Institute of Sports Medicine, Paderborn University, Paderborn, Germany.
Remote Sensing Centre for Earth System Research, Leipzig University, Leipzig, Germany; German Centre for Integrative Biodiversity Research (iDiv), Leipzig, Germany.
Brain Res. 2022 Oct 1;1792:148001. doi: 10.1016/j.brainres.2022.148001. Epub 2022 Jul 4.
The application of machine learning techniques provides a data-driven approach for a deeper understanding of the development and expressions of expertise. In extension to the common procedure of comparing experts' and novices' performances in expertise-domain-related tasks we applied conventional classification algorithms. We distinguished between tasks for each participant and between groups, i.e., experts or novices, based on electroencephalographic (EEG) activity patterns and force output variables during four different force modulation tasks. The tasks under investigation involved sinusoidal and steady force tracking tasks, which were performed with the left and right hand. Classification of tasks based on EEG patterns as well as force output was possible with high accuracy in novices and experts, whereas classification of group membership, i.e., experts or novices, was at chance level. In follow-up analyses, we found a high degree of individuality in the EEG patterns of the experts, implying the long-term development of specialized central processing during fine motor tasks in fine motor experts. Taken together, the results suggest that continuous practice in the work context leads to the development of a highly individual and task-specific central control pattern.
机器学习技术的应用为深入了解专业知识的发展和表现提供了一种数据驱动的方法。除了比较专家和新手在专业领域相关任务中的表现这一常见方法外,我们还应用了常规的分类算法。我们根据脑电图 (EEG) 活动模式和在四项不同的力调制任务期间的力输出变量,区分了每个参与者和专家或新手组之间的任务。研究中的任务包括正弦和稳定力跟踪任务,这些任务是用左手和右手完成的。基于 EEG 模式和力输出的任务分类在新手和专家中具有很高的准确性,而组别的分类,即专家或新手,处于随机水平。在后续分析中,我们发现专家的 EEG 模式具有高度的个体性,这意味着在精细运动专家中,精细运动任务的中央处理过程经过长期发展已经专业化。总的来说,这些结果表明,在工作环境中的持续实践会导致高度个性化和特定于任务的中央控制模式的发展。