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Modeling temporal sequences of cognitive state changes based on a combination of EEG-engagement EEG-workload and heart rate metrics

机译:基于脑电图参与度脑电图工作量和心率指标的组合对认知状态变化的时间序列进行建模

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摘要

The objective of this study was to investigate the feasibility of physiological metrics such as ECG-derived heart rate and EEG-derived cognitive workload and engagement as potential predictors of performance on different training tasks. An unsupervised approach based on self-organizing neural network (NN) was utilized to model cognitive state changes over time. The feature vector comprised EEG-engagement, EEG-workload, and heart rate metrics, all self-normalized to account for individual differences. During the competitive training process, a linear topology was developed where the feature vectors similar to each other activated the same NN nodes. The NN model was trained and auto-validated on combat marksmanship training data from 51 participants that were required to make “deadly force decisions” in challenging combat scenarios. The trained NN model was cross validated using 10-fold cross-validation. It was also validated on a golf study in which additional 22 participants were asked to complete 10 sessions of 10 putts each. Temporal sequences of the activated nodes for both studies followed the same pattern of changes, demonstrating the generalization capabilities of the approach. Most node transition changes were local, but important events typically caused significant changes in the physiological metrics, as evidenced by larger state changes. This was investigated by calculating a transition score as the sum of subsequent state transitions between the activated NN nodes. Correlation analysis demonstrated statistically significant correlations between the transition scores and subjects' performances in both studies. This paper explored the hypothesis that temporal sequences of physiological changes comprise the discriminative patterns for performance prediction. These physiological markers could be utilized in future training improvement systems (e.g., through neurofeedback), and applied across a variety of training environments.
机译:这项研究的目的是调查生理指标的可行性,例如心电图得出的心率和脑电图得出的认知工作量以及参与度在不同训练任务中的潜在表现指标。利用基于自组织神经网络(NN)的无监督方法来模拟认知状态随时间的变化。特征向量包括EEG参与度,EEG工作量和心率指标,所有这些指标均经过自我标准化以解决个体差异。在竞争性训练过程中,开发了线性拓扑,其中彼此相似的特征向量激活了相同的NN节点。 NN模型是根据来自51名参与者的战斗枪法训练数据进行训练和自动验证的,这些数据需要在具有挑战性的战斗场景中做出“致命武力决定”。使用10倍交叉验证对经过训练的NN模型进行交叉验证。高尔夫研究还对它进行了验证,其中要求另外22位参与者完成10次每次10推杆的练习。两项研究的激活节点的时间序列遵循相同的变化模式,证明了该方法的泛化能力。大多数结节转变变化是局部的,但重要事件通常会导致生理指标发生重大变化,如较大的状态变化所证明。通过计算转换分数作为激活的NN节点之间后续状态转换的总和,对此进行了研究。相关分析表明,两项研究中的转换得分与受试者的表现之间在统计学上具有显着的相关性。本文探讨了这样的假说,即生理变化的时间序列包括性能预测的判别模式。这些生理标​​记物可用于未来的训练改进系统中(例如,通过神经反馈),并应用于各种训练环境中。

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