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Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision

BACKGROUND: Sensor-based recordings of human movements are becoming increasingly important for the assessment of motor symptoms in neurological disorders beyond rehabilitative purposes. ASSESS MS is a movement recording and analysis system being developed to automate the classification of motor dysf...

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Autores principales: Morrison, Cecily, D'Souza, Marcus, Huckvale, Kit, Dorn, Jonas F, Burggraaff, Jessica, Kamm, Christian Philipp, Steinheimer, Saskia Marie, Kontschieder, Peter, Criminisi, Antonio, Uitdehaag, Bernard, Dahlke, Frank, Kappos, Ludwig, Sellen, Abigail
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Gunther Eysenbach 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4797664/
https://www.ncbi.nlm.nih.gov/pubmed/27025782
http://dx.doi.org/10.2196/humanfactors.4129
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author Morrison, Cecily
D'Souza, Marcus
Huckvale, Kit
Dorn, Jonas F
Burggraaff, Jessica
Kamm, Christian Philipp
Steinheimer, Saskia Marie
Kontschieder, Peter
Criminisi, Antonio
Uitdehaag, Bernard
Dahlke, Frank
Kappos, Ludwig
Sellen, Abigail
author_facet Morrison, Cecily
D'Souza, Marcus
Huckvale, Kit
Dorn, Jonas F
Burggraaff, Jessica
Kamm, Christian Philipp
Steinheimer, Saskia Marie
Kontschieder, Peter
Criminisi, Antonio
Uitdehaag, Bernard
Dahlke, Frank
Kappos, Ludwig
Sellen, Abigail
author_sort Morrison, Cecily
collection PubMed
description BACKGROUND: Sensor-based recordings of human movements are becoming increasingly important for the assessment of motor symptoms in neurological disorders beyond rehabilitative purposes. ASSESS MS is a movement recording and analysis system being developed to automate the classification of motor dysfunction in patients with multiple sclerosis (MS) using depth-sensing computer vision. It aims to provide a more consistent and finer-grained measurement of motor dysfunction than currently possible. OBJECTIVE: To test the usability and acceptability of ASSESS MS with health professionals and patients with MS. METHODS: A prospective, mixed-methods study was carried out at 3 centers. After a 1-hour training session, a convenience sample of 12 health professionals (6 neurologists and 6 nurses) used ASSESS MS to capture recordings of standardized movements performed by 51 volunteer patients. Metrics for effectiveness, efficiency, and acceptability were defined and used to analyze data captured by ASSESS MS, video recordings of each examination, feedback questionnaires, and follow-up interviews. RESULTS: All health professionals were able to complete recordings using ASSESS MS, achieving high levels of standardization on 3 of 4 metrics (movement performance, lateral positioning, and clear camera view but not distance positioning). Results were unaffected by patients’ level of physical or cognitive disability. ASSESS MS was perceived as easy to use by both patients and health professionals with high scores on the Likert-scale questions and positive interview commentary. ASSESS MS was highly acceptable to patients on all dimensions considered, including attitudes to future use, interaction (with health professionals), and overall perceptions of ASSESS MS. Health professionals also accepted ASSESS MS, but with greater ambivalence arising from the need to alter patient interaction styles. There was little variation in results across participating centers, and no differences between neurologists and nurses. CONCLUSIONS: In typical clinical settings, ASSESS MS is usable and acceptable to both patients and health professionals, generating data of a quality suitable for clinical analysis. An iterative design process appears to have been successful in accounting for factors that permit ASSESS MS to be used by a range of health professionals in new settings with minimal training. The study shows the potential of shifting ubiquitous sensing technologies from research into the clinic through a design approach that gives appropriate attention to the clinic environment.
