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一种预测肌电控制可用性的多变量方法。

A Multi-Variate Approach to Predicting Myoelectric Control Usability.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2021;29:1312-1327. doi: 10.1109/TNSRE.2021.3094324. Epub 2021 Jul 16.

Abstract

Pattern recognition techniques leveraging the use of electromyography signals have become a popular approach to provide intuitive control of myoelectric devices. Performance of these control interfaces is commonly quantified using offline classification accuracy, despite studies having shown that this metric is a poor indicator of usability. Researchers have identified alternative offline metrics that better correlate with online performance; however, the relationship has yet to be fully defined in the literature. This has necessitated the continued trial-and-error-style online testing of algorithms developed using offline approaches. To bridge this information divide, we conducted an exploratory study where thirty-two different metrics from the offline training data were extracted. A correlation analysis and an ordinary least squares regression were implemented to investigate the relationship between the offline metrics and six aspects online use. The results indicate that the current offline standard, classification accuracy, is a poor indicator of usability and that other metrics may hold predictive power. The metrics identified in this work also may constitute more representative evaluation criteria when designing and reporting new control schemes. Furthermore, linear combinations of offline training metrics generate substantially more accurate predictions than using individual metrics. We found that the offline metric feature efficiency generated the best predictions for the usability metric throughput. A combination of two offline metrics (mean semi-principal axes and mean absolute value) significantly outperformed feature efficiency alone, with a 166% increase in the predicted R value (i.e., VEcv). These findings suggest that combinations of metrics could provide a more robust framework for predicting usability.

摘要

基于肌电信号的模式识别技术已成为一种提供肌电设备直观控制的流行方法。尽管研究表明,该指标是可用性的一个较差指标,但这些控制接口的性能通常使用离线分类准确性进行量化。研究人员已经确定了其他与在线性能更好相关的替代离线指标;然而,这种关系在文献中尚未完全定义。这使得使用离线方法开发的算法需要进行持续的反复在线测试。为了弥合这一信息鸿沟,我们进行了一项探索性研究,从中提取了离线训练数据中的 32 个不同指标。我们实施了相关分析和普通最小二乘回归,以调查离线指标与在线使用的六个方面之间的关系。结果表明,当前的离线标准,分类准确性,是可用性的一个较差指标,其他指标可能具有预测能力。在设计和报告新的控制方案时,这项工作中确定的指标也可能构成更具代表性的评估标准。此外,离线训练指标的线性组合生成的预测比使用单个指标更准确。我们发现,离线指标特征效率对可用性指标吞吐量的预测效果最佳。两个离线指标(平均半主轴和绝对值的平均值)的组合明显优于特征效率,预测 R 值(即 VEcv)增加了 166%。这些发现表明,指标的组合可以为预测可用性提供更稳健的框架。

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