Department of Mechanical Engineering, Isfahan University of Technology, 84156 Esfahān, Iran.
Exp Brain Res. 2013 Aug;229(2):221-34. doi: 10.1007/s00221-013-3606-1. Epub 2013 Jun 27.
The purpose of this work is to develop a computational model to describe the task of sit to stand (STS). STS is an important movement skill which is frequently performed in human daily activities, but has rarely been studied from the perspective of optimization principles. In this study, we compared the recorded trajectories of STS with the trajectories generated by several conventional optimization-based models (i.e., minimum torque, minimum torque change and kinetic energy cost models) and also with the trajectories produced by a novel multi-phase cost model (MPCM). In the MPCM, we suggested that any complex task, such as STS, is decomposable into successive motion phases, so that each phase requires a distinct strategy to be performed. In this way, we proposed a multi-phase cost function to describe the STS task. The results revealed that the conventional optimization-based models failed to correctly predict the invariable features of STS, such as hip flexion and ankle dorsiflexion movements. However, the MPCM not only predicted the general features of STS with a sufficient accuracy, but also showed a potential flexibility to distinguish between the movement strategies from one subject to the other. According to the results, it seems plausible to hypothesize that the central nervous system might apply different strategies when planning different phases of a complex task. The application areas of the proposed model could be generating optimized trajectories of STS for clinical applications (such as functional electrical stimulation) or providing clinical and engineering insights to develop more efficient rehabilitation devices and protocols.
这项工作的目的是开发一个计算模型来描述从坐姿到站姿(STS)的转换任务。STS 是一种重要的日常活动动作技能,但从优化原理的角度来看,它很少被研究。在这项研究中,我们将 STS 的记录轨迹与几种基于常规优化的模型(即最小扭矩、最小扭矩变化和动能成本模型)生成的轨迹进行了比较,也与一种新的多阶段成本模型(MPCM)生成的轨迹进行了比较。在 MPCM 中,我们提出任何复杂的任务,如 STS,都可以分解为连续的运动阶段,因此每个阶段都需要采用不同的策略来完成。通过这种方式,我们提出了一个多阶段成本函数来描述 STS 任务。结果表明,基于常规优化的模型无法正确预测 STS 的不变特征,如髋关节弯曲和踝关节背屈运动。然而,MPCM 不仅能够足够准确地预测 STS 的一般特征,而且还表现出一定的灵活性,可以区分不同个体之间的运动策略。根据结果,假设中枢神经系统在规划复杂任务的不同阶段时可能会应用不同的策略,这似乎是合理的。所提出模型的应用领域可以是为临床应用(如功能性电刺激)生成优化的 STS 轨迹,或者为开发更有效的康复设备和方案提供临床和工程方面的见解。