Bayesian convolutional neural network based MRI brain extraction on nonhuman primates
Gengyan Zhao, Fang Liu, Jonathan A. Oler, Mary E. Meyerand, Ned H., Kalin, Rasmus M. Birn

TL;DR
This paper introduces a fully-automated brain extraction method for nonhuman primate MRI images using a Bayesian CNN and 3D CRF, achieving superior accuracy and uncertainty estimation compared to existing methods.
Contribution
It presents a novel pipeline combining Bayesian SegNet and 3D CRF for improved nonhuman primate brain extraction, with uncertainty measurement capabilities.
Findings
Achieved a mean Dice coefficient of 0.985
Outperformed six popular brain extraction tools and three deep learning methods
Model uncertainty was effectively estimated with a mean value of 0.116
Abstract
Brain extraction or skull stripping of magnetic resonance images (MRI) is an essential step in neuroimaging studies, the accuracy of which can severely affect subsequent image processing procedures. Current automatic brain extraction methods demonstrate good results on human brains, but are often far from satisfactory on nonhuman primates, which are a necessary part of neuroscience research. To overcome the challenges of brain extraction in nonhuman primates, we propose a fully-automated brain extraction pipeline combining deep Bayesian convolutional neural network (CNN) and fully connected three-dimensional (3D) conditional random field (CRF). The deep Bayesian CNN, Bayesian SegNet, is used as the core segmentation engine. As a probabilistic network, it is not only able to perform accurate high-resolution pixel-wise brain segmentation, but also capable of measuring the model…
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Taxonomy
MethodsSoftmax · *Communicated@Fast*How Do I Communicate to Expedia? · Batch Normalization · Max Pooling · Kaiming Initialization · Convolution · Conditional Random Field · SegNet · Dropout
