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基于机器学习的分类算法对站立姿势的区分。

Distinguishing among standing postures with machine learning-based classification algorithms.

机构信息

Department of Integrative Physiology, University of Colorado Boulder, Boulder, CO, 80309, USA.

Laboratory of Neuromechanics, Department of Physical Education and Sport Sciences at Serres, Aristotle University of Thessaloniki, Serres, Greece.

出版信息

Exp Brain Res. 2024 Nov 27;243(1):3. doi: 10.1007/s00221-024-06959-9.

Abstract

The purpose of our study was to evaluate the accuracy with which classification algorithms could distinguish among standing postures based on center-of-pressure (CoP) trajectories. We performed a secondary analysis of published data from three studies: Study A) assessment of balance control on firm or foam surfaces with eyes-open or closed, Study B) quantification of postural sway in forward-backward and side-to-side directions during four standing-balance tasks that differed in difficulty, and Study C) an evaluation of the impact of two modes of transcutaneous electrical nerve stimulation on balance control in older adults. Three classification algorithms (decision tree, random forest, and k-nearest neighbor) were used to classify standing postures based on the extracted features from CoP trajectories in both the time and time-frequency domains. Such classifications enable the identification of differences and similarities in control strategy. Our results, especially those involving time-frequency features, demonstrated that distinct CoP trajectories could be identified from the extracted features in all conditions and postures in each study. Although the overall classification accuracy was similar using time-frequency features (~ 86%) for the three studies, there were substantial differences in accuracy across conditions and postures in Studies A and B but not in Study C. Nonetheless, the models were far superior to the published results with conventional metrics in distinguishing between the conditions and postures. Moreover, a Shapley Additive exPlanation analysis was able to identify the most important features that contributed to the classification performance of the models.

摘要

我们的研究目的是评估分类算法根据压力中心(CoP)轨迹区分站立姿势的准确性。我们对三项研究的已发表数据进行了二次分析:研究 A)评估睁眼或闭眼时在坚固或泡沫表面上的平衡控制,研究 B)在四个站立平衡任务中量化前后和左右方向的姿势摆动,这些任务在难度上有所不同,以及研究 C)评估两种经皮电神经刺激模式对老年人平衡控制的影响。三种分类算法(决策树、随机森林和 k-最近邻)用于根据 CoP 轨迹在时间和时频域中提取的特征对站立姿势进行分类。这种分类可以识别控制策略的差异和相似之处。我们的结果,特别是涉及时频特征的结果表明,在所有条件和每个研究中的所有姿势下,都可以从提取的特征中识别出明显不同的 CoP 轨迹。虽然使用时间频率特征(~86%)对三项研究的整体分类准确性相似,但在研究 A 和 B 中,条件和姿势的准确性存在很大差异,但在研究 C 中则没有。尽管如此,这些模型在区分条件和姿势方面远优于使用传统指标的已发表结果。此外,Shapley Additive exPlanation 分析能够识别对模型分类性能有贡献的最重要特征。

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