Introduction: Driver fatigue is one of the major causes of
accidents in roads. It is suggested that driver fatigue and drowsiness
accounted for more than 30% of road accidents. Therefore, it is important to
use features for real-time detection of driver mental fatigue to minimize
transportation fatalities. The purpose of this study was to explore the EEG
alpha power variations in sleep deprived drivers on a car driving simulator.
Materials and Methods: The present descriptive-analytical study was
achieved on nineteen healthy male car drivers. After taking informed written
consent, the subjects were requested to stay awake 18 hrs before the
experiments and refrain from caffeinated drinks or any other stimulant as well
as cigarette smoking for 12 hrs prior to the experiments. The drivers sleep
patterns were studied through sleep diary for one week before the experiment.
The participants performed a simulated driving task in a 110 Km monotonous
route at the fixed speed of 90 km/hr. The subjective self-assessment of fatigue
was performed in every 10 minute interval during the driving using Karolinska
Sleepiness Scale (KSS). At the same time, video recordings from the drivers
face and their behaviors were achieved in lateral and front views and rated by
two trained observers. Continuous EEG and EOG records were taken with 16
channels during driving. After filtering and artifact removal, power spectrum
density and fast Fourier transform (FFT) were used to determine the absolute
and relative alpha powers in the initial and final 10 minutes of driving. To
analyze the data, descriptive statistics, Pearson and Spearman coefficients and
paired-sample T test were employed to describe and compare the variables.
Results: The findings showed a significant increase in
KSS scores in the final 10 minutes of driving (p<0.001). Similar results
were obtained concerning video rating scores. Meanwhile, there was a
significant increase in the absolute alpha power during the final section of
driving (p=0.006).
Conclusion: Driver mental fatigue is considered as one of
the major implications for road safety. This study suggests that alpha brain
wave rhythm can be a good indicator for early prediction of driver fatigue.
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