The current gold standard of gait diagnostics is dependent on large, expensive motion-capture laboratories and highly trained clinical and technical staff. Wearable sensor systems combined with machine learning may help to improve the accessibility of objective gait assessments in a broad clinical context. However, current algorithms lack flexibility and require large training datasets with tedious manual labelling of data. The current study tests the validity of a novel machine learning algorithm for automated gait partitioning of laboratory-based and sensor-based gait data. The developed artificial intelligence tool was used in patients with a central neurological lesion and severe gait impairments. To build the novel algorithm, 2% and 3%...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...
Abstract. This paper presents a methodology based on machine learn-ing techniques to assess the perf...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...
The current gold standard of gait diagnostics is dependent on large, expensive motion-capture labora...
Gait analysis involves the measurement of quantities that characterize human locomotion. This type o...
Gait, balance, and coordination are important in the development of chronic disease, but the ability...
The pervasiveness of wearable sensors has contributed to plenty of daily activity data and greatly i...
This thesis alms to investigate how machine learning and statistical approaches can be employed to s...
Objective: This paper describes how non-invasive wearable sensors can be used in combination with de...
Objective: This paper describes how non-invasive wearable sensors can be used in combination with de...
Our mobility is an important daily requirement so much so that any disruption to it severely degrade...
With the explosive use of wearable devices, there is an urgent need to find impactful ways to utiliz...
A machine-learning framework to identify the specific disease afflicting certain patients using only...
Machine learning is a powerful tool for making predictions and has been widely used for solving vari...
Quantitative Gait Analysis (QGA) is considered as an objective measure of gait performance. In this ...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...
Abstract. This paper presents a methodology based on machine learn-ing techniques to assess the perf...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...
The current gold standard of gait diagnostics is dependent on large, expensive motion-capture labora...
Gait analysis involves the measurement of quantities that characterize human locomotion. This type o...
Gait, balance, and coordination are important in the development of chronic disease, but the ability...
The pervasiveness of wearable sensors has contributed to plenty of daily activity data and greatly i...
This thesis alms to investigate how machine learning and statistical approaches can be employed to s...
Objective: This paper describes how non-invasive wearable sensors can be used in combination with de...
Objective: This paper describes how non-invasive wearable sensors can be used in combination with de...
Our mobility is an important daily requirement so much so that any disruption to it severely degrade...
With the explosive use of wearable devices, there is an urgent need to find impactful ways to utiliz...
A machine-learning framework to identify the specific disease afflicting certain patients using only...
Machine learning is a powerful tool for making predictions and has been widely used for solving vari...
Quantitative Gait Analysis (QGA) is considered as an objective measure of gait performance. In this ...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...
Abstract. This paper presents a methodology based on machine learn-ing techniques to assess the perf...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...