Kloeckner Julie, Visscher Rosa M S, Taylor William R, Viehweger Elke, De Pieri Enrico
Laboratory for Movement Biomechanics, Department of Health Science and Technology, Institute for Biomechanics, Swiss Federal Institute of Technology (ETH) Zurich, Zurich, Switzerland.
Department of Biomedical Engineering, École Polytechnique Fédérale de Lausanne (EPFL), Lausanne, Switzerland.
Front Hum Neurosci. 2023 Mar 8;17:1127613. doi: 10.3389/fnhum.2023.1127613. eCollection 2023.
Gait analysis is increasingly used to support clinical decision-making regarding diagnosis and treatment planning for movement disorders. As a key part of gait analysis, inverse dynamics can be applied to estimate internal loading conditions during movement, which is essential for understanding pathological gait patterns. The inverse dynamics calculation uses external kinetic information, normally collected using force plates. However, collection of external ground reaction forces (GRFs) and moments (GRMs) can be challenging, especially in subjects with movement disorders. In recent years, a musculoskeletal modeling-based approach has been developed to predict external kinetics from kinematic data, but its performance has not yet been evaluated for altered locomotor patterns such as toe-walking. Therefore, the goal of this study was to investigate how well this prediction method performs for gait in children with cerebral palsy.
The method was applied to 25 subjects with various forms of hemiplegic spastic locomotor patterns. Predicted GRFs and GRMs, in addition to associated joint kinetics derived using inverse dynamics, were statistically compared against those based on force plate measurements.
The results showed that the performance of the predictive method was similar for the affected and unaffected limbs, with Pearson correlation coefficients between predicted and measured GRFs of 0.71-0.96, similar to those previously reported for healthy adults, despite the motor pathology and the inclusion of toes-walkers within our cohort. However, errors were amplified when calculating the resulting joint moments to an extent that could influence clinical interpretation.
To conclude, the musculoskeletal modeling-based approach for estimating external kinetics is promising for pathological gait, offering the possibility of estimating GRFs and GRMs without the need for force plate data. However, further development is needed before implementation within clinical settings becomes possible.
步态分析越来越多地用于支持有关运动障碍诊断和治疗计划的临床决策。作为步态分析的关键部分,逆动力学可用于估计运动过程中的内部负荷情况,这对于理解病理性步态模式至关重要。逆动力学计算使用外部动力学信息,通常通过测力台收集。然而,收集外部地面反作用力(GRF)和力矩(GRM)可能具有挑战性,尤其是对于患有运动障碍的受试者。近年来,已开发出一种基于肌肉骨骼建模的方法,用于从运动学数据预测外部动力学,但其在诸如踮足行走等改变的运动模式中的性能尚未得到评估。因此,本研究的目的是调查这种预测方法在脑瘫儿童步态中的表现如何。
该方法应用于25名具有各种形式偏瘫痉挛性运动模式的受试者。除了使用逆动力学得出的相关关节动力学外,还将预测的GRF和GRM与基于测力台测量的结果进行了统计学比较。
结果表明,该预测方法在患侧和未患侧肢体上的表现相似,预测和测量的GRF之间的Pearson相关系数为0.71 - 0.96,与先前报道的健康成年人相似,尽管存在运动病理学问题且我们的队列中包括踮足行走者。然而,在计算由此产生的关节力矩时误差会放大,达到可能影响临床解释的程度。
总之,基于肌肉骨骼建模的估计外部动力学的方法在病理性步态方面很有前景,提供了无需测力台数据即可估计GRF和GRM的可能性。然而,在临床环境中实施之前还需要进一步发展。