School of Innovation, Design, and Engineering, Mälardalen University, Box 883, 721 23 Västerås, Sweden.
J Neural Eng. 2018 Jun;15(3):036021. doi: 10.1088/1741-2552/aaae73. Epub 2018 Apr 6.
Working memory (WM), crucial for successful behavioral performance in most of our everyday activities, holds a central role in goal-directed behavior. As task demands increase, inducing higher WM load, maintaining successful behavioral performance requires the brain to work at the higher end of its capacity. Because it is depending on both external and internal factors, individual WM load likely varies in a continuous fashion. The feasibility to extract such a continuous measure in time that correlates to behavioral performance during a working memory task remains unsolved.
Multivariate pattern decoding was used to test whether a decoder constructed from two discrete levels of WM load can generalize to produce a continuous measure that predicts task performance. Specifically, a linear regression with L2-regularization was chosen with input features from EEG oscillatory activity recorded from healthy participants while performing the n-back task, [Formula: see text].
The feasibility to extract a continuous time-resolved measure that correlates positively to trial-by-trial working memory task performance is demonstrated (r = 0.47, p < 0.05). It is furthermore shown that this measure allows to predict task performance before action (r = 0.49, p < 0.05). We show that the extracted continuous measure enables to study the temporal dynamics of the complex activation pattern of WM encoding during the n-back task. Specifically, temporally precise contributions of different spectral features are observed which extends previous findings of traditional univariate approaches.
These results constitute an important contribution towards a wide range of applications in the field of cognitive brain-machine interfaces. Monitoring mental processes related to attention and WM load to reduce the risk of committing errors in high-risk environments could potentially prevent many devastating consequences or using the continuous measure as neurofeedback opens up new possibilities to develop novel rehabilitation techniques for individuals with degraded WM capacity.
工作记忆(WM)对于我们日常生活中大多数行为的成功表现至关重要,它在目标导向行为中起着核心作用。随着任务需求的增加,导致 WM 负荷增加,要保持成功的行为表现,大脑需要在其能力的较高端工作。由于它取决于外部和内部因素,个体 WM 负荷可能以连续的方式变化。在执行工作记忆任务期间,提取与行为表现相关的连续测量值的可行性仍然未得到解决。
使用多元模式解码来测试从两个离散的 WM 负荷水平构建的解码器是否可以推广以产生连续的度量值,该度量值可预测任务表现。具体来说,选择了具有 L2-正则化的线性回归,输入特征来自健康参与者在执行 n-回任务时记录的 EEG 振荡活动,[公式:见文本]。
证明了提取与试验间工作记忆任务表现呈正相关的连续时间分辨度量值的可行性(r=0.47,p<0.05)。此外,还表明该度量值可以在行动前预测任务表现(r=0.49,p<0.05)。我们表明,提取的连续度量值可用于研究 n-回任务中 WM 编码的复杂激活模式的时间动态。具体来说,观察到不同谱特征的时间精确贡献,这扩展了传统单变量方法的先前发现。
这些结果为认知脑机接口领域的广泛应用做出了重要贡献。监测与注意力和 WM 负荷相关的心理过程,以降低在高风险环境中犯错误的风险,可能会防止许多灾难性后果,或者将连续测量值用作神经反馈,为 WM 能力下降的个体开发新的康复技术开辟了新的可能性。