2 research outputs found
Using Kinect to classify Parkinson's disease stages related to severity of gait impairment
Background: Parkinson’s Disease (PD) is a chronic neurodegenerative disease associated with motor problems such
as gait impairment. Different systems based on 3D cameras, accelerometers or gyroscopes have been used in related
works in order to study gait disturbances in PD. Kinect has also been used to build these kinds of systems, but
contradictory results have been reported: some works conclude that Kinect does not provide an accurate method of
measuring gait kinematics variables, but others, on the contrary, report good accuracy results.
Methods: In this work, we have built a Kinect-based system that can distinguish between different PD stages, and
have performed a clinical study with 30 patients suffering from PD belonging to three groups: early PD patients
without axial impairment, more evolved PD patients with higher gait impairment but without Freezing of Gait (FoG),
and patients with advanced PD and FoG. Those patients were recorded by two Kinect devices when they were
walking in a hospital corridor. The datasets obtained from the Kinect were preprocessed, 115 features identified, some
methods were applied to select the relevant features (correlation based feature selection, information gain, and
consistency subset evaluation), and different classification methods (decision trees, Bayesian networks, neural
networks and K-nearest neighbours classifiers) were evaluated with the goal of finding the most accurate method for
PD stage classification.
Results: The classifier that provided the best results is a particular case of a Bayesian Network classifier (similar to a
Naïve Bayesian classifier) built from a set of 7 relevant features selected by the correlation-based on feature selection
method. The accuracy obtained for that classifier using 10-fold cross validation is 93.40%. The relevant features are
related to left shin angles, left humerus angles, frontal and lateral bents, left forearm angles and the number of steps
during spin.
Conclusions: In this paper, it is shown that using Kinect is adequate to build a inexpensive and comfortable system
that classifies PD into three different stages related to FoG. Compared to the results of previous works, the obtained
accuracy (93.40%) can be considered high. The relevant features for the classifier are: a) movement and position of the
left arm, b) trunk position for slightly displaced walking sequences, and c) left shin angle, for straight walking
sequences. However, we have obtained a better accuracy (96.23%) for a classifier that only uses features extracted
from slightly displaced walking steps and spin walking steps. Finally, the obtained set of relevant features may lead to
new rehabilitation therapies for PD patients with gait problems
Using Kinect to classify Parkinson's disease stages related to severity of gait impairment
Background: Parkinson’s Disease (PD) is a chronic neurodegenerative disease associated with motor problems such
as gait impairment. Different systems based on 3D cameras, accelerometers or gyroscopes have been used in related
works in order to study gait disturbances in PD. Kinect has also been used to build these kinds of systems, but
contradictory results have been reported: some works conclude that Kinect does not provide an accurate method of
measuring gait kinematics variables, but others, on the contrary, report good accuracy results.
Methods: In this work, we have built a Kinect-based system that can distinguish between different PD stages, and
have performed a clinical study with 30 patients suffering from PD belonging to three groups: early PD patients
without axial impairment, more evolved PD patients with higher gait impairment but without Freezing of Gait (FoG),
and patients with advanced PD and FoG. Those patients were recorded by two Kinect devices when they were
walking in a hospital corridor. The datasets obtained from the Kinect were preprocessed, 115 features identified, some
methods were applied to select the relevant features (correlation based feature selection, information gain, and
consistency subset evaluation), and different classification methods (decision trees, Bayesian networks, neural
networks and K-nearest neighbours classifiers) were evaluated with the goal of finding the most accurate method for
PD stage classification.
Results: The classifier that provided the best results is a particular case of a Bayesian Network classifier (similar to a
Naïve Bayesian classifier) built from a set of 7 relevant features selected by the correlation-based on feature selection
method. The accuracy obtained for that classifier using 10-fold cross validation is 93.40%. The relevant features are
related to left shin angles, left humerus angles, frontal and lateral bents, left forearm angles and the number of steps
during spin.
Conclusions: In this paper, it is shown that using Kinect is adequate to build a inexpensive and comfortable system
that classifies PD into three different stages related to FoG. Compared to the results of previous works, the obtained
accuracy (93.40%) can be considered high. The relevant features for the classifier are: a) movement and position of the
left arm, b) trunk position for slightly displaced walking sequences, and c) left shin angle, for straight walking
sequences. However, we have obtained a better accuracy (96.23%) for a classifier that only uses features extracted
from slightly displaced walking steps and spin walking steps. Finally, the obtained set of relevant features may lead to
new rehabilitation therapies for PD patients with gait problems