用多模态逆强化学习转化部队任务认知评估

Q2 Health Professions
Ali Abbasi , Jiaqi Gong , Soroush Korivand
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引用次数: 0

摘要

Stroop任务因其对认知的要求而被认可,有望用于诊断和监测神经退行性疾病。理解人类如何在Stroop测试中分配注意力和解决干扰仍然是一个挑战;然而,解决这一差距可能会为早期检测提供关键机会。传统的方法忽略了显性行为和潜在神经过程之间的相互作用,限制了对复杂的颜色-单词关联的了解。为了解决这个问题,我们提出了一个应用逆强化学习(IRL)的框架,将脑电图(EEG)信号与眼动追踪数据融合在一起,弥合认知的神经和行为标记之间的差距。我们设计了一个具有一致和不一致条件的Stroop实验来评估不同干扰水平下的注意分配。通过将凝视视为由内部衍生奖励引导的行为,IRL揭示了扫描模式背后隐藏的动机,而经过高级特征提取处理的EEG数据揭示了高冲突下特定任务的神经动力学。我们通过测量概率失配、目标固定概率-曲线下面积、序列得分和多匹配指标来验证我们的方法。结果表明,IRL-EEG模型优于IRL-Image基线,显示出与人类扫描路径的一致性改善,并且在不一致试验中对注意力转移的敏感性提高。这些发现突出了将神经数据整合到认知计算模型中的价值,并阐明了早期检测神经退行性疾病的可能性,其中亚临床缺陷可能首先出现。我们基于irl的EEG和眼动追踪集成进一步支持个性化认知评估和自适应用户界面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transforming stroop task cognitive assessments with multimodal inverse reinforcement learning
Stroop tasks, recognized for their cognitively demanding nature, hold promise for diagnosing and monitoring neurodegenerative diseases. Understanding how humans allocate attention and resolve interference in the Stroop test remains a challenge; yet addressing this gap could reveal key opportunities for early-stage detection. Traditional approaches overlook the interplay between overt behavior and underlying neural processes, limiting insights into the complex color-word associations at play. To tackle this, we propose a framework that applies Inverse Reinforcement Learning (IRL) to fuse electroencephalography (EEG) signals with eye-tracking data, bridging the gap between neural and behavioral markers of cognition. We designed a Stroop experiment featuring congruent and incongruent conditions to evaluate attention allocation under varying levels of interference. By framing gaze as actions guided by an internally derived reward, IRL uncovers hidden motivations behind scanning patterns, while EEG data — processed with advanced feature extraction — reveals task-specific neural dynamics under high conflict. We validate our approach by measuring Probability Mismatch, Target Fixation Probability-Area Under the Curve, Sequence Score, and MultiMatch metrics. Results show that the IRL-EEG model outperforms an IRL-Image baseline, demonstrating improved alignment with human scanpaths and heightened sensitivity to attentional shifts in incongruent trials. These findings highlight the value of integrating neural data into computational models of cognition and illuminate possibilities for early detection of neurodegenerative disorders, where subclinical deficits may first emerge. Our IRL-based integration of EEG and eye-tracking further supports personalized cognitive assessments and adaptive user interfaces.
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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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