<?xml version="1.0"?>
<Articles JournalTitle="Journal of Sleep Sciences">
  <Article>
    <Journal>
      <PublisherName>Tehran University of Medical Sciences</PublisherName>
      <JournalTitle>Journal of Sleep Sciences</JournalTitle>
      <Issn>2476-2938</Issn>
      <Volume>6</Volume>
      <Issue>1-2</Issue>
      <PubDate PubStatus="epublish">
        <Year>2022</Year>
        <Month>04</Month>
        <Day>19</Day>
      </PubDate>
    </Journal>
    <title locale="en_US">Classifying Features of Electroencephalography Signal to Detect Driver Drowsiness in the Early Drowsy Stage</title>
    <FirstPage>1</FirstPage>
    <LastPage>10</LastPage>
    <AuthorList>
      <Author>
        <FirstName>Sara</FirstName>
        <LastName>Houshmand</LastName>
        <affiliation locale="en_US">Department of Mechanical Engineering, K. N. Toosi University of Technology, Tehran, Iran</affiliation>
      </Author>
      <Author>
        <FirstName>Reza</FirstName>
        <LastName>Kazemi</LastName>
        <affiliation locale="en_US">Department of Mechanical Engineering, K. N. Toosi University of Technology, Tehran, Iran</affiliation>
      </Author>
      <Author>
        <FirstName>Hamed</FirstName>
        <LastName>Salmanzadeh</LastName>
        <affiliation locale="en_US">Department of Industrial engineering, K. N. Toosi University of Technology, Tehran, Iran</affiliation>
      </Author>
    </AuthorList>
    <History>
      <PubDate PubStatus="received">
        <Year>2021</Year>
        <Month>06</Month>
        <Day>30</Day>
      </PubDate>
      <PubDate PubStatus="accepted">
        <Year>2021</Year>
        <Month>08</Month>
        <Day>23</Day>
      </PubDate>
    </History>
    <abstract locale="en_US">Background and Objective: Driver drowsiness is one of the major reasons of severe accidents worldwide. In this&#xA0;study, an electroencephalography (EEG) measurement-based approach has been proposed to detect driver drowsiness.
&#xD;


Materials and Methods: The driving tests were conducted in a driving simulator to collect brain data in the alert and&#xA0;drowsy states. Nineteen healthy men participated in these tests. The EEG signals were recorded from the central, parietal,&#xA0;and occipital regions of the brain. 12 features of EEG signal were extracted; then through neighborhood component&#xA0;analysis (NCA), a feature selection method, 6 features including mean, standard deviation (SD), kurtosis, energy, entropy,&#xA0;and power of alpha band in 11-15 Hz, where alpha spindles occur, were selected. For the drowsiness stages assessment,&#xA0;the Observer Rating of Drowsiness (ORD) was applied. Four classifiers including k-nearest neighbor (KNN),&#xA0;support vector machine (SVM), classification tree, and Naive Bayes were employed to classify data.
&#xD;


Results: The classification trees detected drowsiness in the early stage with 88.55%. The classification results showed&#xA0;that if only single-channel P4 was used for detecting drowsiness, the better performance could be achieved in comparison&#xA0;to using data of all channels (C3, C4, P3, P4, O1, O2) together. The best performances were 93.13% which were&#xA0;obtained by the classification tree based on data of single-channel P4.
&#xD;


Conclusion: This study suggested that the driver drowsiness was detectable based on single-channel P4 in the early stage.</abstract>
    <web_url>https://jss.tums.ac.ir/index.php/jss/article/view/205</web_url>
  </Article>
</Articles>
