Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home People
Assessing the risk of fall in elderly people is a difficult challenge for clinicians. Since falls represent one of the first causes of death in such people, numerous clinical tests have been created and validated over the past 30 years to ascertain the risk of falls. More recently, the developments...
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doaj-f07492af7ecd40c6a485cfc1f80151262020-11-25T02:27:06ZengMDPI AGSensors1424-82202020-06-01203207320710.3390/s20113207Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home PeopleFabien Buisseret0Louis Catinus1Rémi Grenard2Laurent Jojczyk3Dylan Fievez4Vincent Barvaux5Frédéric Dierick6Centre de Recherche et de Formation (CeREF), Chaussée de Binche 159, 7000 Mons, BelgiumCentre de Recherche et de Formation (CeREF), Chaussée de Binche 159, 7000 Mons, BelgiumCentre de Recherche et de Formation (CeREF), Chaussée de Binche 159, 7000 Mons, BelgiumCentre de Recherche et de Formation (CeREF), Chaussée de Binche 159, 7000 Mons, BelgiumCentre de Recherche et de Formation (CeREF), Chaussée de Binche 159, 7000 Mons, BelgiumCentre de Recherche et de Formation (CeREF), Chaussée de Binche 159, 7000 Mons, BelgiumCentre de Recherche et de Formation (CeREF), Chaussée de Binche 159, 7000 Mons, BelgiumAssessing the risk of fall in elderly people is a difficult challenge for clinicians. Since falls represent one of the first causes of death in such people, numerous clinical tests have been created and validated over the past 30 years to ascertain the risk of falls. More recently, the developments of low-cost motion capture sensors have facilitated observations of gait differences between fallers and nonfallers. The aim of this study is twofold. First, to design a method combining clinical tests and motion capture sensors in order to optimize the prediction of the risk of fall. Second to assess the ability of artificial intelligence to predict risk of fall from sensor raw data only. Seventy-three nursing home residents over the age of 65 underwent the Timed Up and Go (TUG) and six-minute walking tests equipped with a home-designed wearable Inertial Measurement Unit during two sets of measurements at a six-month interval. Observed falls during that interval enabled us to divide residents into two categories: fallers and nonfallers. We show that the TUG test results coupled to gait variability indicators, measured during a six-minute walking test, improve (from 68% to 76%) the accuracy of risk of fall’s prediction at six months. In addition, we show that an artificial intelligence algorithm trained on the sensor raw data of 57 participants reveals an accuracy of 75% on the remaining 16 participants.https://www.mdpi.com/1424-8220/20/11/3207risk of fallelderlywearable sensorgait variabilityclinical tests |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Fabien Buisseret Louis Catinus Rémi Grenard Laurent Jojczyk Dylan Fievez Vincent Barvaux Frédéric Dierick |
spellingShingle |
Fabien Buisseret Louis Catinus Rémi Grenard Laurent Jojczyk Dylan Fievez Vincent Barvaux Frédéric Dierick Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home People Sensors risk of fall elderly wearable sensor gait variability clinical tests |
author_facet |
Fabien Buisseret Louis Catinus Rémi Grenard Laurent Jojczyk Dylan Fievez Vincent Barvaux Frédéric Dierick |
author_sort |
Fabien Buisseret |
title |
Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home People |
title_short |
Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home People |
title_full |
Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home People |
title_fullStr |
Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home People |
title_full_unstemmed |
Timed Up and Go and Six-Minute Walking Tests with Wearable Inertial Sensor: One Step Further for the Prediction of the Risk of Fall in Elderly Nursing Home People |
title_sort |
timed up and go and six-minute walking tests with wearable inertial sensor: one step further for the prediction of the risk of fall in elderly nursing home people |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2020-06-01 |
description |
Assessing the risk of fall in elderly people is a difficult challenge for clinicians. Since falls represent one of the first causes of death in such people, numerous clinical tests have been created and validated over the past 30 years to ascertain the risk of falls. More recently, the developments of low-cost motion capture sensors have facilitated observations of gait differences between fallers and nonfallers. The aim of this study is twofold. First, to design a method combining clinical tests and motion capture sensors in order to optimize the prediction of the risk of fall. Second to assess the ability of artificial intelligence to predict risk of fall from sensor raw data only. Seventy-three nursing home residents over the age of 65 underwent the Timed Up and Go (TUG) and six-minute walking tests equipped with a home-designed wearable Inertial Measurement Unit during two sets of measurements at a six-month interval. Observed falls during that interval enabled us to divide residents into two categories: fallers and nonfallers. We show that the TUG test results coupled to gait variability indicators, measured during a six-minute walking test, improve (from 68% to 76%) the accuracy of risk of fall’s prediction at six months. In addition, we show that an artificial intelligence algorithm trained on the sensor raw data of 57 participants reveals an accuracy of 75% on the remaining 16 participants. |
topic |
risk of fall elderly wearable sensor gait variability clinical tests |
url |
https://www.mdpi.com/1424-8220/20/11/3207 |
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