Classification of ADHD Patients by Kernel Hierarchical Extreme Learning
Machine
- URL: http://arxiv.org/abs/2202.08953v1
- Date: Fri, 18 Feb 2022 01:32:55 GMT
- Title: Classification of ADHD Patients by Kernel Hierarchical Extreme Learning
Machine
- Authors: Sartaj Ahmed Salman, Zhichao Lian, Yuduo Zhang
- Abstract summary: We consider the dynamics of brain functional connectivity, modeling a functional brain dynamics model from medical imaging.
In this paper, we consider comparisons of fMRI imaging data on 23 ADHD and 45 NC children.
Our experimental methods achieved better classification results than existing methods.
- Score: 4.168157981135698
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: These days, the diagnosis of neuropsychiatric diseases through brain imaging
technology has received more and more attention. The exploration of
interactions in brain functional connectivity based on functional magnetic
resonance imaging (fMRI) data is critical for the study of mental illness.
Because attention-deficit/hyperactivity disorder (ADHD) is a chronic disease
that affects millions of children, it is difficult to diagnose, so there is
still much space for improvement in the accuracy of the diagnosis of the
disease. In this paper, we consider the dynamics of brain functional
connectivity, modeling a functional brain dynamics model from medical imaging,
which helps to find differences in brain function interactions between normal
control (NC) children and ADHD children. In more detail, our method is used by
Bayesian Connectivity Change Point Model for dynamic detection, Local Binary
Encoding Method for local feature extraction, and Kernel Hierarchical Extreme
Learning Machine implementation classification. To validate our approach,
experimental comparisons of fMRI imaging data on 23 ADHD and 45 NC children
were performed, and our experimental methods achieved better classification
results than existing methods.
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