Evaluating robotic actions: spatiotemporal brain dynamics of performance assessment in robot-assisted laparoscopic training.

IF 1.9 Q3 ERGONOMICS Frontiers in neuroergonomics Pub Date : 2025-02-19 eCollection Date: 2025-01-01 DOI:10.3389/fnrgo.2025.1535799
Katharina Lingelbach, Jennifer Rips, Lennart Karstensen, Franziska Mathis-Ullrich, Mathias Vukelić
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Abstract

Introduction: Enhancing medical robot training traditionally relies on explicit feedback from physicians to identify optimal and suboptimal robotic actions during surgery. Passive brain-computer interfaces (BCIs) offer an emerging alternative by enabling implicit brain-based performance evaluations. However, effectively decoding these evaluations of robot performance requires a comprehensive understanding of the spatiotemporal brain dynamics identifying optimal and suboptimal robot actions within realistic settings.

Methods: We conducted an electroencephalographic study with 16 participants who mentally assessed the quality of robotic actions while observing simulated robot-assisted laparoscopic surgery scenarios designed to approximate real-world conditions. We aimed to identify key spatiotemporal dynamics using the surface Laplacian technique and two complementary data-driven methods: a mass-univariate permutation-based clustering and multivariate pattern analysis (MVPA)-based temporal decoding. A second goal was to identify the optimal time interval of evoked brain signatures for single-trial classification.

Results: Our analyses revealed three distinct spatiotemporal brain dynamics differentiating the quality assessment of optimal vs. suboptimal robotic actions during video-based laparoscopic training observations. Specifically, an enhanced left fronto-temporal current source, consistent with P300, LPP, and P600 components, indicated heightened attentional allocation and sustained evaluation processes during suboptimal robot actions. Additionally, amplified current sinks in right frontal and mid-occipito-parietal regions suggested prediction-based processing and conflict detection, consistent with the oERN and interaction-based ERN/N400. Both mass-univariate clustering and MVPA provided convergent evidence supporting these neural distinctions.

Discussion: The identified neural signatures propose that suboptimal robotic actions elicit enhanced, sustained brain dynamics linked to continuous attention allocation, action monitoring, conflict detection, and ongoing evaluative processing. The findings highlight the importance of prioritizing late evaluative brain signatures in BCIs to classify robotic actions reliably. These insights have significant implications for advancing machine-learning-based training paradigms.

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评估机器人动作:机器人辅助腹腔镜训练中表现评估的时空脑动力学。
导读:传统上,加强医疗机器人训练依赖于医生的明确反馈,以识别手术期间机器人的最佳和次优动作。被动脑机接口(bci)通过实现基于大脑的隐式性能评估提供了一种新兴的替代方案。然而,要有效地解读机器人性能的这些评估,需要全面了解在现实环境中识别最佳和次优机器人动作的时空大脑动力学。方法:我们对16名参与者进行了脑电图研究,他们在观察模拟机器人辅助腹腔镜手术场景的同时,对机器人的动作质量进行了心理评估。我们的目标是使用表面拉普拉斯技术和两种互补的数据驱动方法:基于质量单变量排列的聚类和基于多变量模式分析(MVPA)的时间解码来识别关键的时空动态。第二个目标是为单次试验分类确定诱发脑特征的最佳时间间隔。结果:我们的分析揭示了在基于视频的腹腔镜训练观察中,三种不同的时空大脑动力学区分了最佳与次优机器人动作的质量评估。具体来说,增强的左额颞电流源,与P300、LPP和P600组件一致,表明在次优机器人动作期间,注意力分配和持续评估过程增强。此外,右侧额叶和枕顶叶中部区域的电流吸收放大表明基于预测的处理和冲突检测,与oERN和基于相互作用的ERN/N400一致。质量-单变量聚类和MVPA都提供了支持这些神经区别的收敛证据。讨论:已识别的神经特征表明,次优机器人动作引发了与持续注意力分配、动作监控、冲突检测和持续评估处理相关的增强、持续的大脑动力学。研究结果强调了在脑机接口中优先考虑晚期评估脑特征以可靠地分类机器人动作的重要性。这些见解对推进基于机器学习的训练范式具有重要意义。
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