IEEE Trans Neural Syst Rehabil Eng. 2021;29:2676-2683. doi: 10.1109/TNSRE.2021.3134763. Epub 2022 Jan 4.
Muscle synergy analysis is a useful tool for the evaluation of the motor control strategies and for the quantification of motor performance. Among the parameters that can be extracted, most of the information is included in the rank of the modular control model (i.e. the number of muscle synergies that can be used to describe the overall muscle coordination). Even though different criteria have been proposed in literature, an objective criterion for the model order selection is needed to improve reliability and repeatability of MSA results. In this paper, we propose an Akaike Information Criterion (AIC)-based method for model order selection when extracting muscle synergies via the original Gaussian Non-Negative Matrix Factorization algorithm. The traditional AIC definition has been modified based on a correction of the likelihood term, which includes signal dependent noise on the neural commands, and a Discrete Wavelet decomposition method for the proper estimation of the number of degrees of freedom of the model, reduced on a synergy-by-synergy and event-by-event basis. We tested the performance of our method in comparison with the most widespread ones, proving that our criterion is able to yield good and stable performance in selecting the correct model order in simulated EMG data. We further evaluated the performance of our AIC-based technique on two distinct experimental datasets confirming the results obtained with the synthetic signals, with performances that are stable and independent from the nature of the analysed task, from the signal quality and from the subjective EMG pre-processing steps.
肌肉协同作用分析是评估运动控制策略和量化运动表现的有用工具。在可提取的参数中,大部分信息都包含在模块化控制模型的秩中(即可以用来描述整体肌肉协调的肌肉协同数量)。尽管文献中提出了不同的标准,但需要一种客观的模型阶数选择标准来提高肌肉协同作用分析结果的可靠性和可重复性。在本文中,我们提出了一种基于赤池信息量准则(AIC)的方法,用于通过原始高斯非负矩阵分解算法提取肌肉协同作用时的模型阶数选择。传统的 AIC 定义基于对似然项的修正,该修正包括对神经指令上的信号相关噪声的修正,以及对模型自由度的正确估计的离散小波分解方法,该方法在协同作用和事件的基础上进行了简化。我们将我们的方法与最广泛使用的方法进行了性能比较,证明了我们的准则能够在模拟肌电数据中选择正确的模型阶数方面产生良好和稳定的性能。我们进一步在两个不同的实验数据集上评估了我们基于 AIC 的技术的性能,证实了我们在合成信号中获得的结果,其性能稳定且不依赖于分析任务的性质、信号质量和主观肌电预处理步骤。