Jalaleddini Kian, Tehrani Ehsan Sobhani, Kearney Robert E
IEEE Trans Biomed Eng. 2017 Jun;64(6):1357-1368. doi: 10.1109/TBME.2016.2604293. Epub 2016 Aug 31.
The purpose of this paper is to present a structural decomposition subspace (SDSS) method for decomposition of the joint torque to intrinsic, reflexive, and voluntary torques and identification of joint dynamic stiffness.
First, it formulates a novel state-space representation for the joint dynamic stiffness modeled by a parallel-cascade structure with a concise parameter set that provides a direct link between the state-space representation matrices and the parallel-cascade parameters. Second, it presents a subspace method for the identification of the new state-space model that involves two steps: 1) the decomposition of the intrinsic and reflex pathways and 2) the identification of an impulse response model of the intrinsic pathway and a Hammerstein model of the reflex pathway.
Extensive simulation studies demonstrate that SDSS has significant performance advantages over some other methods. Thus, SDSS was more robust under high noise conditions, converging where others failed; it was more accurate, giving estimates with lower bias and random errors. The method also worked well in practice and yielded high-quality estimates of intrinsic and reflex stiffnesses when applied to experimental data at three muscle activation levels.
The simulation and experimental results demonstrate that SDSS accurately decomposes the intrinsic and reflex torques and provides accurate estimates of physiologically meaningful parameters.
SDSS will be a valuable tool for studying joint stiffness under functionally important conditions. It has important clinical implications for the diagnosis, assessment, objective quantification, and monitoring of neuromuscular diseases that change the muscle tone.
本文旨在提出一种结构分解子空间(SDSS)方法,用于将关节扭矩分解为固有扭矩、反射扭矩和自主扭矩,并识别关节动态刚度。
首先,为以并联 - 级联结构建模的关节动态刚度制定一种新颖的状态空间表示,该结构具有简洁的参数集,能在状态空间表示矩阵与并联 - 级联参数之间建立直接联系。其次,提出一种用于识别新状态空间模型的子空间方法,该方法包括两个步骤:1)分解固有路径和反射路径;2)识别固有路径的脉冲响应模型和反射路径的哈默斯坦模型。
大量仿真研究表明,SDSS相较于其他一些方法具有显著的性能优势。因此,SDSS在高噪声条件下更稳健,在其他方法失败的情况下仍能收敛;它更准确,偏差和随机误差更低。该方法在实际应用中也表现良好,在三种肌肉激活水平下应用于实验数据时,能对固有刚度和反射刚度进行高质量估计。
仿真和实验结果表明,SDSS能准确分解固有扭矩和反射扭矩,并提供生理上有意义参数的准确估计。
SDSS将成为研究功能重要条件下关节刚度的有价值工具。它对改变肌张力的神经肌肉疾病的诊断、评估、客观量化和监测具有重要临床意义。