Publication Details

Deep learning based diagnosis of alcohol use disorder (AUD) using EEG

JAWED, S.; MALIK, A. Deep learning based diagnosis of alcohol use disorder (AUD) using EEG. In {2022 IEEE 12th International Conference on Consumer Electronics (ICCE-Berlin). Berlin: Institute of Electrical and Electronics Engineers, 2022. p. 1-5. ISBN: 978-1-6654-5676-0.
Czech title
Diagnostika poruchy způsobené užíváním alkoholu (AUD) na základě hlubokého učení pomocí EEG
Type
conference paper
Language
English
Authors
Jawed Soyiba, Dr., MSc (Automata@FIT)
Malik Aamir Saeed, prof., Ph.D. (DCSY)
and others
URL
Keywords

alcohol addiction, alcohol use disorder (AUD), deep learning, CNN,
classification

Abstract

Alcohol use disorder (AUD) involves people who have difficulty controlling their
drinking habits. This results in significant distress and also affects
functioning normally in their daily life. The challenge in screening AUD patients
using subjective measures is the dependency of this method on self-assessment,
which is unreliable in the case of alcoholics as they may lie or not correctly
remember facts because access to alcohol use can affect memory. The solution is
to use neuroimaging modalities such as electroencephalography (EEG), which looks
into the brain patterns and does not involve self-rating. This study proposes
a deep learning (DL) method to classify alcoholics and healthy controls. The
proposed deep learning method applies EEG feature extraction automatically and
classifies the participants into relevant groups. The participants included 30
AUD patients (mean age 56.70 15.33 years) and 15 healthy controls (mean 42.67
15.90 years) who were recruited to acquire EEG data. The data were recorded
during 10 minutes of eyes closed (EC) and eyes open (EO) conditions. The proposed
analysis utilizes 1D CNN to fit and evaluate the classification model. From EEG
data, features were extracted and classified using a convolutional neural network
(CNN). The results show that the CNN has achieved the performance rendering
a classification accuracy of (93%), specificity (89 % ), and sensitivity (89 % )
with an f1 score of 0.94 for the AUD group. In addition, for the healthy control
group, the specificity of (100%), the sensitivity of (100%), and the f1 score of
0.91 are achieved. In conclusion, the results implicated significant
neurophysiological differences between alcoholics and control.

Published
2022
Pages
1–5
Proceedings
{2022 IEEE 12th International Conference on Consumer Electronics (ICCE-Berlin)
Conference
12th IEEE International Conference on Consumer Electronics, Berlin, Germany, DE
ISBN
978-1-6654-5676-0
Publisher
Institute of Electrical and Electronics Engineers
Place
Berlin
DOI
EID Scopus
BibTeX
@inproceedings{BUT180634,
  author="Soyiba {Jawed} and Aamir Saeed {Malik}",
  title="Deep learning based diagnosis of alcohol use disorder (AUD) using EEG",
  booktitle="{2022 IEEE 12th International Conference on Consumer Electronics (ICCE-Berlin)",
  year="2022",
  pages="1--5",
  publisher="Institute of Electrical and Electronics Engineers",
  address="Berlin",
  doi="10.1109/ICCE-Berlin56473.2022.9937134",
  isbn="978-1-6654-5676-0",
  url="https://ieeexplore.ieee.org/document/9937134"
}
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