Nigel Chou1, Jolena Tan1, Asad
Abu Bakar Md Ali1, Kai-Hsiang Chuang1
1Laboratory of Molecular
We
present an automatic brain-extraction algorithm optimized for rodents, based
on a pulse-coupled neural network (PCNN) operating in 3D. PCNN links pixels
with similar intensity, then a morphological operation is used to separate regions,
of which the largest is selected as the brain mask. Using Jaccard index and True-positive Rate
as a measures of similarity to a manual gold-standard, this method showed
improved performance compared to an existing algorithm (Brain Surface
Extraction) and a PCNN algorithm operating in 2D mode (on slices). Additional advantages include reduced user
intervention and accurate segmentation of the olfactory bulb and
paraflocculus of cerebellum.