1. Online estimation of rollator user condition using spatiotemporal gait parameters
- Author
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Cristina Urdiales, Marina Tirado, Antonio B. Martínez, and Joaquin Ballesteros
- Subjects
0209 industrial biotechnology ,Computer science ,medicine.medical_treatment ,Asistencia sanitaria ,02 engineering and technology ,Clinical scales ,Robot asistivo ,Machine learning ,computer.software_genre ,03 medical and health sciences ,020901 industrial engineering & automation ,0302 clinical medicine ,Gait (human) ,medicine ,Assistive robot ,Simulation ,Balance (ability) ,Rehabilitation ,business.industry ,Tinetti test ,Work (physics) ,Rollator ,Gait ,Test (assessment) ,Caminador ,Artificial intelligence ,Automatic gait analysis ,business ,computer ,030217 neurology & neurosurgery ,Parámetros clínicos - Abstract
Assistance to people during rehabilitation has to be adapted to their needs. Too little help can lead to frustration and stress in the user; an excess of help may lead to low participation and loss of residual skills. Robotic rollators may adapt assistance. The main challenge to cope with this issue is to estimate how much help is needed on the fly, because it depends not only on the person condition, but also on the specific situation that they are negotiating. Clinical scales provide a global condition based estimation, but no local estimator based on punctual needs. Condition also changes in time, so clinical scales need to be recalculated again and again. In this paper we propose a novel approach to estimate users’ condition in a continuous way via a robotic rollator. Our work focuses on predicting the value of the well known Tinetti Mobility test from spatiotemporal gait parameters obtained from our platform while users walk. This prediction provides continuous insight on the condition of the user and could be used to modify the amount of help provided. The proposed method has been validated with 19 volunteers at a local hospital that use a rollator for rehabilitation. All volunteers presented some physical or mental disabilities. Our results sucessfully show a high correlation of spatiotemporal gait parameters with Tinetti Mobility test gait (R2 = 0.7) and Tinetti Mobility test balance (R2 = 0.6). Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech.
- Published
- 2016