Abstract
The nature of firefighters’ duties requires them to work for long periods under unfavorable conditions. To perform their jobs effectively, they are required to endure long hours of extensive, stressful training. Creating such training environments is very expensive and it is difficult to guarantee trainees’ safety. In this study, firefighters are trained in a virtual environment that includes virtual perturbations such as fires, alarms, and smoke. The objective of this paper is to use machine learning methods to discern encoding and retrieval states in firefighters during a visuospatial episodic memory task and explore which regions of the brain provide suitable signals to solve this classification problem. Our results show that the Random Forest algorithm could be used to distinguish between information encoding and retrieval using features extracted from fNIRS data. Our algorithm achieved an F-1 score of and an accuracy of if the training and testing data are obtained at similar environmental conditions. However, the algorithm’s performance dropped to an F-1 score of and accuracy of when evaluated on data collected under different environmental conditions than the training data. We also found that if the training and evaluation data were recorded under the same environmental conditions, the RPM, LDLPFC, RDLPFC were the most relevant brain regions under non-stressful, stressful, and a mix of stressful and non-stressful conditions, respectively.
Highlights
Jobs in safety-critical domains, such as firefighting, are often stressful and sometimes life-threatening [1]
This section details the results of the Machine learning (ML) algorithms in detecting memory encoding and retrieval and highlights the impact of environmental conditions on the performance and transferability of each ML model
We found that our classification method and measures were successful in distinguishing between encoding and retrieval states in our firefighter participant pool with an F1-score of 0.844 and accuracy of 79.10% when trained and tested on data collected in both stressful and normal conditions (Group SN)
Summary
Jobs in safety-critical domains, such as firefighting, are often stressful and sometimes life-threatening [1]. Some of the most prominent occupational stressors faced by firefighters are fear of explosion, exposure to toxic smoke and gases, and fear of making mistakes [3]. This is understandable since their occupation involves high risk, exposes them to lifethreatening situations, and the cost of making a mistake could be deadly. It is an occupational requirement for firefighters to be at their best even in the most stressful conditions. Virtual reality (VR)-based training provides an effective solution for this since VR can simulate a variety of emergencies at a relatively low cost [7]
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