The Predictive Effects of Resting-State and Task-Related Prefrontal and Vagal Activity on Cognitive Performances

Pub Date : 2023-09-28 DOI:10.1027/0269-8803/a000327
Martina Doneda, Virginia Maria Borsa, Agostino Brugnera, Angelo Compare, Maria Luisa Rusconi, Kaoru Sakatani, Ettore Lanzarone
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Abstract

Abstract: Performance efficiency in cognitive tasks is a combination of effectiveness, that is, accuracy, and cognitive effort. Resting-state and task-related autonomic and cortical activity, together with psychological variables, may represent effective predictors of performance efficiency. This study aimed to investigate the impact of these variables in the prediction of performance during a set of cognitive tasks in a sample of young adults. The 76 participants (age: 23.96 ± 2.69 years; 51.3% females) who volunteered for this study completed several psychological questionnaires and performed a set of attention and executive functions tasks. Resting-state and task-related prefrontal and autonomic activity were collected through a Time-Domain and a Continuous Wave 2-channel Functional Near-Infrared Spectroscopy (fNIRS) and a portable Electrocardiogram (ECG) monitoring system, respectively. A set of Machine Learning (ML) approaches were employed to (i) predict the performance of each cognitive task, while minimizing and quantifying the prediction error, and to (ii) quantitatively evaluate the predictors that most affected the cognitive outcome. Results showed that perfectionistic traits, as well as both resting-state and task-related autonomic and cortical activity, predicted performance for most of the tasks, partially supporting previous evidence. Our results add to the knowledge of psycho-physiological determinants of performance efficiency in cognitive tasks and provide preliminary evidence on the role of ML approaches in detecting important predictors in cognitive neuroscience.
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静息状态和任务相关的前额叶和迷走神经活动对认知表现的预测作用
摘要:认知任务的绩效效率是有效性(即准确性)和认知努力的结合。静息状态和任务相关的自主神经和皮层活动,连同心理变量,可能是工作效率的有效预测指标。本研究旨在调查这些变量对年轻人在一系列认知任务中预测表现的影响。76例(年龄:23.96±2.69岁;51.3%的女性志愿者完成了几份心理问卷,并完成了一系列注意力和执行功能任务。静息状态和任务相关的前额叶和自主神经活动分别通过时域和连续波2通道功能近红外光谱(fNIRS)和便携式心电图(ECG)监测系统收集。一组机器学习(ML)方法被用于(i)预测每个认知任务的表现,同时最小化和量化预测误差,以及(ii)定量评估最影响认知结果的预测因子。结果显示,完美主义特质,以及静息状态和任务相关的自主神经和皮层活动,预测了大多数任务的表现,部分支持了之前的证据。我们的研究结果增加了认知任务中表现效率的心理生理决定因素的知识,并为机器学习方法在检测认知神经科学中重要预测因素的作用提供了初步证据。
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