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Practical limits on muscle synergy identification by non-negative matrix factorization in systems with mechanical constraints

机译:机械约束系统非负矩阵分解的肌肉协同识别的实际限制

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摘要

Statistical decomposition, including non-negative matrix factorization (NMF), is a convenient tool for identifying patterns of structured variability within behavioral motor programs, but it is unclear how the resolved factors relate to actual neural structures. Factors can be extracted from a uniformly sampled, low-dimension command space. In practical application, the command space is limited, either to those activations that perform some task(s) successfully or to activations induced in response to specific perturbations. NMF was applied to muscle activation patterns synthesized from low dimensional, synergy-like control modules mimicking simple task performance or feedback activation from proprioceptive signals. In the task-constrained paradigm, the accuracy of control module recovery was highly dependent on the sampled volume of control space, such that sampling even 50 % of control space produced a substantial degradation in factor accuracy. In the feedback paradigm, NMF was not capable of extracting more than four control modules, even in a mechanical model with seven internal degrees of freedom. Reduced access to the low-dimensional control space imposed by physical constraints may result in substantial distortion of an existing low dimensional controller, such that neither the dimensionality nor the composition of the recovered/extracted factors match the original controller.
机译:统计分解,包括非负矩阵分解(NMF),是一种方便的工具,可用于识别行为运动程序中结构化变异的模式,但目前尚不清楚解析的因子如何与实际的神经结构相关。可以从统一采样的低维命令空间中提取因子。在实际应用中,命令空间受限于成功执行某些任务的激活或响应于特定扰动而诱导的激活。将NMF应用于从低维,类似协同作用的控制模块合成的肌肉激活模式,该模块模仿简单的任务执行或来自本体感受信号的反馈激活。在任务受限的范例中,控制模块恢复的精度高度依赖于控制空间的采样量,因此即使对50%的控制空间进行采样也会导致因子精度的显着下降。在反馈范式中,即使在具有七个内部自由度的机械模型中,NMF也不能提取四个以上的控制模块。由于物理限制而对低维控制空间的访问减少,可能会导致现有低维控制器的严重失真,从而使恢复/提取的因子的维数或组成都不与原始控制器匹配。

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