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Estimating Indicators for Assessing Knee Motion Impairment During Gait Using In-Shoe Motion Sensors: A Feasibility Study

Knee joint function deterioration significantly impacts quality of life. This study developed estimation models for ten knee indicators using data from in-shoe motion sensors to assess knee movement during everyday activities. Sixty-six healthy young participants were involved, and multivariate line...

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Published in:Sensors (Basel, Switzerland) Switzerland), 2024-11, Vol.24 (23), p.7615
Main Authors: Ihara, Kazuki, Huang, Chenhui, Nihey, Fumiyuki, Kajitani, Hiroshi, Nakahara, Kentaro
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Huang, Chenhui
Nihey, Fumiyuki
Kajitani, Hiroshi
Nakahara, Kentaro
description Knee joint function deterioration significantly impacts quality of life. This study developed estimation models for ten knee indicators using data from in-shoe motion sensors to assess knee movement during everyday activities. Sixty-six healthy young participants were involved, and multivariate linear regression was employed to construct the models. The results showed that eight out of ten models achieved a "fair" to "good" agreement based on intra-class correlation coefficients (ICCs), with three knee joint angle indicators reaching the "fair" agreement. One temporal indicator model displayed a "good" agreement, while another had a "fair" agreement. For the angular jerk cost indicators, three out of four attained a "fair" or "good" agreement. The model accuracy was generally acceptable, with the mean absolute error ranging from 0.54 to 0.75 times the standard deviation of the true values and errors less than 1% from the true mean values. The significant predictors included the sole-to-ground angles, particularly the foot posture angles in the sagittal and frontal planes. These findings support the feasibility of estimating knee function solely from foot motion data, offering potential for daily life monitoring and rehabilitation applications. However, discrepancies in the two models were influenced by the variance in the baseline knee flexion and sensor placement. Future work will test these models on older and osteoarthritis-affected individuals to evaluate their broader applicability, with prospects for user-tailored rehabilitation applications. This study is a step towards simplified, accessible knee health monitoring through wearable technology.
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subjects Adult
Analysis
Ankle
Biomechanical Phenomena - physiology
Feasibility Studies
Female
foot motion
Gait
Gait - physiology
gait analysis
Humans
in-shoe motion sensor
Injuries
Knee
Knee Joint - physiology
Knee Joint - physiopathology
knee motion
Male
Movement - physiology
Osteoarthritis
Patient compliance
Range of Motion, Articular - physiology
Sensors
Shoes
stiff knee
Young Adult
title Estimating Indicators for Assessing Knee Motion Impairment During Gait Using In-Shoe Motion Sensors: A Feasibility Study
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