Developing System-Based Artificial Intelligence Models for Detecting the Attention Deficit Hyperactivity Disorder
Hasan Alkahtani,
Theyazn H. H. Aldhyani (),
Zeyad A. T. Ahmed and
Ahmed Abdullah Alqarni
Additional contact information
Hasan Alkahtani: King Salman Center for Disability Research, Riyadh 11614, Saudi Arabia
Theyazn H. H. Aldhyani: King Salman Center for Disability Research, Riyadh 11614, Saudi Arabia
Zeyad A. T. Ahmed: Department of Computer Science, Dr. Babasaheb Ambedkar Marathwada University, Aurangabad 431004, India
Ahmed Abdullah Alqarni: King Salman Center for Disability Research, Riyadh 11614, Saudi Arabia
Mathematics, 2023, vol. 11, issue 22, 1-31
Abstract:
This study presents a novel methodology for automating the classification of pediatric ADHD using electroencephalogram (EEG) biomarkers through machine learning and deep learning techniques. The primary objective is to develop accurate EEG-based screening tools to aid clinical diagnosis and enable early intervention for ADHD. The proposed system utilizes a publicly available dataset consisting of raw EEG recordings from 61 individuals with ADHD and 60 control subjects during a visual attention task. The methodology involves meticulous preprocessing of raw EEG recordings to isolate brain signals and extract informative features, including time, frequency, and entropy signal characteristics. The feature selection techniques, including least absolute shrinkage and selection operator (LASSO) regularization and recursive elimination, were applied to identify relevant variables and enhance generalization. The obtained features are processed by employing various machine learning and deep learning algorithms, namely CatBoost, Random Forest Decision Trees, Convolutional Neural Networks (CNNs), and Long Short-Term Memory Networks (LSTMs). The empirical results of the proposed algorithms highlight the effectiveness of feature selection approaches in matching informative biomarkers with optimal model classes. The convolutional neural network model achieves superior testing accuracy of 97.75% using LASSO-regularized biomarkers, underscoring the strengths of deep learning and customized feature optimization. The proposed framework advances EEG analysis to uncover discriminative patterns, significantly contributing to the field of ADHD screening and diagnosis. The suggested methodology achieved high performance compared with different existing systems based on AI approaches for diagnosing ADHD.
Keywords: artificial intelligence; machine learning; deep learning; electroencephalogram; hyperactivity disorder (search for similar items in EconPapers)
JEL-codes: C (search for similar items in EconPapers)
Date: 2023
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