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spelling pubmed-47976642016-03-23 Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision Morrison, Cecily D'Souza, Marcus Huckvale, Kit Dorn, Jonas F Burggraaff, Jessica Kamm, Christian Philipp Steinheimer, Saskia Marie Kontschieder, Peter Criminisi, Antonio Uitdehaag, Bernard Dahlke, Frank Kappos, Ludwig Sellen, Abigail JMIR Hum Factors Original Paper BACKGROUND: Sensor-based recordings of human movements are becoming increasingly important for the assessment of motor symptoms in neurological disorders beyond rehabilitative purposes. ASSESS MS is a movement recording and analysis system being developed to automate the classification of motor dysfunction in patients with multiple sclerosis (MS) using depth-sensing computer vision. It aims to provide a more consistent and finer-grained measurement of motor dysfunction than currently possible. OBJECTIVE: To test the usability and acceptability of ASSESS MS with health professionals and patients with MS. METHODS: A prospective, mixed-methods study was carried out at 3 centers. After a 1-hour training session, a convenience sample of 12 health professionals (6 neurologists and 6 nurses) used ASSESS MS to capture recordings of standardized movements performed by 51 volunteer patients. Metrics for effectiveness, efficiency, and acceptability were defined and used to analyze data captured by ASSESS MS, video recordings of each examination, feedback questionnaires, and follow-up interviews. RESULTS: All health professionals were able to complete recordings using ASSESS MS, achieving high levels of standardization on 3 of 4 metrics (movement performance, lateral positioning, and clear camera view but not distance positioning). Results were unaffected by patients’ level of physical or cognitive disability. ASSESS MS was perceived as easy to use by both patients and health professionals with high scores on the Likert-scale questions and positive interview commentary. ASSESS MS was highly acceptable to patients on all dimensions considered, including attitudes to future use, interaction (with health professionals), and overall perceptions of ASSESS MS. Health professionals also accepted ASSESS MS, but with greater ambivalence arising from the need to alter patient interaction styles. There was little variation in results across participating centers, and no differences between neurologists and nurses. CONCLUSIONS: In typical clinical settings, ASSESS MS is usable and acceptable to both patients and health professionals, generating data of a quality suitable for clinical analysis. An iterative design process appears to have been successful in accounting for factors that permit ASSESS MS to be used by a range of health professionals in new settings with minimal training. The study shows the potential of shifting ubiquitous sensing technologies from research into the clinic through a design approach that gives appropriate attention to the clinic environment. Gunther Eysenbach 2015-06-24 /pmc/articles/PMC4797664/ /pubmed/27025782 http://dx.doi.org/10.2196/humanfactors.4129 Text en ©Cecily Morrison, Marcus D'Souza, Kit Huckvale, Jonas F Dorn, Jessica Burggraaff, Christian Philipp Kamm, Saskia Marie Steinheimer, Peter Kontschieder, Antonio Criminisi, Bernard Uitdehaag, Frank Dahlke, Ludwig Kappos, Abigail Sellen. Originally published in JMIR Human Factors (http://humanfactors.jmir.org), 24.06.2015. https://creativecommons.org/licenses/by/2.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0/ (https://creativecommons.org/licenses/by/2.0/) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Human Factors, is properly cited. The complete bibliographic information, a link to the original publication on http://humanfactors.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Morrison, Cecily
D'Souza, Marcus
Huckvale, Kit
Dorn, Jonas F
Burggraaff, Jessica
Kamm, Christian Philipp
Steinheimer, Saskia Marie
Kontschieder, Peter
Criminisi, Antonio
Uitdehaag, Bernard
Dahlke, Frank
Kappos, Ludwig
Sellen, Abigail
Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision
title Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision
title_full Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision
title_fullStr Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision
title_full_unstemmed Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision
title_short Usability and Acceptability of ASSESS MS: Assessment of Motor Dysfunction in Multiple Sclerosis Using Depth-Sensing Computer Vision
title_sort usability and acceptability of assess ms: assessment of motor dysfunction in multiple sclerosis using depth-sensing computer vision
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4797664/
https://www.ncbi.nlm.nih.gov/pubmed/27025782
http://dx.doi.org/10.2196/humanfactors.4129
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