PURPOSE:To evaluate the accuracy of LAB EE prediction models in preschool children completing a free-living active play session. Performance was benchmarked against EE prediction models trained on free living (FL) data. METHODS:25 children (mean age = 4.1±1.0 y) completed a 20-minute active play session while wearing a portable indirect calorimeter and ActiGraph GT3X+ accelerometers on their right hip and non-dominant wrist. EE was predicted using LAB models which included Random Forest (RF) and Support Vector Machine (SVM) models for the wrist, and RF and Artificial Neural Network (ANN) models for the hip. Two variations of the LAB models were evaluated; 1) an "off the shelf" model without additional training; 2) models retrained on free-l...
Background: Accelerometry has been established as an objective method that can be used to assess phy...
Objectives: This study aimed to validate SenseWear Mini software algorithm versions 2.2 (SW2.2) and ...
Background: To validate the activPAL3 algorithm for predicting metabolic equivalents (TAMETs) and cl...
Machine learning classification models for accelerometer data are potentially more accurate methods ...
Machine learning (ML) activity classification models trained on laboratory-based activity trials exh...
Regular Physical activity (PA) provides children a range of important health benefits, including hea...
This study compared accuracy of energy expenditure (EE) prediction models from accelerometer data co...
The aim of this study was to compare the energy expenditure (EE) estimations of activity-specific pr...
A means of quantifying continuous, free-living energy expenditure (EE) would advance the study of bi...
Backround: The relation between energy expenditure (EE) in childhood physical activity and childhood...
Purpose. To critically review the validity of accelerometry-based prediction models to estimate acti...
Background: Machine learning may improve energy expenditure (EE) prediction from body-worn accelerom...
The aim of the study was to compare activity-specific regressions (ASR), random forest (RFEE) and re...
Objectives: This study aimed to validate SenseWear Mini software algorithm versions 2.2 (SW2.2) and ...
Introduction Machine learning (ML) accelerometer data processing methods have potential to improve t...
Background: Accelerometry has been established as an objective method that can be used to assess phy...
Objectives: This study aimed to validate SenseWear Mini software algorithm versions 2.2 (SW2.2) and ...
Background: To validate the activPAL3 algorithm for predicting metabolic equivalents (TAMETs) and cl...
Machine learning classification models for accelerometer data are potentially more accurate methods ...
Machine learning (ML) activity classification models trained on laboratory-based activity trials exh...
Regular Physical activity (PA) provides children a range of important health benefits, including hea...
This study compared accuracy of energy expenditure (EE) prediction models from accelerometer data co...
The aim of this study was to compare the energy expenditure (EE) estimations of activity-specific pr...
A means of quantifying continuous, free-living energy expenditure (EE) would advance the study of bi...
Backround: The relation between energy expenditure (EE) in childhood physical activity and childhood...
Purpose. To critically review the validity of accelerometry-based prediction models to estimate acti...
Background: Machine learning may improve energy expenditure (EE) prediction from body-worn accelerom...
The aim of the study was to compare activity-specific regressions (ASR), random forest (RFEE) and re...
Objectives: This study aimed to validate SenseWear Mini software algorithm versions 2.2 (SW2.2) and ...
Introduction Machine learning (ML) accelerometer data processing methods have potential to improve t...
Background: Accelerometry has been established as an objective method that can be used to assess phy...
Objectives: This study aimed to validate SenseWear Mini software algorithm versions 2.2 (SW2.2) and ...
Background: To validate the activPAL3 algorithm for predicting metabolic equivalents (TAMETs) and cl...