Maeda Kota, Okuyama Kohei, Ukai Kazumasa, Tsuji Takuma, Hideaki Yamaguchi, Yokoyama Shigeki, Kodama Takayuki
Physical Medicine and Rehabilitation, Graduate School of Health Sciences, Kyoto Tachibana University, Kyoto, JPN.
Physical Medicine and Rehabilitation, Kyoto Shimogamo Hospital, Kyoto, JPN.
Cureus. 2025 Apr 25;17(4):e83006. doi: 10.7759/cureus.83006. eCollection 2025 Apr.
BackgroundJump-landing is a fundamental movement critical for enhancing athletic performance and preventing injuries, making the facilitation of rapid motor learning essential. Motor learning and performance are commonly evaluated using biomechanical measures. Although neurophysiological processes such as predictive control and self-reflection are thought to contribute to motor learning, studies from this perspective remain limited. In this study, we focused on three neural markers: Bereitschaftspotential (BP), which reflects predictive control before movement initiation; posterior parietal cortex (PPC) activity, which is involved in sensory information processing during motor learning; and error-related negativity (ERN), which reflects self-reflection following movement. We aimed to clarify the relationships between these neural markers and motor learning during jump-landing tasks. MethodsA cross-sectional study was conducted with eight healthy male participants, each performing twenty single-leg drop jumps. Participants were instructed to land on a designated target point, and the error distance between the big toe and the target was measured. Reduction in error distance across trials was quantified as a learning curve, and its slope was used as an index of motor learning ability. Bereitschaftspotential (BP) was measured at the Cz electrode, and activity in the posterior parietal cortex (PPC) was analyzed at the Pz electrode; integral values over the three seconds prior to jump takeoff were calculated. ERN was extracted from the Fz electrode as the maximum negative amplitude occurring 50-150 ms after landing. Statistical analyses were conducted to examine the correlations between electroencephalography indices and the learning curve slope. In addition, classification using a support vector machine (SVM) was performed to assess whether ERN amplitude could predict high or low motor learning ability. Results BP and PPC activity were significantly negatively correlated with the learning curve slope, indicating faster motor learning. In contrast, ERN amplitude showed no significant correlation with the slope. However, the SVM classification model demonstrated that ERN amplitude could accurately predict high and low motor learning ability. Conclusion BP and PPC activity contributed to faster motor learning, while ERN enabled classification of learning ability. These findings suggest that predictive control, sensory integration, and self-reflection are key components of motor learning. This study is among the first to integratively examine the roles of BP, PPC, and ERN in a dynamic jump-landing. The findings demonstrate that predictive control, sensory integration, and self-reflection are key contributors to motor learning efficiency. These insights offer novel perspectives for assessment and training design in sports science and rehabilitation, with implications for performance enhancement and injury prevention.
背景
跳跃着陆是一项对提高运动表现和预防损伤至关重要的基本动作,因此促进快速运动学习至关重要。运动学习和表现通常使用生物力学指标进行评估。尽管诸如预测控制和自我反思等神经生理过程被认为有助于运动学习,但从这一角度进行的研究仍然有限。在本研究中,我们关注三个神经标志物: Bereitschaftspotential(BP),它反映运动开始前的预测控制;顶叶后皮质(PPC)活动,它在运动学习过程中参与感觉信息处理;以及错误相关负波(ERN),它反映运动后的自我反思。我们旨在阐明这些神经标志物与跳跃着陆任务期间运动学习之间的关系。
方法
对八名健康男性参与者进行了一项横断面研究,每人进行20次单腿下落跳。参与者被指示落在指定的目标点上,并测量大脚趾与目标之间的误差距离。将各次试验中误差距离的减少量量化为一条学习曲线,其斜率用作运动学习能力的指标。在Cz电极处测量 Bereitschaftspotential(BP),并在Pz电极处分析顶叶后皮质(PPC)的活动;计算起跳前三秒的积分值。从Fz电极提取ERN,作为着陆后50 - 150毫秒出现的最大负波幅。进行统计分析以检验脑电图指标与学习曲线斜率之间的相关性。此外,使用支持向量机(SVM)进行分类,以评估ERN波幅是否可以预测高或低运动学习能力。
结果
BP和PPC活动与学习曲线斜率显著负相关,表明运动学习更快。相比之下,ERN波幅与斜率无显著相关性。然而,支持向量机分类模型表明,ERN波幅可以准确预测高和低运动学习能力。
结论
BP和PPC活动有助于更快的运动学习,而ERN能够对学习能力进行分类。这些发现表明,预测控制、感觉整合和自我反思是运动学习的关键组成部分。本研究是首批综合研究BP、PPC和ERN在动态跳跃着陆中作用的研究之一。研究结果表明,预测控制、感觉整合和自我反思是运动学习效率的关键贡献因素。这些见解为运动科学和康复中的评估和训练设计提供了新的视角,对提高运动表现和预防损伤具有重要意义。