Bahdasariants Serhii, Barela Ana Maria Forti, Gritsenko Valeriya, Bacca Odair, Barela José Angelo, Yakovenko Sergiy
Department of Human Performance, School of Medicine, West Virginia University, Morgantown, WV, USA.
Institute of Physical Activity and Sport Sciences, Cruzeiro do Sul University, São Paulo, SP, Brazil.
bioRxiv. 2023 Feb 9:2023.02.09.527805. doi: 10.1101/2023.02.09.527805.
The nervous system predicts and executes complex motion of body segments actuated by the coordinated action of muscles. When a stroke or other traumatic injury disrupts neural processing, the impeded behavior has not only kinematic but also kinetic attributes that require interpretation. Biomechanical models could allow medical specialists to observe these dynamic variables and instantaneously diagnose mobility issues that may otherwise remain unnoticed. However, the real-time and subject-specific dynamic computations necessitate the optimization these simulations. In this study, we explored the effects of intrinsic viscoelasticity, choice of numerical integration method, and decrease in sampling frequency on the accuracy and stability of the simulation. The bipedal model with 17 rotational degrees of freedom (DOF)-describing hip, knee, ankle, and standing foot contact-was instrumented with viscoelastic elements with a resting length in the middle of the DOF range of motion. The accumulation of numerical errors was evaluated in dynamic simulations using swing-phase experimental kinematics. The relationship between viscoelasticity, sampling rates, and the integrator type was evaluated. The optimal selection of these three factors resulted in an accurate reconstruction of joint kinematics (err < 1%) and kinetics (err < 5%) with increased simulation time steps. Notably, joint viscoelasticity reduced the integration errors of and had minimal to no additional benefit for . Gained insights have the potential to improve diagnostic tools and accurize real-time feedback simulations used in the functional recovery of neuromuscular diseases and intuitive control of modern prosthetic solutions.
神经系统预测并执行由肌肉协调作用驱动的身体各部位的复杂运动。当中风或其他创伤性损伤扰乱神经处理过程时,受阻碍的行为不仅具有运动学属性,还具有动力学属性,需要进行解读。生物力学模型可以让医学专家观察这些动态变量,并即时诊断那些可能 otherwise remain unnoticed 的 mobility issues。然而,实时且针对个体的动态计算需要对这些模拟进行优化。在本研究中,我们探究了内在粘弹性、数值积分方法的选择以及采样频率降低对模拟准确性和稳定性的影响。具有17个旋转自由度(DOF)的双足模型——描述髋、膝、踝以及站立足部接触——配备了在DOF运动范围中间具有静止长度的粘弹性元件。使用摆动阶段实验运动学在动态模拟中评估数值误差的累积。评估了粘弹性、采样率和积分器类型之间的关系。这三个因素的最佳选择导致在增加模拟时间步长的情况下,关节运动学(误差<1%)和动力学(误差<5%)得到准确重建。值得注意的是,关节粘弹性减少了 的积分误差,并且对 几乎没有额外益处。所获得的见解有可能改进诊断工具,并使用于神经肌肉疾病功能恢复和现代假肢解决方案直观控制的实时反馈模拟更加准确。