Robert Elton Smith1,2, Jacques-Donald Tournier1,2,
Fernando Calamante1,2, Alan Connelly1,2
1Brain Research Institute, Florey
Neuroscience Institutes (
Current
clustering methodologies are not able to process very large data sets, such
as those generated using probabilistic tractography. We propose a novel
clustering algorithm designed specifically to handle a very large number of
tracks, which is therefore ideally suited for processing whole-brain
probabilistic tractography data. A hierarchical clustering stage identifies
major white matter structures from the large number of smaller clusters
generated. The method is demonstrated on a 1,000,000 track whole-brain in-vivo
data set.