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Combined Vision and Wearable Sensors-based System for Movement Analysis in Rehabilitation

Authorized Users Only
2017
Authors
Spasojević, Sofija
Ilić, Tihomir V.
Milanović, Slađan
Potkonjak, Veljko
Rodić, Aleksandar
Santos-Victor, Jose
Article (Published version)
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Abstract
Background: Traditional rehabilitation sessions are often a slow, tedious, disempowering and non-motivational process, supported by clinical assessment tools, i.e. evaluation scales that are prone to subjective rating and imprecise interpretation of patient's performance. Poor patient motivation and insufficient accuracy are thus critical factors that can be improved by new sensing/processing technologies. Objectives: We aim to develop a portable and affordable system, suitable for home re-habilitation, which combines vision-based and wearable sensors. We introduce a novel approach for examining and characterizing the rehabilitation movements, using quantitative descriptors. We propose new Movement Performance Indicators (MPIs) that are extracted directly from sensor data and quantify the symmetry, velocity, and acceleration of the movement of different body/hand parts, and that can potentially be used by therapists for diagnosis and progress assessment. Methods: First, a set of rehabi...litation exercises is defined, with the supervision of neurologists and therapists for the specific case of Parkinson's disease. It comprises full-body movements measured with a Kinect device and fine hand movements, acquired with a data glove. Then, the sensor data is used to compute 25 Movement Performance Indicators, to assist the diagnosis and progress monitoring (assessing the disease stage) in Parkinson's disease. A kinematic hand model is developed for data verification and as an additional resource for extracting supplementary movement information. Results: Our results show that the proposed Movement Performance Indicators are relevant for the Parkinson's disease assessment. This is further confirmed by correlation of the proposed indicators with clinical tapping test and UPDRS clinical scale. Classification results showed the potential of these indicators to discriminate between the patients and controls, as well as between the stages that characterize the evolution of the disease. Conclusions: The proposed sensor system, along with the developed approach for rehabilitation movement analysis have a significant potential to support and advance traditional rehabilitation therapy. The main impact of our work is two-fold: (i) the proposition of an approach for supporting the therapists during the diagnosis and monitoring evaluations by reducing subjectivity and imprecision, and (ii) offering the possibility of the system to be used at home for rehabilitation exercises in between sessions with doctors and therapists.

Keywords:
Rehabilitation / movement analysis / Kinect / wearable sensors
Source:
Methods of Information in Medicine, 2017, 56, 2, 95-111
Publisher:
  • Georg Thieme Verlag Kg, Stuttgart
Funding / projects:
  • European Commission, EU Seventh Framework Programme (FP7), STREP Project ICT-288382
  • Portuguese FCT Project [UID/EEA/50009/2013]
  • Alexander von Humboldt project Emotionally Intelligent Robots Elrobots" [3.4-IP-DEU/112623]
  • Research and development of ambient-intelligent service robots with anthropomorphic characteristics (RS-35003)
  • Design of Robot as Assistive Technology in Treatement of Children with Developmental Disorders (RS-44008)
  • Intelligent HUman-Machine Mechatronic System for Medical Applications (HUMANISM) (RS-44004)
  • Noninvasive modulation of cortical excitability and plasticity - Noninvasive neuromodulation of the CNS in the study of physiological mechanisms, diagnosis and treatment (RS-175012)

