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

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          Abstract

          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.

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          Most cited references40

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          Network modelling methods for FMRI.

          There is great interest in estimating brain "networks" from FMRI data. This is often attempted by identifying a set of functional "nodes" (e.g., spatial ROIs or ICA maps) and then conducting a connectivity analysis between the nodes, based on the FMRI timeseries associated with the nodes. Analysis methods range from very simple measures that consider just two nodes at a time (e.g., correlation between two nodes' timeseries) to sophisticated approaches that consider all nodes simultaneously and estimate one global network model (e.g., Bayes net models). Many different methods are being used in the literature, but almost none has been carefully validated or compared for use on FMRI timeseries data. In this work we generate rich, realistic simulated FMRI data for a wide range of underlying networks, experimental protocols and problematic confounds in the data, in order to compare different connectivity estimation approaches. Our results show that in general correlation-based approaches can be quite successful, methods based on higher-order statistics are less sensitive, and lag-based approaches perform very poorly. More specifically: there are several methods that can give high sensitivity to network connection detection on good quality FMRI data, in particular, partial correlation, regularised inverse covariance estimation and several Bayes net methods; however, accurate estimation of connection directionality is more difficult to achieve, though Patel's τ can be reasonably successful. With respect to the various confounds added to the data, the most striking result was that the use of functionally inaccurate ROIs (when defining the network nodes and extracting their associated timeseries) is extremely damaging to network estimation; hence, results derived from inappropriate ROI definition (such as via structural atlases) should be regarded with great caution. Copyright © 2010 Elsevier Inc. All rights reserved.
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            BRAIN NETWORKS. Correlated gene expression supports synchronous activity in brain networks.

            During rest, brain activity is synchronized between different regions widely distributed throughout the brain, forming functional networks. However, the molecular mechanisms supporting functional connectivity remain undefined. We show that functional brain networks defined with resting-state functional magnetic resonance imaging can be recapitulated by using measures of correlated gene expression in a post mortem brain tissue data set. The set of 136 genes we identify is significantly enriched for ion channels. Polymorphisms in this set of genes significantly affect resting-state functional connectivity in a large sample of healthy adolescents. Expression levels of these genes are also significantly associated with axonal connectivity in the mouse. The results provide convergent, multimodal evidence that resting-state functional networks correlate with the orchestrated activity of dozens of genes linked to ion channel activity and synaptic function.
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              30 years of adaptive neural networks: perceptron, Madaline, and backpropagation

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                Author and article information

                Contributors
                Journal
                Front Neuroinform
                Front Neuroinform
                Front. Neuroinform.
                Frontiers in Neuroinformatics
                Frontiers Media S.A.
                1662-5196
                17 October 2017
                2017
                : 11
                : 61
                Affiliations
                [1] 1Department of Cognitive Science, Budapest University of Technology and Economics , Budapest, Hungary
                [2] 2Brain Imaging Centre, Research Centre for Natural Sciences, Hungarian Academy of Sciences , Budapest, Hungary
                [3] 3Knowledge Discovery and Machine Learning, Rheinische Friedrich-Wilhelms-Universität Bonn , Bonn, Germany
                Author notes

                Edited by: Pedro Antonio Valdes-Sosa, Joint China-Cuba Laboratory for Frontier Research in Translational Neurotechnology, China

                Reviewed by: Feng Liu, Tianjin Medical University General Hospital, China; Diego Vidaurre, University of Oxford, United Kingdom

                *Correspondence: Regina J. Meszlényi, meszlenyi.regina@ 123456ttk.mta.hu
                Article
                10.3389/fninf.2017.00061
                5651030
                29089883
                95a00e0d-7192-4943-9c6f-372452b4095e
                Copyright © 2017 Meszlényi, Buza and Vidnyánszky.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 26 April 2017
                : 03 October 2017
                Page count
                Figures: 4, Tables: 1, Equations: 1, References: 60, Pages: 12, Words: 0
                Categories
                Neuroscience
                Methods

                Neurosciences
                classification,convolutional neural network,dynamic time warping,resting state connectivity,connectome,functional magnetic resonance imaging

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