Please use this identifier to cite or link to this item: https://doi.org/10.1016/j.neuroimage.2019.116276
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dc.titleDeep neural networks and kernel regression achieve comparable accuracies for functional connectivity prediction of behavior and demographics
dc.contributor.authorHe, T.
dc.contributor.authorKong, R.
dc.contributor.authorHolmes, A.J.
dc.contributor.authorNguyen, M.
dc.contributor.authorSabuncu, M.R.
dc.contributor.authorEickhoff, S.B.
dc.contributor.authorBzdok, D.
dc.contributor.authorFeng, J.
dc.contributor.authorYeo, B.T.T.
dc.date.accessioned2021-08-19T04:30:49Z
dc.date.available2021-08-19T04:30:49Z
dc.date.issued2020
dc.identifier.citationHe, T., Kong, R., Holmes, A.J., Nguyen, M., Sabuncu, M.R., Eickhoff, S.B., Bzdok, D., Feng, J., Yeo, B.T.T. (2020). Deep neural networks and kernel regression achieve comparable accuracies for functional connectivity prediction of behavior and demographics. NeuroImage 206 : 116276. ScholarBank@NUS Repository. https://doi.org/10.1016/j.neuroimage.2019.116276
dc.identifier.issn1053-8119
dc.identifier.urihttps://scholarbank.nus.edu.sg/handle/10635/197939
dc.description.abstractThere is significant interest in the development and application of deep neural networks (DNNs) to neuroimaging data. A growing literature suggests that DNNs outperform their classical counterparts in a variety of neuroimaging applications, yet there are few direct comparisons of relative utility. Here, we compared the performance of three DNN architectures and a classical machine learning algorithm (kernel regression) in predicting individual phenotypes from whole-brain resting-state functional connectivity (RSFC) patterns. One of the DNNs was a generic fully-connected feedforward neural network, while the other two DNNs were recently published approaches specifically designed to exploit the structure of connectome data. By using a combined sample of almost 10,000 participants from the Human Connectome Project (HCP) and UK Biobank, we showed that the three DNNs and kernel regression achieved similar performance across a wide range of behavioral and demographic measures. Furthermore, the generic feedforward neural network exhibited similar performance to the two state-of-the-art connectome-specific DNNs. When predicting fluid intelligence in the UK Biobank, performance of all algorithms dramatically improved when sample size increased from 100 to 1000 subjects. Improvement was smaller, but still significant, when sample size increased from 1000 to 5000 subjects. Importantly, kernel regression was competitive across all sample sizes. Overall, our study suggests that kernel regression is as effective as DNNs for RSFC-based behavioral prediction, while incurring significantly lower computational costs. Therefore, kernel regression might serve as a useful baseline algorithm for future studies. © 2019 Elsevier Inc.
dc.publisherAcademic Press Inc.
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 International
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/
dc.sourceScopus OA2020
dc.subjectDeep learning
dc.subjectFingerprinting
dc.subjectGraph convolutional neural network
dc.subjectKernel ridge regression
dc.subjectResting-state fMRI
dc.typeArticle
dc.contributor.departmentDEPT OF ELECTRICAL & COMPUTER ENGG
dc.description.doi10.1016/j.neuroimage.2019.116276
dc.description.sourcetitleNeuroImage
dc.description.volume206
dc.description.page116276
dc.published.statePublished
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