A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMU
Hip osteoarthritis patients exhibit changes in kinematics and kinetics that affect joint loading. Monitoring this load can provide valuable information to clinicians. For example, a patient's joint loading measured across different activities can be used to determine the amount of exercise that...
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doaj-2769e2023fd14e30a35fc1c39d69e6822020-11-25T03:08:28ZengFrontiers Media S.A.Frontiers in Bioengineering and Biotechnology2296-41852020-04-01810.3389/fbioe.2020.00320509363A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMUArne De Brabandere0Jill Emmerzaal1Jill Emmerzaal2Annick Timmermans3Ilse Jonkers4Benedicte Vanwanseele5Jesse Davis6Department of Computer Science, KU Leuven, Leuven, BelgiumDepartment of Movement Sciences, KU Leuven, Leuven, BelgiumFaculty of Rehabilitation Sciences, Hasselt University, Hasselt, BelgiumFaculty of Rehabilitation Sciences, Hasselt University, Hasselt, BelgiumDepartment of Movement Sciences, KU Leuven, Leuven, BelgiumDepartment of Movement Sciences, KU Leuven, Leuven, BelgiumDepartment of Computer Science, KU Leuven, Leuven, BelgiumHip osteoarthritis patients exhibit changes in kinematics and kinetics that affect joint loading. Monitoring this load can provide valuable information to clinicians. For example, a patient's joint loading measured across different activities can be used to determine the amount of exercise that the patient needs to complete each day. Unfortunately, current methods for measuring joint loading require a lab environment which most clinicians do not have access to. This study explores employing machine learning to construct a model that can estimate joint loading based on sensor data obtained solely from a mobile phone. In order to learn such a model, we collected a dataset from 10 patients with hip osteoarthritis who performed multiple repetitions of nine different exercises. During each repetition, we simultaneously recorded 3D motion capture data, ground reaction force data, and the inertial measurement unit data from a mobile phone attached to the patient's hip. The 3D motion and ground reaction force data were used to compute the ground truth joint loading using musculoskeletal modeling. Our goal is to estimate the ground truth loading value using only the data captured by the sensors of the mobile phone. We propose a machine learning pipeline for learning such a model based on the recordings of a phone's accelerometer and gyroscope. When evaluated for an unseen patient, the proposed pipeline achieves a mean absolute error of 29% for the left hip and 36% for the right hip. While our approach is a step in the direction of using a minimal number of sensors to estimate joint loading outside the lab, developing a tool that is accurate enough to be applicable in a clinical context still remains an open challenge. It may be necessary to use sensors at more than one location in order to obtain better estimates.https://www.frontiersin.org/article/10.3389/fbioe.2020.00320/fullmachine learninginertial measurement unitsjoint loadingpatient monitoringhip osteoarthrithis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Arne De Brabandere Jill Emmerzaal Jill Emmerzaal Annick Timmermans Ilse Jonkers Benedicte Vanwanseele Jesse Davis |
spellingShingle |
Arne De Brabandere Jill Emmerzaal Jill Emmerzaal Annick Timmermans Ilse Jonkers Benedicte Vanwanseele Jesse Davis A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMU Frontiers in Bioengineering and Biotechnology machine learning inertial measurement units joint loading patient monitoring hip osteoarthrithis |
author_facet |
Arne De Brabandere Jill Emmerzaal Jill Emmerzaal Annick Timmermans Ilse Jonkers Benedicte Vanwanseele Jesse Davis |
author_sort |
Arne De Brabandere |
title |
A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMU |
title_short |
A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMU |
title_full |
A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMU |
title_fullStr |
A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMU |
title_full_unstemmed |
A Machine Learning Approach to Estimate Hip and Knee Joint Loading Using a Mobile Phone-Embedded IMU |
title_sort |
machine learning approach to estimate hip and knee joint loading using a mobile phone-embedded imu |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Bioengineering and Biotechnology |
issn |
2296-4185 |
publishDate |
2020-04-01 |
description |
Hip osteoarthritis patients exhibit changes in kinematics and kinetics that affect joint loading. Monitoring this load can provide valuable information to clinicians. For example, a patient's joint loading measured across different activities can be used to determine the amount of exercise that the patient needs to complete each day. Unfortunately, current methods for measuring joint loading require a lab environment which most clinicians do not have access to. This study explores employing machine learning to construct a model that can estimate joint loading based on sensor data obtained solely from a mobile phone. In order to learn such a model, we collected a dataset from 10 patients with hip osteoarthritis who performed multiple repetitions of nine different exercises. During each repetition, we simultaneously recorded 3D motion capture data, ground reaction force data, and the inertial measurement unit data from a mobile phone attached to the patient's hip. The 3D motion and ground reaction force data were used to compute the ground truth joint loading using musculoskeletal modeling. Our goal is to estimate the ground truth loading value using only the data captured by the sensors of the mobile phone. We propose a machine learning pipeline for learning such a model based on the recordings of a phone's accelerometer and gyroscope. When evaluated for an unseen patient, the proposed pipeline achieves a mean absolute error of 29% for the left hip and 36% for the right hip. While our approach is a step in the direction of using a minimal number of sensors to estimate joint loading outside the lab, developing a tool that is accurate enough to be applicable in a clinical context still remains an open challenge. It may be necessary to use sensors at more than one location in order to obtain better estimates. |
topic |
machine learning inertial measurement units joint loading patient monitoring hip osteoarthrithis |
url |
https://www.frontiersin.org/article/10.3389/fbioe.2020.00320/full |
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