ADHD classification using auto-encoding neural network and binary hypothesis testing

Attention Deficit Hyperactivity Disorder (ADHD) is a highly prevalent neurodevelopmental disease of school-age children. Early diagnosis is crucial for ADHD treatment, wherein its neurobiological diagnosis (or classification) is helpful and provides the objective evidence to clinicians. The existing...

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Veröffentlicht in:Artificial intelligence in medicine 2022-01, Vol.123, p.102209-102209, Article 102209
Hauptverfasser: Tang, Yibin, Sun, Jia, Wang, Chun, Zhong, Yuan, Jiang, Aimin, Liu, Gang, Liu, Xiaofeng
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container_start_page 102209
container_title Artificial intelligence in medicine
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creator Tang, Yibin
Sun, Jia
Wang, Chun
Zhong, Yuan
Jiang, Aimin
Liu, Gang
Liu, Xiaofeng
description Attention Deficit Hyperactivity Disorder (ADHD) is a highly prevalent neurodevelopmental disease of school-age children. Early diagnosis is crucial for ADHD treatment, wherein its neurobiological diagnosis (or classification) is helpful and provides the objective evidence to clinicians. The existing ADHD classification methods suffer two problems, i.e., insufficient data and feature noise disturbance from other associated disorders. As an attempt to overcome these difficulties, a novel deep-learning classification architecture based on a binary hypothesis testing framework and a modified auto-encoding (AE) network is proposed in this paper. The binary hypothesis testing framework is introduced to cope with insufficient data of ADHD database. Brain functional connectivities (FCs) of test data (without seeing their labels) are incorporated during feature selection along with those of training data and affect the sequential deep learning procedure under binary hypotheses. On the other hand, the modified AE network is developed to capture more effective features from training data, such that the difference of inter- and intra-class variability scores between binary hypotheses can be enlarged and effectively alleviate the disturbance of feature noise. On the test of ADHD-200 database, our method significantly outperforms the existing classification methods. The average accuracy reaches 99.6% with the leave-one-out cross validation. Our method is also more robust and practically convenient for ADHD classification due to its uniform parameter setting across various datasets. •A deep-learning-based ADHD classification framework is proposed by using a binary hypothesis testing of test data.•Under a label hypothesis, functional connectivies of test data are used in the feature selection of training data.•The high-level features are learned from the selected features of training data via a modified auto-coding network.•A variability score is adopted to measure the clustering performance of these learned high-level features.•A label is given to test data by the variability score comparison on the high-level features under binary hypotheses.
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Early diagnosis is crucial for ADHD treatment, wherein its neurobiological diagnosis (or classification) is helpful and provides the objective evidence to clinicians. The existing ADHD classification methods suffer two problems, i.e., insufficient data and feature noise disturbance from other associated disorders. As an attempt to overcome these difficulties, a novel deep-learning classification architecture based on a binary hypothesis testing framework and a modified auto-encoding (AE) network is proposed in this paper. The binary hypothesis testing framework is introduced to cope with insufficient data of ADHD database. Brain functional connectivities (FCs) of test data (without seeing their labels) are incorporated during feature selection along with those of training data and affect the sequential deep learning procedure under binary hypotheses. On the other hand, the modified AE network is developed to capture more effective features from training data, such that the difference of inter- and intra-class variability scores between binary hypotheses can be enlarged and effectively alleviate the disturbance of feature noise. On the test of ADHD-200 database, our method significantly outperforms the existing classification methods. The average accuracy reaches 99.6% with the leave-one-out cross validation. 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subjects ADHD classification
Attention Deficit Disorder with Hyperactivity - diagnosis
Auto-encoding neural network
Binary hypothesis testing
Brain
Child
Databases, Factual
Functional connectivity
Humans
Magnetic Resonance Imaging - methods
Neural Networks, Computer
SVM-RFE
title ADHD classification using auto-encoding neural network and binary hypothesis testing
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