Cargando…

Development of an algorithm to predict comfort of wheelchair fit based on clinical measures

[Purpose] The purpose of this study was to develop an algorithm to predict the comfort of a subject seated in a wheelchair, based on common clinical measurements and without depending on verbal communication. [Subjects] Twenty healthy males (mean age: 21.5 ± 2 years; height: 171 ± 4.3 cm; weight: 56...

Descripción completa

Detalles Bibliográficos
Autores principales: Kon, Keisuke, Hayakawa, Yasuyuki, Shimizu, Shingo, Nosaka, Toshiya, Tsuruga, Takeshi, Matsubara, Hiroyuki, Nomura, Tomohiro, Murahara, Shin, Haruna, Hirokazu, Ino, Takumi, Inagaki, Jun, Kobayashi, Toshiki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Society of Physical Therapy Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4616100/
https://www.ncbi.nlm.nih.gov/pubmed/26504299
http://dx.doi.org/10.1589/jpts.27.2813
_version_ 1782396567107403776
author Kon, Keisuke
Hayakawa, Yasuyuki
Shimizu, Shingo
Nosaka, Toshiya
Tsuruga, Takeshi
Matsubara, Hiroyuki
Nomura, Tomohiro
Murahara, Shin
Haruna, Hirokazu
Ino, Takumi
Inagaki, Jun
Kobayashi, Toshiki
author_facet Kon, Keisuke
Hayakawa, Yasuyuki
Shimizu, Shingo
Nosaka, Toshiya
Tsuruga, Takeshi
Matsubara, Hiroyuki
Nomura, Tomohiro
Murahara, Shin
Haruna, Hirokazu
Ino, Takumi
Inagaki, Jun
Kobayashi, Toshiki
author_sort Kon, Keisuke
collection PubMed
description [Purpose] The purpose of this study was to develop an algorithm to predict the comfort of a subject seated in a wheelchair, based on common clinical measurements and without depending on verbal communication. [Subjects] Twenty healthy males (mean age: 21.5 ± 2 years; height: 171 ± 4.3 cm; weight: 56 ± 12.3 kg) participated in this study. [Methods] Each experimental session lasted for 60 min. The clinical measurements were obtained under 4 conditions (good posture, with and without a cushion; bad posture, with and without a cushion). Multiple regression analysis was performed to determine the relationship between a visual analogue scale and exercise physiology parameters (respiratory and metabolism), autonomic nervous parameters (heart rate, blood pressure, and salivary amylase level), and 3D-coordinate posture parameters (good or bad posture). [Results] For the equation (algorithm) to predict the visual analogue scale score, the adjusted multiple correlation coefficient was 0.72, the residual standard deviation was 1.2, and the prediction error was 12%. [Conclusion] The algorithm developed in this study could predict the comfort of healthy male seated in a wheelchair with 72% accuracy.
format Online
Article
Text
id pubmed-4616100
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher The Society of Physical Therapy Science
record_format MEDLINE/PubMed
spelling pubmed-46161002015-10-26 Development of an algorithm to predict comfort of wheelchair fit based on clinical measures Kon, Keisuke Hayakawa, Yasuyuki Shimizu, Shingo Nosaka, Toshiya Tsuruga, Takeshi Matsubara, Hiroyuki Nomura, Tomohiro Murahara, Shin Haruna, Hirokazu Ino, Takumi Inagaki, Jun Kobayashi, Toshiki J Phys Ther Sci Original Article [Purpose] The purpose of this study was to develop an algorithm to predict the comfort of a subject seated in a wheelchair, based on common clinical measurements and without depending on verbal communication. [Subjects] Twenty healthy males (mean age: 21.5 ± 2 years; height: 171 ± 4.3 cm; weight: 56 ± 12.3 kg) participated in this study. [Methods] Each experimental session lasted for 60 min. The clinical measurements were obtained under 4 conditions (good posture, with and without a cushion; bad posture, with and without a cushion). Multiple regression analysis was performed to determine the relationship between a visual analogue scale and exercise physiology parameters (respiratory and metabolism), autonomic nervous parameters (heart rate, blood pressure, and salivary amylase level), and 3D-coordinate posture parameters (good or bad posture). [Results] For the equation (algorithm) to predict the visual analogue scale score, the adjusted multiple correlation coefficient was 0.72, the residual standard deviation was 1.2, and the prediction error was 12%. [Conclusion] The algorithm developed in this study could predict the comfort of healthy male seated in a wheelchair with 72% accuracy. The Society of Physical Therapy Science 2015-09-30 2015-09 /pmc/articles/PMC4616100/ /pubmed/26504299 http://dx.doi.org/10.1589/jpts.27.2813 Text en 2015©by the Society of Physical Therapy Science. Published by IPEC Inc. http://creativecommons.org/licenses/by-nc-nd/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution Non-Commercial No Derivatives (by-nc-nd) License.
spellingShingle Original Article
Kon, Keisuke
Hayakawa, Yasuyuki
Shimizu, Shingo
Nosaka, Toshiya
Tsuruga, Takeshi
Matsubara, Hiroyuki
Nomura, Tomohiro
Murahara, Shin
Haruna, Hirokazu
Ino, Takumi
Inagaki, Jun
Kobayashi, Toshiki
Development of an algorithm to predict comfort of wheelchair fit based on clinical measures
title Development of an algorithm to predict comfort of wheelchair fit based on clinical measures
title_full Development of an algorithm to predict comfort of wheelchair fit based on clinical measures
title_fullStr Development of an algorithm to predict comfort of wheelchair fit based on clinical measures
title_full_unstemmed Development of an algorithm to predict comfort of wheelchair fit based on clinical measures
title_short Development of an algorithm to predict comfort of wheelchair fit based on clinical measures
title_sort development of an algorithm to predict comfort of wheelchair fit based on clinical measures
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4616100/
https://www.ncbi.nlm.nih.gov/pubmed/26504299
http://dx.doi.org/10.1589/jpts.27.2813
work_keys_str_mv AT konkeisuke developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT hayakawayasuyuki developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT shimizushingo developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT nosakatoshiya developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT tsurugatakeshi developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT matsubarahiroyuki developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT nomuratomohiro developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT muraharashin developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT harunahirokazu developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT inotakumi developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT inagakijun developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures
AT kobayashitoshiki developmentofanalgorithmtopredictcomfortofwheelchairfitbasedonclinicalmeasures