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Gait Analysis with Wearables Can Accurately Classify Fallers from Non-Fallers
- Source :
- Sensors, Sensors (Basel, Switzerland), Sensors, Vol 20, Iss 6992, p 6992 (2020), Volume 20, Issue 23, MDPI: Sensor, 20(23):6992, 1-18. MDPI AG
- Publication Year :
- 2020
-
Abstract
- Falls are the leading cause of mortality, morbidity and poor quality of life in older adults with or without neurological conditions. Applying machine learning (ML) models to gait analysis outcomes offers the opportunity to identify individuals at risk of future falls. The aim of this study was to determine the effect of different data pre-processing methods on the performance of ML models to classify neurological patients who have fallen from those who have not for future fall risk assessment. Gait was assessed using wearables in clinic while walking 20 m at a self-selected comfortable pace in 349 (159 fallers, 190 non-fallers) neurological patients. Six different ML models were trained on data pre-processed with three techniques such as standardisation, principal component analysis (PCA) and path signature method. Fallers walked more slowly, with shorter strides and longer stride duration compared to non-fallers. Overall, model accuracy ranged between 48% and 98% with 43&ndash<br />99% sensitivity and 48&ndash<br />98% specificity. A random forest (RF) classifier trained on data pre-processed with the path signature method gave optimal classification accuracy of 98% with 99% sensitivity and 98% specificity. Data pre-processing directly influences the accuracy of ML models for the accurate classification of fallers. Using gait analysis with trained ML models can act as a tool for the proactive assessment of fall risk and support clinical decision-making.
- Subjects :
- Male
medicine.medical_specialty
fall
neurological disorders
STRIDE
Wearable computer
Walking
lcsh:Chemical technology
gait
Biochemistry
Article
Poor quality
Analytical Chemistry
Wearable Electronic Devices
03 medical and health sciences
0302 clinical medicine
Physical medicine and rehabilitation
path signature
Humans
Medicine
lcsh:TP1-1185
030212 general & internal medicine
Electrical and Electronic Engineering
Instrumentation
fall risk assessment
Aged
Fall risk assessment
business.industry
inertial measurement unit
Fall risk
Atomic and Molecular Physics, and Optics
Random forest
machine learning
wearables
classification
Gait analysis
Quality of Life
Accidental Falls
Female
Nervous System Diseases
Gait Analysis
business
human activities
030217 neurology & neurosurgery
data pre-processing
Subjects
Details
- Language :
- English
- ISSN :
- 14248220
- Volume :
- 20
- Issue :
- 23
- Database :
- OpenAIRE
- Journal :
- MDPI: Sensor
- Accession number :
- edsair.doi.dedup.....fcb2a5c462adbdc8ff48aeaff14f90d0