A Survey of Attention Deficit Hyperactivity Disorder Identification Using Psychophysiological Data

Attention Deficit Hyperactivity Disorder (ADHD) is one of the most common neurological disorders among children, that affects different areas in the brain that allows executing certain functionalities. This may lead to a variety of impairments such as difficulties in paying attention or focusing, controlling impulsive behaviors and overreacting. The continuous symptoms may have a severe impact in the long-term. This paper discusses the existing literature on the identification of ADHD using eye movement data and fMRI together including different deep learning techniques, existing models and a thorough analysis of the existing literature. We have identified the current challenges and possible future directions to provide computational support for early identification of ADHD patients that enable early treatments.

[1]  I. Waldman,et al.  Relations between multi-informant assessments of ADHD symptoms, DAT1, and DRD4. , 2008, Journal of abnormal psychology.

[2]  João Manuel R S Tavares,et al.  Medical image registration: a review , 2014, Computer methods in biomechanics and biomedical engineering.

[3]  Sampath Jayarathna,et al.  An EEG based Channel Optimized Classification Approach for Autism Spectrum Disorder , 2019, 2019 Moratuwa Engineering Research Conference (MERCon).

[4]  C. Gualtieri A practical approach to objective attention deficit/hyperactivity disorder diagnosis and management. , 2005, Psychiatry (Edgmont (Pa. : Township)).

[5]  Naomi S. Altman,et al.  Points of Significance: Principal component analysis , 2017, Nature Methods.

[6]  Athanasios Drigas,et al.  Online and other ICT Applications for Cognitive Training and Assessment , 2015, Int. J. Online Eng..

[7]  Seungjin Choi,et al.  Independent Component Analysis , 2009, Handbook of Natural Computing.

[8]  Bogdan Wilamowski,et al.  Fully Connected Cascade Artificial Neural Network Architecture for Attention Deficit Hyperactivity Disorder Classification From Functional Magnetic Resonance Imaging Data , 2015, IEEE Transactions on Cybernetics.

[9]  Chunyan Miao,et al.  3D CNN Based Automatic Diagnosis of Attention Deficit Hyperactivity Disorder Using Functional and Structural MRI , 2017, IEEE Access.

[10]  João Manuel R. S. Tavares,et al.  Effective features to classify skin lesions in dermoscopic images , 2017, Expert Syst. Appl..

[11]  Lianghua He,et al.  Classification on ADHD with Deep Learning , 2014, 2014 International Conference on Cloud Computing and Big Data.

[12]  Hanna E. Stevens,et al.  Why the Diagnosis of Attention Deficit Hyperactivity Disorder Matters , 2015, Front. Psychiatry.

[13]  A. Hao,et al.  Discrimination of ADHD children based on Deep Bayesian Network , 2015 .

[14]  Lianghua He,et al.  Discrimination of ADHD Based on fMRI Data with Deep Belief Network , 2014, ICIC.

[15]  Mubarak Shah,et al.  ADHD classification using bag of words approach on network features , 2012, Medical Imaging.

[16]  MaZhen,et al.  Effective features to classify skin lesions in dermoscopic images , 2017 .

[17]  John Suckling,et al.  A wavelet method for modeling and despiking motion artifacts from resting-state fMRI time series , 2014, NeuroImage.

[18]  G. Glover Overview of functional magnetic resonance imaging. , 2011, Neurosurgery clinics of North America.

[19]  João Manuel R. S. Tavares Analysis of Biomedical Images Based on Automated Methods of Image Registration , 2014, ISVC.

[20]  Sampath Jayarathna,et al.  A Rule-Based System for ADHD Identification using Eye Movement Data , 2019, 2019 Moratuwa Engineering Research Conference (MERCon).

[21]  Tongsheng Zhang,et al.  Extreme Learning Machine-Based Classification of ADHD Using Brain Structural MRI Data , 2013, PloS one.