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在跑步机行走过程中从步态加速度测量中提取步幅事件。

Extraction of stride events from gait accelerometry during treadmill walking.

作者信息

Sejdić Ervin, Lowry Kristin A, Bellanca Jennica, Perera Subashan, Redfern Mark S, Brach Jennifer S

机构信息

Department of Electrical and Computer Engineering, Swanson School of Engineering, University of Pittsburgh, Pittsburgh, PA, 15261, USA.

Department of Physical Therapy, Des Moines University, Des Moines, IA 50312, USA.

出版信息

IEEE J Transl Eng Health Med. 2016;4. doi: 10.1109/JTEHM.2015.2504961. Epub 2015 Dec 18.

Abstract

OBJECTIVE

Evaluating stride events can be valuable for understanding the changes in walking due to aging and neurological diseases. However, creating the time series necessary for this analysis can be cumbersome. In particular, finding heel contact and toe-off events which define the gait cycles accurately are difficult.

METHOD

We proposed a method to extract stride cycle events from tri-axial accelerometry signals. We validated our method via data collected from 14 healthy controls, 10 participants with Parkinson's disease and 11 participants with peripheral neuropathy. All participants walked at self-selected comfortable and reduced speeds on a computer-controlled treadmill. Gait accelerometry signals were captured via a tri-axial accelerometer positioned over the L3 segment of the lumbar spine. Motion capture data were also collected and served as the comparison method.

RESULTS

Our analysis of the accelerometry data showed that the proposed methodology was able to accurately extract heel and toe contact events from both feet. We used t-tests, ANOVA and mixed models to summarize results and make comparisons. Mean gait cycle intervals were the same as those derived from motion capture and cycle-to-cycle variability measures were within 1.5%. Subject group differences could be identified similarly using measures with the two methods.

CONCLUSIONS

A simple tri-axial acceleromter accompanied by a signal processing algorithm can be used to capture stride events. Clinical Impact: The proposed algorithm enables the assessment of stride events during treadmill walking, and is the first step towards the assessment of stride events using tri-axial accelerometers in real-life settings.

摘要

目的

评估步幅事件对于理解衰老和神经疾病导致的行走变化可能具有重要价值。然而,创建此分析所需的时间序列可能很繁琐。特别是,准确找到定义步态周期的足跟触地和足趾离地事件很困难。

方法

我们提出了一种从三轴加速度计信号中提取步幅周期事件的方法。我们通过从14名健康对照者、10名帕金森病患者和11名周围神经病变患者收集的数据对我们的方法进行了验证。所有参与者在计算机控制的跑步机上以自我选择的舒适速度和较慢速度行走。通过放置在腰椎L3节段上方的三轴加速度计捕获步态加速度计信号。还收集了运动捕捉数据并将其用作比较方法。

结果

我们对加速度计数据的分析表明,所提出的方法能够准确地从双脚中提取足跟和足趾触地事件。我们使用t检验、方差分析和混合模型来总结结果并进行比较。平均步态周期间隔与从运动捕捉得出的间隔相同,周期间变异性测量值在1.5%以内。使用这两种方法的测量同样可以识别受试者组之间的差异。

结论

一个简单的三轴加速度计与信号处理算法相结合可用于捕捉步幅事件。临床影响:所提出的算法能够在跑步机行走期间评估步幅事件,并且是在现实生活环境中使用三轴加速度计评估步幅事件的第一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7dee/4848076/1a5d35f1d80a/sejdi1abcd-2504961.jpg

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