Publication | Open Access
Robust Recovery of Temporal Overlap Between Network Activity Using Transient-Informed Spatio-Temporal Regression
35
Citations
56
References
2018
Year
EngineeringNetwork AnalysisBrain MappingSpatiotemporal DatabaseSocial SciencesDynamic BehaviorData ScienceSystems EngineeringTransient TimepointsNeurologyCognitive NeuroscienceCognitive ScienceNeuroimaging ModalityNeuroimagingComputer ScienceBrain NetworksRobust RecoveryMedical Image ComputingBrain ImagingSignal ProcessingTemporal ProfilesSpatio-temporal Stream ProcessingNeuroimaging BiomarkersNetwork ScienceComputational NeuroscienceConnectomicsNeuroscienceTemporal NetworkSpatio-temporal Model
Functional magnetic resonance imaging is a non-invasive tomographic imaging modality that has provided insights into system-level brain function. New analysis methods are emerging to study the dynamic behavior of brain activity. The innovation-driven co-activation pattern (iCAP) approach is one such approach that relies on the detection of timepoints with a significant transient activity to subsequently retrieve spatially and temporally overlapping large-scale brain networks. To recover temporal profiles of the iCAPs for further time-resolved analysis, spatial patterns are fitted back to the activity-inducing signals. In this crucial step, spatial dependences can hinder the recovery of temporal overlapping activity. To overcome this effect, we propose a novel back-projection method that optimally fits activity-inducing signals given a set of transient timepoints and spatial maps of iCAPs, thus taking into account both spatial and temporal constraints. Validation on simulated data shows that transient-based constraints improve the quality of fitted time courses. Further evaluation on experimental data demonstrates that overfitting and underfitting are prevented by the use of optimized spatio-temporal constraints. Spatial and temporal properties of resulting iCAPs support that brain activity is characterized by the recurrent co-activation and co-deactivation of spatially overlapping large-scale brain networks. This new approach opens new avenues to explore the brain's dynamic core.
| Year | Citations | |
|---|---|---|
Page 1
Page 1