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Label Inference for Atlas-based Sub-cortical Structure Segmentation in Brain Magnetic Resonance Images
PhD Thesis Proposal Defence
Title: "Label Inference for Atlas-based Sub-cortical Structure Segmentation in
Brain Magnetic Resonance Images"
by
Miss Siqi BAO
Abstract:
The human brain is a complex neural system composed of several dozen anatomical
structures. To study the functional and structural properties of its deeper
sub-cortical regions, three-dimensional image segmentation is a critical step
in quantitative brain image analysis and clinical diagnosis. However,
segmenting sub-cortical structures is difficult because they are relatively
small and have significant shape variations. Moreover, some structure
boundaries are subtle or even missing in images. Although manual annotation is
a standard procedure for obtaining quality segmentation, it is time-consuming
and can suffer from inter- and intra-observer inconsistencies. In recent years,
researchers have been focusing on developing automatic atlas-based segmentation
methods incorporating expert prior knowledge about the correspondences between
intensity profiles and tissue labels. We introduce some novel methods for brain
MR image segmentation in this thesis, which can be categorized into two main
parts.
In the first part, several methods relying on non-rigid registration are
proposed for the label inference of sub-cortical structures in brain MR images.
A united atlas-based segmentation framework is presented, including forward
deformation and label refinement. One novel label inference method integrated
with registration and patch priors is introduced to help correct the label
errors around structural boundaries. Given the significant overlap of the
intensity distribution among different tissues, the patch prior based on
similarity measurement can be adversely impacted. To deal with this problem, a
new label inference method encoded with local and global patch priors is
proposed to obtain a more discriminative patch representation.
In the second part, we introduce some advanced label inference methods, which
don't need the non-rigid registration process with expensive computation. A
novel network called multi-scale structured CNN is proposed, on top of which
label consistency is enforced to refine the preliminary results obtained using
deep learning. With multiple features available for image segmentation, Feature
Sensitive Label Fusion is presented, which takes the sensitivity among distinct
features into consideration. Comprehensive experiments have been carried out on
publicly available datasets and results demonstrate that our methods can obtain
better performance as compared with other state-of-the-art methods.
Date: Monday, 24 April 2017
Time: 2:00pm - 4:00pm
Venue: Room 4475
(lifts 25/26)
Committee Members: Prof. Albert Chung (Supervisor)
Prof. Chi-Keung Tang (Chairperson)
Dr. Pedro Sander
Prof. Chiew-Lan Tai
**** ALL are Welcome ****