Automatic low back pain classification using inertial measurement units: A preliminary analysis
Automatic low back pain classification using inertial measurement units: A preliminary analysis
Low back pain (LBP) is a major health problem that has now become leading cause of disability worldwide. The majority of LBP has no specific pathological cause. Classification of non-specific LBP (NSLBP) into subgroups corresponding to the reported symptoms has been identified as an essential step towards the provision of personalised management and rehabilitation plans. Currently, clinicians classify low back pain patients into clinical subgroups based on clinical judgement and expertise, which is a time-consuming process open to human error. This paper introduces a novel approach for automatic classification of NSLBP patients into clinical subgroups on the basis of the MTw2 inertial measurement unit (MTw2 IMU tracker) motion data, which are portable units and thus desirable for clinical use. Four MTw2 IMU trackers tracking movement during a number of physical assessment tests were investigated in their ability to distinguish between clinically recognized NSLBP subgroups. Simple motion features such as the angular range of displacement were used in classification experiments to reflect how clinicians make decisions when classifying NSLBP. The achieved results were comparable to the state of art results in automatic NSLBP classification using optical motion capture data and demonstrated the feasibility of developing an automatic classification system on the basis of the MTw2 IMU tracker motion data obtained with an individual performing a battery of standard physical assessment tests. Further developments could address gaps in current medical and engineering literature and improve clinical outcomes.
2822-2831
Bacon, Zoe
60d3d4c6-c8b6-427c-ba26-bb0d27528d0d
Hicks, Yulia
968b7124-d8b6-461f-945f-46e98fe88cef
Al-Amri, Mohammad
0b2232da-149d-49cc-8259-030cf1ad88ec
Sheeran, Liba
ad753e79-56c8-483f-aae5-dd992496bee2
2 October 2020
Bacon, Zoe
60d3d4c6-c8b6-427c-ba26-bb0d27528d0d
Hicks, Yulia
968b7124-d8b6-461f-945f-46e98fe88cef
Al-Amri, Mohammad
0b2232da-149d-49cc-8259-030cf1ad88ec
Sheeran, Liba
ad753e79-56c8-483f-aae5-dd992496bee2
Bacon, Zoe, Hicks, Yulia, Al-Amri, Mohammad and Sheeran, Liba
(2020)
Automatic low back pain classification using inertial measurement units: A preliminary analysis.
Procedia Computer Science, 176, .
(doi:10.1016/j.procs.2020.09.272).
Abstract
Low back pain (LBP) is a major health problem that has now become leading cause of disability worldwide. The majority of LBP has no specific pathological cause. Classification of non-specific LBP (NSLBP) into subgroups corresponding to the reported symptoms has been identified as an essential step towards the provision of personalised management and rehabilitation plans. Currently, clinicians classify low back pain patients into clinical subgroups based on clinical judgement and expertise, which is a time-consuming process open to human error. This paper introduces a novel approach for automatic classification of NSLBP patients into clinical subgroups on the basis of the MTw2 inertial measurement unit (MTw2 IMU tracker) motion data, which are portable units and thus desirable for clinical use. Four MTw2 IMU trackers tracking movement during a number of physical assessment tests were investigated in their ability to distinguish between clinically recognized NSLBP subgroups. Simple motion features such as the angular range of displacement were used in classification experiments to reflect how clinicians make decisions when classifying NSLBP. The achieved results were comparable to the state of art results in automatic NSLBP classification using optical motion capture data and demonstrated the feasibility of developing an automatic classification system on the basis of the MTw2 IMU tracker motion data obtained with an individual performing a battery of standard physical assessment tests. Further developments could address gaps in current medical and engineering literature and improve clinical outcomes.
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Published date: 2 October 2020
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Local EPrints ID: 500935
URI: http://eprints.soton.ac.uk/id/eprint/500935
ISSN: 1877-0509
PURE UUID: 53edc4e1-ae24-4fa2-ac72-8e59559913e0
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Date deposited: 19 May 2025 16:47
Last modified: 22 Aug 2025 02:49
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Author:
Zoe Bacon
Author:
Yulia Hicks
Author:
Mohammad Al-Amri
Author:
Liba Sheeran
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