhancing the training-induced adaptations, maximizing the players' readiness and reducing the potential drops in performance associated with poor wellness scores.

Entities:  

Keywords:  artificial intelligence; microcycle; periodization; rate of perceived exertion; readiness

Mesh:

Year:  2021        PMID: 33561818     DOI: 10.1123/ijspp.2020-0093

Source DB:  PubMed          Journal:  Int J Sports Physiol Perform        ISSN: 1555-0265            Impact factor:   4.010


  3 in total

Review 1.  Monitoring Psychometric States of Recovery to Improve Performance in Soccer Players: A Brief Review.

Authors:  Okba Selmi; Ibrahim Ouergui; Antonella Muscella; Giulia My; Santo Marsigliante; Hadi Nobari; Katsuhiko Suzuki; Anissa Bouassida
Journal:  Int J Environ Res Public Health       Date:  2022-07-31       Impact factor: 4.614

2.  Wellness Forecasting by External and Internal Workloads in Elite Soccer Players: A Machine Learning Approach.

Authors:  Alessio Rossi; Enrico Perri; Luca Pappalardo; Paolo Cintia; Giampietro Alberti; Darcy Norman; F Marcello Iaia
Journal:  Front Physiol       Date:  2022-06-15       Impact factor: 4.755

Review 3.  A Narrative Review for a Machine Learning Application in Sports: An Example Based on Injury Forecasting in Soccer.

Authors:  Alessio Rossi; Luca Pappalardo; Paolo Cintia
Journal:  Sports (Basel)       Date:  2021-12-24
  3 in total

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