Human Connectome Project

Extracting Reproducible Time-Resolved Resting State Networks Using Dynamic Mode Decomposition

In this paper, we develop a novel method based on dynamic mode decomposition (DMD) to extract resting-state networks from short windows of noisy, high-dimensional fMRI data, allowing RSNs from single scans to be resolved robustly at a temporal resolution of seconds. This automated DMD-based method is a powerful tool to characterize spatial and temporal structures of RSNs in individual subjects.

Automated Connectivity-Based Cortical Mapping Using Registration-Constrained Classification

In this analysis, we propose the use of a library of training brains to build a statistical model of the parcellated cortical surface to act as templates for mapping new MRI data.