DOI: 10.3414/ME16-02-0013

ISSN: 0026-1270

PubMed: 27922660

WoS: 000397552700003

Scopus: 2-s2.0-85019181664
[ Google Scholar ]
16
14
URI
http://rimi.imi.bg.ac.rs/handle/123456789/799
Collections
  • Radovi istraživača / Researchers' publications
Institution/Community
Institut za medicinska istraživanja
TY  - JOUR
AU  - Spasojević, Sofija
AU  - Ilić, Tihomir V.
AU  - Milanović, Slađan
AU  - Potkonjak, Veljko
AU  - Rodić, Aleksandar
AU  - Santos-Victor, Jose
PY  - 2017
UR  - http://rimi.imi.bg.ac.rs/handle/123456789/799
AB  - Background: Traditional rehabilitation sessions are often a slow, tedious, disempowering and non-motivational process, supported by clinical assessment tools, i.e. evaluation scales that are prone to subjective rating and imprecise interpretation of patient's performance. Poor patient motivation and insufficient accuracy are thus critical factors that can be improved by new sensing/processing technologies. Objectives: We aim to develop a portable and affordable system, suitable for home re-habilitation, which combines vision-based and wearable sensors. We introduce a novel approach for examining and characterizing the rehabilitation movements, using quantitative descriptors. We propose new Movement Performance Indicators (MPIs) that are extracted directly from sensor data and quantify the symmetry, velocity, and acceleration of the movement of different body/hand parts, and that can potentially be used by therapists for diagnosis and progress assessment. Methods: First, a set of rehabilitation exercises is defined, with the supervision of neurologists and therapists for the specific case of Parkinson's disease. It comprises full-body movements measured with a Kinect device and fine hand movements, acquired with a data glove. Then, the sensor data is used to compute 25 Movement Performance Indicators, to assist the diagnosis and progress monitoring (assessing the disease stage) in Parkinson's disease. A kinematic hand model is developed for data verification and as an additional resource for extracting supplementary movement information. Results: Our results show that the proposed Movement Performance Indicators are relevant for the Parkinson's disease assessment. This is further confirmed by correlation of the proposed indicators with clinical tapping test and UPDRS clinical scale. Classification results showed the potential of these indicators to discriminate between the patients and controls, as well as between the stages that characterize the evolution of the disease. Conclusions: The proposed sensor system, along with the developed approach for rehabilitation movement analysis have a significant potential to support and advance traditional rehabilitation therapy. The main impact of our work is two-fold: (i) the proposition of an approach for supporting the therapists during the diagnosis and monitoring evaluations by reducing subjectivity and imprecision, and (ii) offering the possibility of the system to be used at home for rehabilitation exercises in between sessions with doctors and therapists.
PB  - Georg Thieme Verlag Kg, Stuttgart
T2  - Methods of Information in Medicine
T1  - Combined Vision and Wearable Sensors-based System for Movement Analysis in Rehabilitation
EP  - 111
IS  - 2
SP  - 95
VL  - 56
DO  - 10.3414/ME16-02-0013
UR  - conv_3991
ER  - 
@article{
author = "Spasojević, Sofija and Ilić, Tihomir V. and Milanović, Slađan and Potkonjak, Veljko and Rodić, Aleksandar and Santos-Victor, Jose",
year = "2017",
abstract = "Background: Traditional rehabilitation sessions are often a slow, tedious, disempowering and non-motivational process, supported by clinical assessment tools, i.e. evaluation scales that are prone to subjective rating and imprecise interpretation of patient's performance. Poor patient motivation and insufficient accuracy are thus critical factors that can be improved by new sensing/processing technologies. Objectives: We aim to develop a portable and affordable system, suitable for home re-habilitation, which combines vision-based and wearable sensors. We introduce a novel approach for examining and characterizing the rehabilitation movements, using quantitative descriptors. We propose new Movement Performance Indicators (MPIs) that are extracted directly from sensor data and quantify the symmetry, velocity, and acceleration of the movement of different body/hand parts, and that can potentially be used by therapists for diagnosis and progress assessment. Methods: First, a set of rehabilitation exercises is defined, with the supervision of neurologists and therapists for the specific case of Parkinson's disease. It comprises full-body movements measured with a Kinect device and fine hand movements, acquired with a data glove. Then, the sensor data is used to compute 25 Movement Performance Indicators, to assist the diagnosis and progress monitoring (assessing the disease stage) in Parkinson's disease. A kinematic hand model is developed for data verification and as an additional resource for extracting supplementary movement information. Results: Our results show that the proposed Movement Performance Indicators are relevant for the Parkinson's disease assessment. This is further confirmed by correlation of the proposed indicators with clinical tapping test and UPDRS clinical scale. Classification results showed the potential of these indicators to discriminate between the patients and controls, as well as between the stages that characterize the evolution of the disease. Conclusions: The proposed sensor system, along with the developed approach for rehabilitation movement analysis have a significant potential to support and advance traditional rehabilitation therapy. The main impact of our work is two-fold: (i) the proposition of an approach for supporting the therapists during the diagnosis and monitoring evaluations by reducing subjectivity and imprecision, and (ii) offering the possibility of the system to be used at home for rehabilitation exercises in between sessions with doctors and therapists.",
publisher = "Georg Thieme Verlag Kg, Stuttgart",
journal = "Methods of Information in Medicine",
title = "Combined Vision and Wearable Sensors-based System for Movement Analysis in Rehabilitation",
pages = "111-95",
number = "2",
volume = "56",
doi = "10.3414/ME16-02-0013",
url = "conv_3991"
}
Spasojević, S., Ilić, T. V., Milanović, S., Potkonjak, V., Rodić, A.,& Santos-Victor, J.. (2017). Combined Vision and Wearable Sensors-based System for Movement Analysis in Rehabilitation. in Methods of Information in Medicine
Georg Thieme Verlag Kg, Stuttgart., 56(2), 95-111.
https://doi.org/10.3414/ME16-02-0013
conv_3991
Spasojević S, Ilić TV, Milanović S, Potkonjak V, Rodić A, Santos-Victor J. Combined Vision and Wearable Sensors-based System for Movement Analysis in Rehabilitation. in Methods of Information in Medicine. 2017;56(2):95-111.
doi:10.3414/ME16-02-0013
conv_3991 .
Spasojević, Sofija, Ilić, Tihomir V., Milanović, Slađan, Potkonjak, Veljko, Rodić, Aleksandar, Santos-Victor, Jose, "Combined Vision and Wearable Sensors-based System for Movement Analysis in Rehabilitation" in Methods of Information in Medicine, 56, no. 2 (2017):95-111,
https://doi.org/10.3414/ME16-02-0013 .,
conv_3991 .

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