TL;DR
ERNet introduces an unsupervised, end-to-end framework that jointly performs brain extraction and registration in neuroimaging data, reducing reliance on labeled data and improving alignment accuracy.
Contribution
The paper presents a novel unified framework for unsupervised collective extraction and registration, enabling simultaneous optimization and feedback between tasks.
Findings
Improves extraction accuracy without labeled data
Enhances registration alignment in neuroimaging
Demonstrates effectiveness on real-world datasets
Abstract
Brain extraction and registration are important preprocessing steps in neuroimaging data analysis, where the goal is to extract the brain regions from MRI scans (i.e., extraction step) and align them with a target brain image (i.e., registration step). Conventional research mainly focuses on developing methods for the extraction and registration tasks separately under supervised settings. The performance of these methods highly depends on the amount of training samples and visual inspections performed by experts for error correction. However, in many medical studies, collecting voxel-level labels and conducting manual quality control in high-dimensional neuroimages (e.g., 3D MRI) are very expensive and time-consuming. Moreover, brain extraction and registration are highly related tasks in neuroimaging data and should be solved collectively. In this paper, we study the problem of…
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Taxonomy
MethodsALIGN
