Functional Near-Infrared Spectroscopy (fNIRS) has emerged as a valuable tool to investigate cognitive and emotional processes during learning. We focus specifically on game-integrated learning systems as the context for fNIRS-based brain data analysis. We selected game-integrated learning systems because such systems make learning more engaging, interactive, and immersive, all of which are critical features for adaptive learning design. The goal of this scoping review is to help researchers understand how fNIRS has been used so far to study brain activity in game-integrated learning systems. We also aim to show how brain data captured through fNIRS can support the development of adaptive learning systems by monitoring learners' cognitive states. Using the PRISMA-ScR framework, 1300 papers were screened, and 21 empirical studies were selected for in-depth analysis. Studies were categorized as affective/cognitive response studies or comparative studies, and further analyzed by learning platform, game device, fNIRS configuration, outcome measures, and study design. The findings reveal that game-integrated learning systems can be as effective as traditional methods in improving engagement and involvement. The findings also show that fNIRS offers valuable insights into cognitive states, but it has not yet been widely implemented in real-time adaptive systems. We identify key challenges in standardization and data interpretation and highlight the potential of fNIRS for developing brain-aware, interactive learning environments. This review offers insights to guide future research on using brain data to support adaptive learning and intelligent system design.
翻译:功能近红外光谱(fNIRS)已成为研究学习过程中认知与情感活动的重要工具。本文聚焦于游戏化学习系统作为fNIRS脑数据分析的应用场景。选择游戏化学习系统是因为此类系统能提升学习的参与性、交互性与沉浸感,这些特性对适应性学习设计至关重要。本范围综述旨在帮助研究者理解当前fNIRS如何用于探究游戏化学习系统中的脑活动,并揭示通过fNIRS获取的脑数据如何通过监测学习者认知状态来支持适应性学习系统的开发。依据PRISMA-ScR框架,我们筛选了1300篇文献,最终选取21项实证研究进行深入分析。研究被归类为情感/认知反应研究或对比研究,并从学习平台、游戏设备、fNIRS配置、结果测量和研究设计等维度展开分析。结果表明,游戏化学习系统在提升学习参与度方面与传统方法具有同等效力,同时fNIRS能为认知状态提供有价值的洞察,但尚未在实时适应性系统中广泛应用。我们指出了标准化与数据解读方面的关键挑战,并强调fNIRS在开发脑感知交互式学习环境方面的潜力。本综述为未来利用脑数据支持适应性学习与智能系统设计的研究提供了方向性见解。