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Characterizing Normal and Pathological Gait through Permutation Entropy

Authors :
Estrella Rausell
J. López-López
Irene Pulido-Valdeolivas
Massimiliano Zanin
David Gómez-Andrés
Samuel I. Pascual-Pascual
Juan Andrés Martín-Gonzalo
Source :
Entropy, Entropy; Volume 20; Issue 1; Pages: 77, Dipòsit Digital de Documents de la UAB, Universitat Autònoma de Barcelona, Entropy, Vol 20, Iss 1, p 77 (2018)
Publication Year :
2018
Publisher :
MDPI, 2018.

Abstract

Altres ajuts: We acknowledge the contribution of the children and their families who generously collaborated to build the gait dataset used in this study. We are also grateful to Michael R. Paul for kindly editing the English style of this manuscript. The acquisition and processing of gait data were funded by Escuela de Fisioterapia de la ONCE-UAM, through a private donation, and Agencia de Evaluación de Tecnologías Sanitarias (Instituto de Salud Carlos III), . Cerebral palsy is a physical impairment stemming from a brain lesion at perinatal time, most of the time resulting in gait abnormalities: the first cause of severe disability in childhood. Gait study, and instrumental gait analysis in particular, has been receiving increasing attention in the last few years, for being the complex result of the interactions between different brain motor areas and thus a proxy in the understanding of the underlying neural dynamics. Yet, and in spite of its importance, little is still known about how the brain adapts to cerebral palsy and to its impaired gait and, consequently, about the best strategies for mitigating the disability. In this contribution, we present the hitherto first analysis of joint kinematics data using permutation entropy, comparing cerebral palsy children with a set of matched control subjects. We find a significant increase in the permutation entropy for the former group, thus indicating a more complex and erratic neural control of joints and a non-trivial relationship between the permutation entropy and the gait speed. We further show how this information theory measure can be used to train a data mining model able to forecast the child's condition. We finally discuss the relevance of these results in clinical applications and specifically in the design of personalized medicine interventions.

Details

Language :
English
ISSN :
10994300
Volume :
20
Issue :
1
Database :
OpenAIRE
Journal :
Entropy
Accession number :
edsair.doi.dedup.....40a924a18646be678f8889cdc426a1b4