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使用惯性传感器信号的隐马尔可夫模型相似度度量 (HMM-SM) 量化不对称步态模式变化。

Quantifying Asymmetric Gait Pattern Changes Using a Hidden Markov Model Similarity Measure (HMM-SM) on Inertial Sensor Signals.

机构信息

Institute of Biomedical Engineering, University of Toronto, Toronto, ON M5S 1A1, Canada.

Research Institute, Holland Bloorview Kids Rehabilitation Hospital, Toronto, ON M4G 1R8, Canada.

出版信息

Sensors (Basel). 2024 Oct 4;24(19):6431. doi: 10.3390/s24196431.

Abstract

Wearable gait analysis systems using inertial sensors offer the potential for easy-to-use gait assessment in lab and free-living environments. This can enable objective long-term monitoring and decision making for individuals with gait disabilities. This study explores a novel approach that applies a hidden Markov model-based similarity measure (HMM-SM) to assess changes in gait patterns based on the gyroscope and accelerometer signals from just one or two inertial sensors. Eleven able-bodied individuals were equipped with a system which perturbed gait patterns by manipulating stance-time symmetry. Inertial sensor data were collected from various locations on the lower body to train hidden Markov models. The HMM-SM was evaluated to determine whether it corresponded to changes in gait as individuals deviated from their baseline, and whether it could provide a reliable measure of gait similarity. The HMM-SM showed consistent changes in accordance with stance-time symmetry in the following sensor configurations: pelvis, combined upper leg signals, and combined lower leg signals. Additionally, the HMM-SM demonstrated good reliability for the combined upper leg signals (ICC = 0.803) and lower leg signals (ICC = 0.795). These findings provide preliminary evidence that the HMM-SM could be useful in assessing changes in overall gait patterns. This could enable the development of compact, wearable systems for unsupervised gait assessment, without the requirement to pre-identify and measure a set of gait parameters.

摘要

使用惯性传感器的可穿戴步态分析系统为实验室和自由生活环境中的易于使用的步态评估提供了潜力。这可以为步态障碍患者进行客观的长期监测和决策。本研究探讨了一种新方法,该方法应用基于隐马尔可夫模型的相似性度量(HMM-SM)来评估基于仅一个或两个惯性传感器的陀螺仪和加速度计信号的步态模式变化。十一名健全人配备了一个通过操纵站立时间对称性来改变步态模式的系统。从下肢的不同位置收集惯性传感器数据以训练隐马尔可夫模型。评估 HMM-SM 以确定它是否对应于个体偏离基线时的步态变化,以及它是否可以提供可靠的步态相似性度量。HMM-SM 显示出与站立时间对称性一致的变化,如下传感器配置:骨盆,组合大腿信号和组合小腿信号。此外,HMM-SM 还表现出良好的可靠性,用于组合大腿信号(ICC = 0.803)和小腿信号(ICC = 0.795)。这些发现初步表明 HMM-SM 可用于评估整体步态模式的变化。这可以实现用于非监督步态评估的紧凑型可穿戴系统的开发,而无需预先识别和测量一组步态参数。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/369e/11479378/6632c322be86/sensors-24-06431-g001.jpg

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