TY - JOUR
T1 - Resting state network estimation in individual subjects
AU - Hacker, Carl D.
AU - Laumann, Timothy O.
AU - Szrama, Nicholas P.
AU - Baldassarre, Antonello
AU - Snyder, Abraham Z.
AU - Leuthardt, Eric C.
AU - Corbetta, Maurizio
N1 - Funding Information:
This work was supported by the National Institute of Mental Health ( RO1s MH096482-01 to Drs. Corbetta and Leuthardt), the National Cancer Institute ( R21CA159470-02 to Dr. Leuthardt), Child and Health Development ( R01 HD061117-05A2 to Dr. Corbetta), the National Institute of Stroke and Neurologic Disorders ( P30 NS048056 to Dr. Snyder), and National Institute of Health ( P50NS006833 to Dr. Snyder). This research was also supported by a research training grant from the University of Chieti, “G. d'Annunzio”, Italy (for Dr. Baldassarre) and the McDonnell Center Higher Brain Function . Validation dataset 2 was obtained from The Brain Genomics Superstruct Project, funded by the Simons Foundation Autism Research Initiative . We thank Matthew F. Glasser for help with surface reconstruction and coregistration.
PY - 2013/11/15
Y1 - 2013/11/15
N2 - Resting state functional magnetic resonance imaging (fMRI) has been used to study brain networks associated with both normal and pathological cognitive functions. The objective of this work is to reliably compute resting state network (RSN) topography in single participants. We trained a supervised classifier (multi-layer perceptron; MLP) to associate blood oxygen level dependent (BOLD) correlation maps corresponding to pre-defined seeds with specific RSN identities. Hard classification of maps obtained from a priori seeds was highly reliable across new participants. Interestingly, continuous estimates of RSN membership retained substantial residual error. This result is consistent with the view that RSNs are hierarchically organized, and therefore not fully separable into spatially independent components. After training on a priori seed-based maps, we propagated voxel-wise correlation maps through the MLP to produce estimates of RSN membership throughout the brain. The MLP generated RSN topography estimates in individuals consistent with previous studies, even in brain regions not represented in the training data. This method could be used in future studies to relate RSN topography to other measures of functional brain organization (e.g., task-evoked responses, stimulation mapping, and deficits associated with lesions) in individuals. The multi-layer perceptron was directly compared to two alternative voxel classification procedures, specifically, dual regression and linear discriminant analysis; the perceptron generated more spatially specific RSN maps than either alternative.
AB - Resting state functional magnetic resonance imaging (fMRI) has been used to study brain networks associated with both normal and pathological cognitive functions. The objective of this work is to reliably compute resting state network (RSN) topography in single participants. We trained a supervised classifier (multi-layer perceptron; MLP) to associate blood oxygen level dependent (BOLD) correlation maps corresponding to pre-defined seeds with specific RSN identities. Hard classification of maps obtained from a priori seeds was highly reliable across new participants. Interestingly, continuous estimates of RSN membership retained substantial residual error. This result is consistent with the view that RSNs are hierarchically organized, and therefore not fully separable into spatially independent components. After training on a priori seed-based maps, we propagated voxel-wise correlation maps through the MLP to produce estimates of RSN membership throughout the brain. The MLP generated RSN topography estimates in individuals consistent with previous studies, even in brain regions not represented in the training data. This method could be used in future studies to relate RSN topography to other measures of functional brain organization (e.g., task-evoked responses, stimulation mapping, and deficits associated with lesions) in individuals. The multi-layer perceptron was directly compared to two alternative voxel classification procedures, specifically, dual regression and linear discriminant analysis; the perceptron generated more spatially specific RSN maps than either alternative.
KW - Brain mapping
KW - FMRI
KW - Functional connectivity
KW - Multilayer perceptron
KW - Resting state network
KW - Supervised classifier
UR - http://www.scopus.com/inward/record.url?scp=84880177066&partnerID=8YFLogxK
U2 - 10.1016/j.neuroimage.2013.05.108
DO - 10.1016/j.neuroimage.2013.05.108
M3 - Article
C2 - 23735260
AN - SCOPUS:84880177066
SN - 1053-8119
VL - 82
SP - 616
EP - 633
JO - NeuroImage
JF - NeuroImage
ER -