Extreme learning machine-based classification of ADHD using brain structural MRI data.

BACKGROUND: Effective and accurate diagnosis of attention-deficit/hyperactivity disorder (ADHD) is currently of significant interest. ADHD has been associated with multiple cortical features from structural MRI data. However, most existing learning algorithms for ADHD identification contain obvious...

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Main Authors: Xiaolong Peng, Pan Lin, Tongsheng Zhang, Jue Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3834213?pdf=render
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spelling doaj-e22203974aa846aaa148b75f27d827e72020-11-25T00:47:04ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01811e7947610.1371/journal.pone.0079476Extreme learning machine-based classification of ADHD using brain structural MRI data.Xiaolong PengPan LinTongsheng ZhangJue WangBACKGROUND: Effective and accurate diagnosis of attention-deficit/hyperactivity disorder (ADHD) is currently of significant interest. ADHD has been associated with multiple cortical features from structural MRI data. However, most existing learning algorithms for ADHD identification contain obvious defects, such as time-consuming training, parameters selection, etc. The aims of this study were as follows: (1) Propose an ADHD classification model using the extreme learning machine (ELM) algorithm for automatic, efficient and objective clinical ADHD diagnosis. (2) Assess the computational efficiency and the effect of sample size on both ELM and support vector machine (SVM) methods and analyze which brain segments are involved in ADHD. METHODS: High-resolution three-dimensional MR images were acquired from 55 ADHD subjects and 55 healthy controls. Multiple brain measures (cortical thickness, etc.) were calculated using a fully automated procedure in the FreeSurfer software package. In total, 340 cortical features were automatically extracted from 68 brain segments with 5 basic cortical features. F-score and SFS methods were adopted to select the optimal features for ADHD classification. Both ELM and SVM were evaluated for classification accuracy using leave-one-out cross-validation. RESULTS: We achieved ADHD prediction accuracies of 90.18% for ELM using eleven combined features, 84.73% for SVM-Linear and 86.55% for SVM-RBF. Our results show that ELM has better computational efficiency and is more robust as sample size changes than is SVM for ADHD classification. The most pronounced differences between ADHD and healthy subjects were observed in the frontal lobe, temporal lobe, occipital lobe and insular. CONCLUSION: Our ELM-based algorithm for ADHD diagnosis performs considerably better than the traditional SVM algorithm. This result suggests that ELM may be used for the clinical diagnosis of ADHD and the investigation of different brain diseases.http://europepmc.org/articles/PMC3834213?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Xiaolong Peng
Pan Lin
Tongsheng Zhang
Jue Wang
spellingShingle Xiaolong Peng
Pan Lin
Tongsheng Zhang
Jue Wang
Extreme learning machine-based classification of ADHD using brain structural MRI data.
PLoS ONE
author_facet Xiaolong Peng
Pan Lin
Tongsheng Zhang
Jue Wang
author_sort Xiaolong Peng
title Extreme learning machine-based classification of ADHD using brain structural MRI data.
title_short Extreme learning machine-based classification of ADHD using brain structural MRI data.
title_full Extreme learning machine-based classification of ADHD using brain structural MRI data.
title_fullStr Extreme learning machine-based classification of ADHD using brain structural MRI data.
title_full_unstemmed Extreme learning machine-based classification of ADHD using brain structural MRI data.
title_sort extreme learning machine-based classification of adhd using brain structural mri data.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description BACKGROUND: Effective and accurate diagnosis of attention-deficit/hyperactivity disorder (ADHD) is currently of significant interest. ADHD has been associated with multiple cortical features from structural MRI data. However, most existing learning algorithms for ADHD identification contain obvious defects, such as time-consuming training, parameters selection, etc. The aims of this study were as follows: (1) Propose an ADHD classification model using the extreme learning machine (ELM) algorithm for automatic, efficient and objective clinical ADHD diagnosis. (2) Assess the computational efficiency and the effect of sample size on both ELM and support vector machine (SVM) methods and analyze which brain segments are involved in ADHD. METHODS: High-resolution three-dimensional MR images were acquired from 55 ADHD subjects and 55 healthy controls. Multiple brain measures (cortical thickness, etc.) were calculated using a fully automated procedure in the FreeSurfer software package. In total, 340 cortical features were automatically extracted from 68 brain segments with 5 basic cortical features. F-score and SFS methods were adopted to select the optimal features for ADHD classification. Both ELM and SVM were evaluated for classification accuracy using leave-one-out cross-validation. RESULTS: We achieved ADHD prediction accuracies of 90.18% for ELM using eleven combined features, 84.73% for SVM-Linear and 86.55% for SVM-RBF. Our results show that ELM has better computational efficiency and is more robust as sample size changes than is SVM for ADHD classification. The most pronounced differences between ADHD and healthy subjects were observed in the frontal lobe, temporal lobe, occipital lobe and insular. CONCLUSION: Our ELM-based algorithm for ADHD diagnosis performs considerably better than the traditional SVM algorithm. This result suggests that ELM may be used for the clinical diagnosis of ADHD and the investigation of different brain diseases.
url http://europepmc.org/articles/PMC3834213?pdf=render
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AT panlin extremelearningmachinebasedclassificationofadhdusingbrainstructuralmridata
AT tongshengzhang extremelearningmachinebasedclassificationofadhdusingbrainstructuralmridata
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