Den Hartigh Ruud J R, Otten Sem, Gruszczynska Zuzanna M, Hill Yannick
Department of Psychology, Faculty of Behavioral and Social Sciences, University of Groningen, Groningen, Netherlands.
Faculty of Medical Sciences, Center for Human Movement Sciences, University Medical Center Groningen/University of Groningen, Groningen, Netherlands.
Front Hum Neurosci. 2021 Aug 12;15:715375. doi: 10.3389/fnhum.2021.715375. eCollection 2021.
Complex systems typically demonstrate a mixture of regularity and flexibility in their behavior, which would make them adaptive. At the same time, adapting to perturbations is a core characteristic of resilience. The first aim of the current research was therefore to test the possible relation between complexity and resilient motor performance (i.e., performance while being perturbed). The second aim was to test whether complexity and resilient performance improve through differential learning. To address our aims, we designed two parallel experiments involving a motor task, in which participants moved a stick with their non-dominant hand along a slider. Participants could score points by moving a cursor as fast and accurately as possible between two boxes, positioned on the right- and left side of the screen in front of them. In a first session, we determined the complexity by analyzing the temporal structure of variation in the box-to-box movement intervals with a Detrended Fluctuation Analysis. Then, we introduced perturbations to the task: We altered the tracking speed of the cursor relative to the stick-movements briefly (i.e., 4 s) at intervals of 1 min (Experiment 1), or we induced a prolonged change of the tracking speed each minute (Experiment 2). Subsequently, participants had three sessions of either classical learning or differential learning. Participants in the classical learning condition were trained to perform the ideal movement pattern, whereas those in the differential learning condition had to perform additional and irrelevant movements. Finally, we conducted a posttest that was the same as the first session. In both experiments, results showed moderate positive correlations between complexity and points scored (i.e., box touches) in the perturbation-period of the first session. Across the two experiments, only differential learning led to a higher complexity index (i.e., more prominent patterns of pink noise) from baseline to post-test. Unexpectedly, the classical learning group improved more in their resilient performance than the differential learning group. Together, this research provides empirical support for the relation between complexity and resilience, and between complexity and differential learning in human motor performance, which should be examined further.
复杂系统的行为通常表现出规律性和灵活性的混合,这使其具有适应性。同时,适应扰动是恢复力的核心特征。因此,当前研究的首要目标是测试复杂性与弹性运动表现(即在受到扰动时的表现)之间的可能关系。第二个目标是测试复杂性和弹性表现是否通过差异学习得到改善。为了实现我们的目标,我们设计了两个涉及运动任务的平行实验,参与者用非优势手沿着滑块移动一根棍子。参与者可以通过尽可能快速准确地在位于他们面前屏幕左右两侧的两个盒子之间移动光标来得分。在第一阶段,我们通过去趋势波动分析来分析盒子间移动间隔变化的时间结构,从而确定复杂性。然后,我们对任务引入扰动:在实验1中,我们每隔1分钟短暂(即4秒)改变光标相对于棍子移动的跟踪速度;在实验2中,我们每分钟诱导跟踪速度的持续变化。随后,参与者进行了三个阶段的经典学习或差异学习。经典学习条件下的参与者被训练执行理想的运动模式,而差异学习条件下的参与者则必须执行额外的无关运动。最后,我们进行了与第一阶段相同的后测。在两个实验中,结果均显示在第一阶段的扰动期,复杂性与得分(即盒子触碰次数)之间存在中度正相关。在这两个实验中,只有差异学习导致从基线到后测的复杂性指数更高(即更显著的粉红噪声模式)。出乎意料的是,经典学习组在弹性表现上比差异学习组提高得更多。总之,本研究为人类运动表现中复杂性与恢复力之间以及复杂性与差异学习之间的关系提供了实证支持,这一点应进一步研究。