Deep Learning Approach Versus Traditional Machine Learning for Adhd Classification
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Date
2021
Authors
Akan, Aydin
Journal Title
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Volume Title
Publisher
IEEE
Open Access Color
Green Open Access
No
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Publicly Funded
No
Abstract
Magnetic resonance is the imaging method that stands out in the evaluation of textures and diseases related to brain. The information about metabolic, biochemical and hemodynamic structure of the brain is obtained by magnetic resonance imaging. Attention Deficit Hyperactivity Disorder (ADHD) is a psychiatric disease and, if not treated, its effects may spread over all lifetime and cause significant academic, social, and psychiatric problems. High-accuracy and objective tools need to be developed for classification of ADHD. In this study, we present machine learning (ML) and deep learning (DL) based approaches for the classification of MR Images collected from ADHD patients. We generate a new 2D texture from 3-D structural magnetic resonance image by combining slices where gray and white matter clearly displayed. In the first approach, we extract Haralick texture based features, and HOG features and classify ADHD using ML methods such as Decision Tree, K nearest neighbor, Naive Bayes, Logistic Regression, and Support Vector Machine. In the DL approach, we trained four Convolutional Neural Network (CNN) structures (AlexNet, VGGNet, ResNet and GoogleNet) for ADHD classification using the 2-D texture images. Classification performance obtained with ResNet architecture in characterizing new texture is 100 % accuracy, 100 % sensitivity, 100 % specificity.
Description
Medical Technologies Congress (TIPTEKNO'21) -- NOV 04-06, 2021 -- Antalya, TURKEY
ORCID
Keywords
Attention Deficit Hyperactivity Disorder, structural magnetic resonance imaging, machine learning, deep learning, CNN, Structural magnetic resonance imaging, Attention Deficit Hyperactivity Disorder, Support vector machines, Haemodynamics, Decision trees, Magnetism, deep learning, Deep learning, Textures, Convolutional neural network, Imaging method, Diseases, Attention deficit hyperactivity disorder, machine learning, Magnetic resonance imaging, Nearest neighbor search, Psychiatric disease, Convolutional neural networks, structural magnetic resonance imaging, High-accuracy, Machine-learning, CNN, Learning approach
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OpenCitations Citation Count
4
Source
Tıp Teknolojılerı Kongresı (Tıptekno'21)
Volume
Issue
Start Page
1
End Page
4
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Scopus : 6
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Mendeley Readers : 13
SCOPUS™ Citations
6
checked on Mar 16, 2026
Web of Science™ Citations
1
checked on Mar 16, 2026
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