Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact role in healthy ageing. To date, accelerometers using cut-off point models are most preferred for this, however, machine learning seems a highly promising future alternative. Hence, the current study compared between cut-off point and machine learning algorithms, for optimal quantification of sedentary behaviour and physical activity intensities in the elderly. Thus, in a heterogeneous sample of forty participants (aged ≥60 years, 50% female) energy expenditure during laboratory-based activities (ranging from sedentary behaviour through to moderate-to-vigorous physical activity) was estimated by indirect calorimetry, whilst wearing triaxial th...
Due to a lack of transparency in both algorithm and validation methodology, it is diffcult for resea...
Hip-worn triaxial accelerometers are widely used to assess physical activity in terms of energy expe...
BackgroundA triaxial accelerometer with an algorithm that could discriminate locomotive and non-loco...
Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact r...
Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact r...
Machine learning algorithms to classify activity type from wearable accelerometers are important to ...
Sufficient physical activity (PA) reduces the risk of a myriad of diseases and preserves physical ca...
Numerous studies have identified the importance of regular physical activity, limited sitting time a...
Machine learning has been used to accurately recognise physical activity patterns; however, classifi...
PurposeMachine learning methods could better improve the detection of specific types of physical act...
International audienceSummaryBackground Identification of new physical activity (PA) and sedentary b...
Abstract The purpose of this study was to describe the accelerometry-based characteristics of overa...
BACKGROUND: Identification of new physical activity (PA) and sedentary behaviour (SB) features relev...
Due to a lack of transparency in both algorithm and validation methodology, it is difficult for rese...
A population group that is often overlooked in the recent revolution of self-tracking is the group o...
Due to a lack of transparency in both algorithm and validation methodology, it is diffcult for resea...
Hip-worn triaxial accelerometers are widely used to assess physical activity in terms of energy expe...
BackgroundA triaxial accelerometer with an algorithm that could discriminate locomotive and non-loco...
Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact r...
Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact r...
Machine learning algorithms to classify activity type from wearable accelerometers are important to ...
Sufficient physical activity (PA) reduces the risk of a myriad of diseases and preserves physical ca...
Numerous studies have identified the importance of regular physical activity, limited sitting time a...
Machine learning has been used to accurately recognise physical activity patterns; however, classifi...
PurposeMachine learning methods could better improve the detection of specific types of physical act...
International audienceSummaryBackground Identification of new physical activity (PA) and sedentary b...
Abstract The purpose of this study was to describe the accelerometry-based characteristics of overa...
BACKGROUND: Identification of new physical activity (PA) and sedentary behaviour (SB) features relev...
Due to a lack of transparency in both algorithm and validation methodology, it is difficult for rese...
A population group that is often overlooked in the recent revolution of self-tracking is the group o...
Due to a lack of transparency in both algorithm and validation methodology, it is diffcult for resea...
Hip-worn triaxial accelerometers are widely used to assess physical activity in terms of energy expe...
BackgroundA triaxial accelerometer with an algorithm that could discriminate locomotive and non-loco...