Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait Training

Technologies such as robot-assisted gait trainers or functional electrical stimulation can improve the rehabilitation process of people affected with gait disorders due to stroke or other neurological defects. By combining both technologies, the potential disadvantages of each technology could be co...

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Main Authors: Andreas Schicketmueller, Georg Rose, Marc Hofmann
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Sensors
Subjects:
fes
imu
Online Access:https://www.mdpi.com/1424-8220/19/21/4804
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spelling doaj-f2dc40e5dee348a39bae95e9da24f71c2020-11-25T01:15:37ZengMDPI AGSensors1424-82202019-11-011921480410.3390/s19214804s19214804Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait TrainingAndreas Schicketmueller0Georg Rose1Marc Hofmann2HASOMED GmbH, Paul-Ecke-Str. 1, Magdeburg 39114, GermanyInstitute for Medical Engineering and Research Campus STIMULATE, University of Magdeburg Universitaetsplatz 2, Magdeburg 39106, GermanyHASOMED GmbH, Paul-Ecke-Str. 1, Magdeburg 39114, GermanyTechnologies such as robot-assisted gait trainers or functional electrical stimulation can improve the rehabilitation process of people affected with gait disorders due to stroke or other neurological defects. By combining both technologies, the potential disadvantages of each technology could be compensated and simultaneously, therapy effects could be improved. Thus, an algorithm was designed that aims to detect the gait cycle of a robot-assisted gait trainer. Based on movement data recorded with inertial measurement units, gait events can be detected. These events can further be used to trigger functional electrical stimulation. This novel setup offers the possibility of equipping a broad range of potential robot-assisted gait trainers with functional electrical stimulation. The aim of this paper in particular was to test the feasibility of a system using inertial measurement units for gait event detection during robot-assisted gait training. Thus, a 39-year-old healthy male adult executed a total of six training sessions with two robot-assisted gait trainers (Lokomat and Lyra). The measured data from the sensors were analyzed by a custom-made gait event detection algorithm. An overall detection rate of 98.1% ± 5.2% for the Lokomat and 94.1% ± 6.8% for the Lyra was achieved. The mean type-1 error was 0.3% ± 1.2% for the Lokomat and 1.9% ± 4.3% for the Lyra. As a result, the setup provides promising results for further research and a technique that can enhance robot-assisted gait trainers by adding functional electrical stimulation to the rehabilitation process.https://www.mdpi.com/1424-8220/19/21/4804fesimugait event detectionalgorithmhybrid robotic rehabilitation system
collection DOAJ
language English
format Article
sources DOAJ
author Andreas Schicketmueller
Georg Rose
Marc Hofmann
spellingShingle Andreas Schicketmueller
Georg Rose
Marc Hofmann
Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait Training
Sensors
fes
imu
gait event detection
algorithm
hybrid robotic rehabilitation system
author_facet Andreas Schicketmueller
Georg Rose
Marc Hofmann
author_sort Andreas Schicketmueller
title Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait Training
title_short Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait Training
title_full Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait Training
title_fullStr Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait Training
title_full_unstemmed Feasibility of a Sensor-Based Gait Event Detection Algorithm for Triggering Functional Electrical Stimulation during Robot-Assisted Gait Training
title_sort feasibility of a sensor-based gait event detection algorithm for triggering functional electrical stimulation during robot-assisted gait training
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-11-01
description Technologies such as robot-assisted gait trainers or functional electrical stimulation can improve the rehabilitation process of people affected with gait disorders due to stroke or other neurological defects. By combining both technologies, the potential disadvantages of each technology could be compensated and simultaneously, therapy effects could be improved. Thus, an algorithm was designed that aims to detect the gait cycle of a robot-assisted gait trainer. Based on movement data recorded with inertial measurement units, gait events can be detected. These events can further be used to trigger functional electrical stimulation. This novel setup offers the possibility of equipping a broad range of potential robot-assisted gait trainers with functional electrical stimulation. The aim of this paper in particular was to test the feasibility of a system using inertial measurement units for gait event detection during robot-assisted gait training. Thus, a 39-year-old healthy male adult executed a total of six training sessions with two robot-assisted gait trainers (Lokomat and Lyra). The measured data from the sensors were analyzed by a custom-made gait event detection algorithm. An overall detection rate of 98.1% ± 5.2% for the Lokomat and 94.1% ± 6.8% for the Lyra was achieved. The mean type-1 error was 0.3% ± 1.2% for the Lokomat and 1.9% ± 4.3% for the Lyra. As a result, the setup provides promising results for further research and a technique that can enhance robot-assisted gait trainers by adding functional electrical stimulation to the rehabilitation process.
topic fes
imu
gait event detection
algorithm
hybrid robotic rehabilitation system
url https://www.mdpi.com/1424-8220/19/21/4804
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AT marchofmann feasibilityofasensorbasedgaiteventdetectionalgorithmfortriggeringfunctionalelectricalstimulationduringrobotassistedgaittraining
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