Whiting School of Engineering, Johns Hopkins University, 21218, Baltimore, MD, USA.
Department of Physical Therapy and Kinesiology, University of Massachusetts Lowell, 01854, Lowell, MA, USA.
J Med Syst. 2024 Nov 22;48(1):107. doi: 10.1007/s10916-024-02122-7.
Feedback on cognitive workload may reduce decision-making mistakes. Machine learning-based models can produce feedback from physiological data such as electroencephalography (EEG) and electrocardiography (ECG). Supervised machine learning requires large training data sets that are (1) relevant and decontaminated and (2) carefully labeled for accurate approximation, a costly and tedious procedure. Commercial over-the-counter devices are low-cost resolutions for the real-time collection of physiological modalities. However, they produce significant artifacts when employed outside of laboratory settings, compromising machine learning accuracies. Additionally, the physiological modalities that most successfully machine-approximate cognitive workload in everyday settings are unknown. To address these challenges, a first-ever hybrid implementation of feature selection and self-supervised machine learning techniques is introduced. This model is employed on data collected outside controlled laboratory settings to (1) identify relevant physiological modalities to machine approximate six levels of cognitive-physical workloads from a seven-modality repository and (2) postulate limited labeling experiments and machine approximate mental-physical workloads using self-supervised learning techniques.
反馈认知负荷可以减少决策错误。基于机器学习的模型可以从脑电图 (EEG) 和心电图 (ECG) 等生理数据中生成反馈。监督机器学习需要大量的训练数据集,这些数据集(1)相关且无污染,(2)经过精心标记以进行准确逼近,这是一个代价高昂且繁琐的过程。商业上的非处方设备是实时采集生理模式的低成本解决方案。然而,当在实验室环境之外使用时,它们会产生显著的伪影,从而降低机器学习的准确性。此外,在日常环境中最成功地对认知负荷进行机器近似的生理模式尚不清楚。为了解决这些挑战,引入了一种首创的特征选择和自我监督机器学习技术的混合实现。该模型应用于在非受控实验室环境中收集的数据,以(1)从七模态库中识别与机器近似六个认知-体力工作水平相关的生理模态,以及(2)假设使用自我监督学习技术进行有限的标记实验和机器近似精神-体力工作水平。