Purpose:The aim of this study was to quantify and predict relationships between rating of perceived exertion (RPE) and GPS training-load (TL) variables in professional Australian football (AF) players using group and individualized modeling approaches.Methods:TL data (GPS and RPE) for 41 professional AF players were obtained over a period of 27 wk. A total of 2711 training observations were analyzed with a total of 66 ± 13 sessions/player (range 39–89). Separate generalized estimating equations (GEEs) and artificial-neural-network analyses (ANNs) were conducted to determine the ability to predict RPE from TL variables (ie, session distance, high-speed running [HSR], HSR %, m/min) on a group and individual basis.Results:Prediction error for ...
Objectives: To compare different methods of training load (TL) quantification and their relationship...
We examined the within-player correlation between external training load (ETL) and perceptual respon...
The use of machine learning (ML) in soccer allows for the management of a large amount of data deriv...
Purpose:The aim of this study was to quantify and predict relationships between rating of perceived ...
The relationship between external training load and session rating of perceived exertion (s-RPE) tra...
PURPOSE: Machine learning may contribute to understanding the relationship between the external load...
Aim: The use of external and internal load is an important aspect of monitoring systems in team spor...
Purpose: To assess and compare the validity of internal and external Australian football (AF) traini...
Purpose: To assess and compare the validity of internal and external Australian football (AF) traini...
Introduction and purpose Assessing the external load during physical activity during football traini...
Introduction and purpose Assessing the external load during physical activity during football traini...
Purpose: The aim of the current study was to identify the external-training-load markers that are mo...
PURPOSE: Machine learning may contribute to understanding the relationship between the external load...
Game demands and training practices within team sports such as Australian football (AF) have changed...
This study aims to investigate the relationship between subjective and external measures of load in ...
Objectives: To compare different methods of training load (TL) quantification and their relationship...
We examined the within-player correlation between external training load (ETL) and perceptual respon...
The use of machine learning (ML) in soccer allows for the management of a large amount of data deriv...
Purpose:The aim of this study was to quantify and predict relationships between rating of perceived ...
The relationship between external training load and session rating of perceived exertion (s-RPE) tra...
PURPOSE: Machine learning may contribute to understanding the relationship between the external load...
Aim: The use of external and internal load is an important aspect of monitoring systems in team spor...
Purpose: To assess and compare the validity of internal and external Australian football (AF) traini...
Purpose: To assess and compare the validity of internal and external Australian football (AF) traini...
Introduction and purpose Assessing the external load during physical activity during football traini...
Introduction and purpose Assessing the external load during physical activity during football traini...
Purpose: The aim of the current study was to identify the external-training-load markers that are mo...
PURPOSE: Machine learning may contribute to understanding the relationship between the external load...
Game demands and training practices within team sports such as Australian football (AF) have changed...
This study aims to investigate the relationship between subjective and external measures of load in ...
Objectives: To compare different methods of training load (TL) quantification and their relationship...
We examined the within-player correlation between external training load (ETL) and perceptual respon...
The use of machine learning (ML) in soccer allows for the management of a large amount of data deriv...