Beyond Cognitive Load: AI-Based Estimation of Cognitive Effort Using Brain Signals During Digital Tasks
Shayla Sharmin, Mohammad Fahim Abrar, Gael Lucero-Palacios, Aditya Raikwar, Roghayeh Leila Barmaki

TL;DR
This study explores how brain signals can be used with machine learning to estimate individual cognitive effort during digital tasks, revealing variations across task segments and successful performance prediction.
Contribution
It introduces a novel method combining fNIRS data and machine learning to estimate cognitive effort at the individual level during digital tasks.
Findings
Significant variation in cognitive effort across task segments.
Machine learning models accurately predicted task performance from brain signals.
Estimated cognitive effort closely matched effort based on actual performance.
Abstract
Cognitive effort, defined as the relationship between cognitive load and task performance, provides insight into how individuals allocate mental resources during demanding tasks. This construct is particularly important in high-stakes public health and clinical training, where excessive cognitive load is associated with medical errors and burnout. This study investigates whether cognitive effort varies across task segments and whether it can be estimated at the individual level using brain signal data and machine learning. Functional near-infrared spectroscopy (fNIRS) data were collected from 16 participants performing a structured digital cognitive task consisting of four sequential segments separated by short and long rest intervals. Cognitive effort was operationalized using relative neural efficiency and relative neural involvement, integrating prefrontal hemodynamic activity with…
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