Connectivity-Driven Brain Parcellation via Consensus Clustering
Kurmukov, Anvar, Mussabayeva, Ayagoz, Denisova, Yulia, Moyer, Daniel, Gutman, Boris
We present two related methods for deriving connectivity-based brain atlases from individual connectomes. The proposed methods exploit a previously proposed dense connectivity representation, termed continuous connectivity, by first performing graph-based hierarchical clustering of individual brains, and subsequently aggregating the individual parcellations into a consensus parcellation. The search for consensus minimizes the sum of cluster membership distances, effectively estimating a pseudo-Karcher mean of individual parcellations. We assess the quality of our parcellations using (1) Kullback-Liebler and Jensen-Shannon divergence with respect to the dense connectome representation, (2) inter-hemispheric symmetry, and (3) performance of the simplified connectome in a biological sex classification task. We find that the parcellation based-atlas computed using a greedy search at a hierarchical depth 3 outperforms all other parcellation-based atlases as well as the standard Dessikan-Killiany anatomical atlas in all three assessments.
Aug-10-2018
- Country:
- North America > United States > California (0.14)
- Genre:
- Research Report (0.51)
- Industry:
- Health & Medicine > Therapeutic Area > Neurology (1.00)
- Technology: