Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network Architecture

Machine learning techniques have become increasingly popular in the field of resting state fMRI (functional magnetic resonance imaging) network based classification. However, the application of convolutional networks has been proposed only very recently and has remained largely unexplored. In this p...

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Main Authors: Regina J. Meszlényi, Krisztian Buza, Zoltán Vidnyánszky
Format: Article
Language:English
Published: Frontiers Media S.A. 2017-10-01
Series:Frontiers in Neuroinformatics
Subjects:
Online Access:http://journal.frontiersin.org/article/10.3389/fninf.2017.00061/full
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spelling doaj-f1a1f330fd644a338a6814b0a37ae4f52020-11-24T21:02:55ZengFrontiers Media S.A.Frontiers in Neuroinformatics1662-51962017-10-011110.3389/fninf.2017.00061276332Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network ArchitectureRegina J. Meszlényi0Regina J. Meszlényi1Krisztian Buza2Krisztian Buza3Zoltán Vidnyánszky4Zoltán Vidnyánszky5Department of Cognitive Science, Budapest University of Technology and Economics, Budapest, HungaryBrain Imaging Centre, Research Centre for Natural Sciences, Hungarian Academy of Sciences, Budapest, HungaryBrain Imaging Centre, Research Centre for Natural Sciences, Hungarian Academy of Sciences, Budapest, HungaryKnowledge Discovery and Machine Learning, Rheinische Friedrich-Wilhelms-Universität Bonn, Bonn, GermanyDepartment of Cognitive Science, Budapest University of Technology and Economics, Budapest, HungaryBrain Imaging Centre, Research Centre for Natural Sciences, Hungarian Academy of Sciences, Budapest, HungaryMachine learning techniques have become increasingly popular in the field of resting state fMRI (functional magnetic resonance imaging) network based classification. However, the application of convolutional networks has been proposed only very recently and has remained largely unexplored. In this paper we describe a convolutional neural network architecture for functional connectome classification called connectome-convolutional neural network (CCNN). Our results on simulated datasets and a publicly available dataset for amnestic mild cognitive impairment classification demonstrate that our CCNN model can efficiently distinguish between subject groups. We also show that the connectome-convolutional network is capable to combine information from diverse functional connectivity metrics and that models using a combination of different connectivity descriptors are able to outperform classifiers using only one metric. From this flexibility follows that our proposed CCNN model can be easily adapted to a wide range of connectome based classification or regression tasks, by varying which connectivity descriptor combinations are used to train the network.http://journal.frontiersin.org/article/10.3389/fninf.2017.00061/fullclassificationconvolutional neural networkDynamic Time Warpingresting state connectivityconnectomefunctional magnetic resonance imaging
collection DOAJ
language English
format Article
sources DOAJ
author Regina J. Meszlényi
Regina J. Meszlényi
Krisztian Buza
Krisztian Buza
Zoltán Vidnyánszky
Zoltán Vidnyánszky
spellingShingle Regina J. Meszlényi
Regina J. Meszlényi
Krisztian Buza
Krisztian Buza
Zoltán Vidnyánszky
Zoltán Vidnyánszky
Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network Architecture
Frontiers in Neuroinformatics
classification
convolutional neural network
Dynamic Time Warping
resting state connectivity
connectome
functional magnetic resonance imaging
author_facet Regina J. Meszlényi
Regina J. Meszlényi
Krisztian Buza
Krisztian Buza
Zoltán Vidnyánszky
Zoltán Vidnyánszky
author_sort Regina J. Meszlényi
title Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network Architecture
title_short Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network Architecture
title_full Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network Architecture
title_fullStr Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network Architecture
title_full_unstemmed Resting State fMRI Functional Connectivity-Based Classification Using a Convolutional Neural Network Architecture
title_sort resting state fmri functional connectivity-based classification using a convolutional neural network architecture
publisher Frontiers Media S.A.
series Frontiers in Neuroinformatics
issn 1662-5196
publishDate 2017-10-01
description Machine learning techniques have become increasingly popular in the field of resting state fMRI (functional magnetic resonance imaging) network based classification. However, the application of convolutional networks has been proposed only very recently and has remained largely unexplored. In this paper we describe a convolutional neural network architecture for functional connectome classification called connectome-convolutional neural network (CCNN). Our results on simulated datasets and a publicly available dataset for amnestic mild cognitive impairment classification demonstrate that our CCNN model can efficiently distinguish between subject groups. We also show that the connectome-convolutional network is capable to combine information from diverse functional connectivity metrics and that models using a combination of different connectivity descriptors are able to outperform classifiers using only one metric. From this flexibility follows that our proposed CCNN model can be easily adapted to a wide range of connectome based classification or regression tasks, by varying which connectivity descriptor combinations are used to train the network.
topic classification
convolutional neural network
Dynamic Time Warping
resting state connectivity
connectome
functional magnetic resonance imaging
url http://journal.frontiersin.org/article/10.3389/fninf.2017.00061/full
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