Fall risk detection mechanism in the elderly, based on electromyographic signals, through the use of artificial intelligence

No hay miniatura disponible
Fecha
2023
Profesor/a Guía
Facultad/escuela
Idioma
en
Título de la revista
ISSN de la revista
Título del volumen
Editor
Universidad de Murcia
Nombre de Curso
Licencia CC
CC BY-NC-ND 3.0 ES DEED Atribución-NoComercial-SinDerivadas 3.0 España
Licencia CC
https://creativecommons.org/licenses/by-nc-nd/3.0/es/
Resumen
Introduction: The tests used to classify older adults at risk of falls are questioned in literature. Tools from the field of artificial intelligence are an alternative to classify older adults more precisely. Objective: To identify the risk of falls in the elderly through electromyographic signals of the lower limb, using tools from the field of artificial intelligence. Methods: A descriptive study design was used. The unit of analysis was made up of 32 older adults (16 with and 16 without risk of falls). The electrical activity of the lower limb muscles was recorded during the functional walking gesture. The cycles obtained were divided into training and validation sets, and then from the amplitude variable, select attributes using the Weka software. Finally, the Support Vector Machines (SVM) classifier was implemented. Results: A classifier of two classes (elderly adults with and without risk of falls) based on SVM was built, whose performance was: Kappa index 0.97 (almost perfect agreement strength), sensitivity 97%, specificity 100%. Conclusions: The SVM artificial intelligence technique applied to the analysis of lower limb electromyographic signals during walking can be considered a precision tool of diagnostic, monitoring and follow-up for older adults with and without risk of falls. © Copyright 2023: Publication Service of the University of Murcia, Murcia, Spain.
Notas
Indexación: Scopus
Palabras clave
Electromyography, Fall Risk, Gait, Older Adults, Support Vector Machines
Citación
Sport TK. Volume 12. 2023. Article number 5
DOI
10.6018/sportk.575281
Link a Vimeo