Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU Sensors

Quantitative assessments of patient movement quality in osteoarthritis (OA), specifically spatiotemporal gait parameters (STGPs), can provide in-depth insight into gait patterns, activity types, and changes in mobility after total knee arthroplasty (TKA). A study was conducted to benchmark the abili...

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Main Authors: Mohsen Sharifi Renani, Casey A. Myers, Rohola Zandie, Mohammad H. Mahoor, Bradley S. Davidson, Chadd W. Clary
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/19/5553
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spelling doaj-a3bfdc6898044eed8521d95ead0a09d02020-11-25T01:38:56ZengMDPI AGSensors1424-82202020-09-01205553555310.3390/s20195553Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU SensorsMohsen Sharifi Renani0Casey A. Myers1Rohola Zandie2Mohammad H. Mahoor3Bradley S. Davidson4Chadd W. Clary5Center for Orthopaedic Biomechanics, University of Denver, Denver, CO 80208, USACenter for Orthopaedic Biomechanics, University of Denver, Denver, CO 80208, USACenter for Orthopaedic Biomechanics, University of Denver, Denver, CO 80208, USACenter for Orthopaedic Biomechanics, University of Denver, Denver, CO 80208, USACenter for Orthopaedic Biomechanics, University of Denver, Denver, CO 80208, USACenter for Orthopaedic Biomechanics, University of Denver, Denver, CO 80208, USAQuantitative assessments of patient movement quality in osteoarthritis (OA), specifically spatiotemporal gait parameters (STGPs), can provide in-depth insight into gait patterns, activity types, and changes in mobility after total knee arthroplasty (TKA). A study was conducted to benchmark the ability of multiple deep neural network (DNN) architectures to predict 12 STGPs from inertial measurement unit (IMU) data and to identify an optimal sensor combination, which has yet to be studied for OA and TKA subjects. DNNs were trained using movement data from 29 subjects, walking at slow, normal, and fast paces and evaluated with cross-fold validation over the subjects. Optimal sensor locations were determined by comparing prediction accuracy with 15 IMU configurations (pelvis, thigh, shank, and feet). Percent error across the 12 STGPs ranged from 2.1% (stride time) to 73.7% (toe-out angle) and overall was more accurate in temporal parameters than spatial parameters. The most and least accurate sensor combinations were feet-thighs and singular pelvis, respectively. DNNs showed promising results in predicting STGPs for OA and TKA subjects based on signals from IMU sensors and overcomes the dependency on sensor locations that can hinder the design of patient monitoring systems for clinical application.https://www.mdpi.com/1424-8220/20/19/5553deep learningconvolutional neural networkgait analysistotal knee arthroplastywearable sensors
collection DOAJ
language English
format Article
sources DOAJ
author Mohsen Sharifi Renani
Casey A. Myers
Rohola Zandie
Mohammad H. Mahoor
Bradley S. Davidson
Chadd W. Clary
spellingShingle Mohsen Sharifi Renani
Casey A. Myers
Rohola Zandie
Mohammad H. Mahoor
Bradley S. Davidson
Chadd W. Clary
Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU Sensors
Sensors
deep learning
convolutional neural network
gait analysis
total knee arthroplasty
wearable sensors
author_facet Mohsen Sharifi Renani
Casey A. Myers
Rohola Zandie
Mohammad H. Mahoor
Bradley S. Davidson
Chadd W. Clary
author_sort Mohsen Sharifi Renani
title Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU Sensors
title_short Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU Sensors
title_full Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU Sensors
title_fullStr Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU Sensors
title_full_unstemmed Deep Learning in Gait Parameter Prediction for OA and TKA Patients Wearing IMU Sensors
title_sort deep learning in gait parameter prediction for oa and tka patients wearing imu sensors
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-09-01
description Quantitative assessments of patient movement quality in osteoarthritis (OA), specifically spatiotemporal gait parameters (STGPs), can provide in-depth insight into gait patterns, activity types, and changes in mobility after total knee arthroplasty (TKA). A study was conducted to benchmark the ability of multiple deep neural network (DNN) architectures to predict 12 STGPs from inertial measurement unit (IMU) data and to identify an optimal sensor combination, which has yet to be studied for OA and TKA subjects. DNNs were trained using movement data from 29 subjects, walking at slow, normal, and fast paces and evaluated with cross-fold validation over the subjects. Optimal sensor locations were determined by comparing prediction accuracy with 15 IMU configurations (pelvis, thigh, shank, and feet). Percent error across the 12 STGPs ranged from 2.1% (stride time) to 73.7% (toe-out angle) and overall was more accurate in temporal parameters than spatial parameters. The most and least accurate sensor combinations were feet-thighs and singular pelvis, respectively. DNNs showed promising results in predicting STGPs for OA and TKA subjects based on signals from IMU sensors and overcomes the dependency on sensor locations that can hinder the design of patient monitoring systems for clinical application.
topic deep learning
convolutional neural network
gait analysis
total knee arthroplasty
wearable sensors
url https://www.mdpi.com/1424-8220/20/19/5553
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