Department of Kinesiology, Pennsylvania State University, University Park, PA 16802 USA.
Department of Engineering Science & Mechanics, Pennsylvania State University, University Park, PA 16802 USA.
J Biomech. 2021 Apr 15;119:110314. doi: 10.1016/j.jbiomech.2021.110314. Epub 2021 Feb 10.
People walk in complex environments where they must adapt their steps to maintain balance and satisfy changing task goals. How people do this is not well understood. We recently developed computational models of lateral stepping, based on Goal Equivalent Manifolds that serve as motor regulation templates, to identify how people regulate walking movements from step-to-step. In normal walking, healthy adults strongly maintain step width, but also lateral position on their path. Here, we used this framework to pose empirically-testable hypotheses about how humans might adapt their lateral stepping dynamics when asked to prioritize different stepping goals. Participants walked on a treadmill in a virtual-reality environment under 4 conditions: normal walking and, while given direct feedback at each step, walking while trying to maintain constant step width, constant absolute lateral position, or constant heading (direction). Time series of lateral stepping variables were extracted, and variability and statistical persistence (reflecting step-to-step regulation) quantified. Participants exhibited less variability of the prescribed stepping variable compared to normal walking during each feedback condition. Stepping regulation results supported our models' predictions: to maintain constant step width or position, people either maintained or increased regulation of the prescribed variable, but also decreased regulation of its complement. Thus, people regulated lateral foot placements in predictable and systematic ways determined by specific task goals. Humans regulate stepping movements to not only "just walk" (step without falling), but also to achieve specific goal-directed tasks within a specific environment. The framework and motor regulation templates presented here capture these important interactions.
人们在复杂的环境中行走,必须调整步伐以保持平衡并满足不断变化的任务目标。人们如何做到这一点还不太清楚。我们最近开发了基于目标等效流形的横向步进计算模型,作为运动调节模板,以确定人们如何从一步一步地调节步行运动。在正常行走中,健康的成年人强烈保持步宽,但也保持路径上的横向位置。在这里,我们使用这个框架提出了关于人类在被要求优先考虑不同的步进目标时如何适应他们的横向步进动力学的可经验检验的假设。参与者在虚拟现实环境中的跑步机上行走,有 4 种情况:正常行走,以及在每一步都有直接反馈时,尝试保持恒定步宽、恒定绝对横向位置或恒定航向(方向)的行走。提取了横向步进变量的时间序列,并量化了变异性和统计持久性(反映了步与步之间的调节)。与正常行走相比,参与者在每个反馈条件下都表现出规定的步进变量的变异性较小。步进调节结果支持我们模型的预测:为了保持恒定的步宽或位置,人们要么保持要么增加规定变量的调节,但也减少了其补数的调节。因此,人们以特定任务目标决定的可预测和系统的方式调节横向足部位置。人类调节步进运动不仅是为了“正常行走”(不跌倒地行走),也是为了在特定环境中完成特定的目标导向任务。这里提出的框架和运动调节模板捕捉到了这些重要的相互作用。